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Article

Optimized Workflow Framework in Construction Projects to Control the Environmental Properties of Soil

1
Department of Investments Technology and Environment, Swedish Transport Administration, Neptunigatan 52, P.O. Box 366, SE-201 23 Malmö, Sweden
2
Division of Building Materials, Department of Building and Environmental Technology, Faculty of Engineering (LTH), Lund University, P.O. Box 118, SE-221 00 Lund, Sweden
3
Laboratory of Image Synthesis and Analysis (LISA), École Polytechnique de Bruxelles (Brussels Faculty of Engineering), Université Libre de Bruxelles (ULB), Building L, Campus de Solbosch, ULB–LISA CP165/57, Avenue Franklin Roosevelt 50, 1000 Brussels, Belgium
*
Author to whom correspondence should be addressed.
Algorithms 2023, 16(6), 303; https://doi.org/10.3390/a16060303
Submission received: 1 June 2023 / Revised: 11 June 2023 / Accepted: 16 June 2023 / Published: 17 June 2023
(This article belongs to the Collection Feature Papers in Algorithms for Multidisciplinary Applications)

Abstract

:
To optimize the workflow of civil engineering construction in a harbour, this paper developed a framework of the contaminant leaching assessment carried out on the stabilized/solidified dredged soil material. The specimens included the sampled sediments collected from the in situ fieldwork in Arendal and Kongshavn. The background levels of the concentration of pollutants were evaluated to assess the cumulative surface leaching of substances from samples over two months. The contamination of soil was assessed using a structured workflow scheme on the following toxic substances, heavy metals—As, Pb, Cd, Cr, Hg, Ni, and Zn; organic compounds—PAH-16 and PCB; and organotin compounds—TBT. The numerical computation and data analysis were applied to the results of geochemical testing creating computerised solutions to soil quality evaluation in civil engineering. Data modelling enabled the estimation of leaching of the contaminants in one year. The estimated leaching of As is 0.9153 mg/m2, for Ni—2.8178 mg/m2, for total PAH-16 as 0.0507 mg/m2, and for TBT—0.00061 mg/m2 per year. The performance of the sediments was examined with regard to permeability through a series of the controlled experiments. The environmental engineering tests were implemented in the Swedish Geotechnical Institute (SGI) in a triplicate mode over 64 days. The results were compared for several sites and showed that the amount of As is slightly higher in Kongshavn than for Arendal, while the content of Cd, Cr, and Ni is lower. For TBT, the levels are significantly lower than for those at Arendal. The algorithm of permeability tests evaluated the safety of foundation soil for construction of embankments and structures. The optimized assessment methods were applied for monitoring coastal areas through the evaluated permeability of soil and estimated leaching rates of heavy metals, PHB, PACs, and TBT in selected test sites in harbours of southern Norway.
PACS:
81.40.Cd; 81.40.Ef; 62.20.Qp; 83.50.Xa; 45.70.Mg; 92.40.Lg; 81.40.Lm; 62.20.M-
MSC:
74E20; 74E30; 74F10; 93C57
JEL Classification:
Q00; Q01; Q24; Q55; Q56

1. Introduction

Soil treatment is a challenging civil engineering task with many applications, such as soil stabilization [1,2,3,4], soil remediation [5,6,7], and increasing soil permeability [8,9,10]. These tasks aim at improving geotechnical and environmental properties of soil prior to construction works [11,12,13,14]. The stabilization of soil foundations with binders improves its strength properties [15,16,17,18,19], while soil washing removes the pollutants and contaminants from soil through separating it by particle size or leaching [20,21,22].
Improving the environmental properties of polluted soil aims at to removing the contaminants, which can be performed using diverse washing solutions [23,24]. Leaching is then performed by cleaning the soil from organic and inorganic compounds that are bind to soil particles. At the same time, the granulometric type of soil affects its behaviour during leaching and stabilization [25,26,27]. Thus, soil texture affects the degree of contamination due to different permeability and capacity to retain pollutants. As a result, fine-grained silt and clays (particle size of 0.002 to 0.6 mm) typical in the cold environment of Norway [28,29,30] retain more contaminants due to to clogging of the pores compared to the middle-grained sand (0.6 to 2 mm) or coarse-grained gravel with >2 mm of particle size [31,32].
A key ingredient for effective soil processing in environmental engineering is the development of the optimised design fit for experiments [33,34,35,36,37,38], since methods of soil treatment differ depending on its type (fine-, middle-, or coarse-grained) and properties (water content, density, and temperature). Existing methods of soil remediation used in environmental engineering include the evaluation of leaching potential from soil and immobilization of contaminants [39,40]. Diverse contaminants can be tested, such as toxic heavy metals, (As, Pb, Cd, Cr, Hg, Ni, and Zn) [41,42,43,44], Polycyclic Aromatic Hydrocarbon (PAH) [45], Polychlorinated biphenyl (PCB) [46], and organotin compounds Tributyltin (TBT) [47,48,49,50]. Depending on the approaches, soil leaching may be implemented with or without the renewed leachate [51], and using either dynamic or extraction tests [52].
A popular approach of the environmental engineering evaluation of soil properties includes the common leaching test [53,54,55]. Other examples use the water leach test [56,57], toxicity characteristic leaching [58], column leach test [59,60], or soil layering over the substance drainage system [61]. Existing methods follow the existing standards to make use of the well-known approaches in soil testing. Such methods focus on remediation of the ecologically degraded and contaminated soil, assuming that its properties conform to the models in the existing workflow [62,63,64]. As a consequence, none of the resulting approaches are tailored to a better understanding of how the variation of soil properties, such as soil moisture, grain size, and permeability, affect its behaviour in leaching. At the same time, soil quality is significantly affected by the the selection of binder types used for stabilization [65,66,67], the proportion of water–binder ratio [68] and binder content [69].
Modelling this information, as most dimensionality reduction methods do, introduces additional parameters, and therefore, improves the workflow of soil detoxification and removal of chemical pollutants. Workflow strategies of soil decontamination and remediation have high costs [70,71,72]. The process of soil decontamination includes a complex expensive chain of remediation techniques to remove pollutants, heavy metals, organic and inorganic toxins, and organotin compounds [73,74,75]. Normally, this includes both in situ (excavating the samples) and ex situ (batch-wise treatment of specimens using percolating water in a laboratory) [76,77,78]. Given the constraints of high cost and time pressure related to soil treatment in large-scale construction works [79,80,81], it becomes essential to optimise a workflow at a small scale using parametric simulation and modelling of soil performance prior to industrial applications [82].
The method proposed in this article is inspired by the optimization techniques of soil treatment [83,84,85,86,87]. The main idea is to factorise the parameters that affect soil properties into sub-classes having linear and non-linear distribution of data over time for various soil samples. In this way, the optimization of the procedure improved the workflow of soil decontamination in a small-scale using several batches of soil samples modelled prior to construction works. The data obtained from the numerical experiments on evaluating the leaching behaviour of contaminants were processed by statistical methods. Using modelling algorithms, we demonstrated the non-linear performance of leaching for various pollutants. The suitability of the presented approach to soil treatment is illustrated in graphical plots and tables where the behaviour of soil leaching is compared for various contaminants. The benefits of the proposed approach are compared with the existing techniques on soil leaching tests, immobilisation of contaminants, and permeability tests.

2. Materials and Methods

2.1. Sampling and Transportation

The laboratory experiments on soil quality and surface leaching were carried out in the Department of Building Materials of Lunds Tekniska Högskola LTH (Faculty of Engineering), Lund University. The geotechnical tests were implemented in the Swedish Geotechnical Institute (SGI). Sampling of dredged sediment material was performed by the Norconsult AS. The tests were evaluated in the framework of the research project run by SGI and financed by Swedish Transport Administration. Soil samples were collected from the test sites in Arendal municipality and Kongshavn, Port of Oslo (southern Norway).
The stabilizing agents and soil specimens were mixed for 5 min to achieve the homogeneity of the material. Afterwards, soil samples were moulded into the piston sleeves which had an inner diameter of 50 mm and a height of 170 mm. The sampling procedure included four batches. A large Batch 1 of samples is subdivided into the three additional produced batches of soil specimens (Batches 2, 3, and 4). Batch 2 contains the activated carbon (powdered charcoal). Batch 3 was pre-treated with the activated carbon one month before the stabilization process. Batch 4 was stabilized with the Belite Calcium Sulfoaluminate (BCSA) cement. The BCSA cement was selected due to its properties, it is an environmentally-friendly type of cement with low level of CO2 emissions.

2.2. Soil Stabilization

The engineering tests aimed at evaluating the environmental properties of soil. The workflow consisted of experiments on soil stabilization, permeability tests, surface leaching, and shake table testing. Due to vibrations during transportation, there is always a certain separation in the material which leads to the damage of some of the containers and leakage of water. Therefore, the clay masses were then homogenised for each sample and placed in tight containers with screw lids, see Figure 1.
The screw lids had a gasket to prevent leakage and evaporation. The samples were then transported to Lund in these containers marked with the respective test labels. After the transfer, the specimens were homogenised, and the water ratio and density determined. The water ratio is the ratio of the amount of water with regard to the mass of the solid phase (soil). After homogenisation with a mixer, soil samples were stabilized using different combinations of binders. The choice of binder was based on the previous experience from several similar projects in Sweden. In the mixing tests, a binder combination of 30% CEM I (SS-EN 197-1) [88] and 70% slag (SS-EN 15167-1) [89] was used. Furthermore, the tests were carried out with different ratios of weight of water divided by weight of binder, known as the water–binder number (vbt). The choice of the vbt was based on previous experiences, including the works from Arendal 2 in Gothenburg [90].

2.3. Permeability Tests

The permeability tests were performed using the standard SS-EN ISO 17892-11:2019 for geotechnical investigation and testing of soil using permeability tests in a laboratory [91]. The aim was to evaluate the flow of water through a soil sample and, thus, to estimate the suitability and safety of soil for construction works through the calculation of the permeability coefficient. The permeability tests were carried out after the homogenisation and stabilisation of specimens, in the SGI using the specimens fabricated in LTH. The specimens were used from the same series of soil samples that were tested for compressive strength after the stabilization. The permeability test was carried out in a cell pressure permeameter using a standard permeameter device, according to method SGI No. 15. This method is used in tests performed both in Arendal (Norway) and Östrand (Sweden). Additionally, the shake table testing has been carried out by the Swedish Geotechnical Institute (SGI) in Linköping; however, this kind of test is less suitable for the monolithic materials such as soil dredged masses.
The objective of the tests on permeability consists in sustainable stabilization of the dredged soil material. The characteristics of the specimen tested for the permeability tests are common for all the samples and include the following technical parameters, sample diameter (mm)—50.0 and test temperature ( C)— 20 ± 2 . The experiments are recorded in SGI under the diary number 1.1-2107-0587. The sample preparation/compaction method included the trimming of the pieces of specimen from the main stabilized soil sample. The individual characteristics of tested soil specimens are summarised in Table 1.

2.4. Surface Leaching Tests

The surface leaching tests have been carried out in SGI in Linköping, Sweden, and the analysis of the leachate is carried out by ALS Scandinavia AB. The experiments were performed according to standard SS-EN 15863 according to the European Standard used for evaluating the leaching behaviour of monolithic soil under dynamic and changing environmental conditions [92], see Figure 2. The tests entail the following procedure. A stabilized test sample with a known surface area is lowered into a water bath. The water is then changed after 6 h, 1 day, 2.25, 4, 9, 16, 32, and 64 days, see Tables in Appendices: Table A1, Table A3 and Table A5 for surface leaching, and Table A2, Table A4 and Table A6 for cumulative surface leaching. At each water change, the leachate is analysed under fixed experimental conditions and the concentrations are evaluated for heavy metals (As, Pb, Cd, Cr, Hg, Ni, and Zn), PAHs (16 pcs), PCBs (7 pcs), and organotin compounds (TBT).
The surface leaching was performed as a triplicate test with specimens having designations within the test series. According to this standard, the release of pollutants is evaluated as a function of time when the contaminants are immobilised from a monolithic soil mass during a period of active contact with a leachate aqueous solution. The samples were named Bach1, Sample 6, Sample 7, and Sample 8A. Three tested specimens were fabricated using the dredged material collected from various test points.
The chemical analysis of the dredged masses was carried out during sampling of soil on leaching. The test method is performed in accordance to the standard SS-EN 15863 to evaluate leaching behaviour in monolithic material using regularly shaped test portions of soil samples with a periodical renewal of leachate from 6 h to 64 days. The main idea of this approach consist in exposing the soil material to a water leachate for a certain period of time, then analysing the obtained solution with concentration of contaminants. The requirement of the minimum size of 40 mm in all directions is satisfied in the current experiments where the sleeves for soil samples had the dimensions of 50 mm. The aim of the chemical analysis was to determine the background levels of the chemical elements (heavy metals, PAHs, PCB, and TBT) and compare them to level from the leached concentrations from the tested soil specimens in the end of the experiment. In addition, the test aimed to identify, which of the sample points within the sample area in the harbour was the most contaminated and, therefore, would be used in surface leaching tests.
In previous projects, the ultrapure Milli-Q water has been used obtained from the extra purification water systems; however, it results in a biased outcome due to the content of extra pure water. Therefore, the later projects, such as those run in the Arendal 2 and Östrand, have been tested with the leachate from the respective local area. In this study, the leachate from the Port of Oslo has been used to adjust local environmental setting. The sample point 1 _ 2 was selected for surface leaching based on the materials of the experiments. According to this method, the specimen is suspended using the nylon ropes so that surface leaching can take place on the entire surface of the soil specimen.

3. Results and Discussion

The results of this study are based on the optimised workflow framework developed for the updated environmental engineering tests with adjusted binder proportions. The study resulted in evaluated properties of soil obtained during the following workflow:
  • The soil samples were collected from the Kongshavn Harbour, Port of Oslo; the representative soil specimens were excavated from different locations (test sites) and placed in containers for further soil treating in a batchwise mode.
  • The soil was homogenised using a surface mixer and stabilised with various combination of binders (cement/slag) tested experimentally. The soil samples were cropped and trimmed in leach piles to a defined height of specimen to minimise the workflow; unnecessary parts were subtracted from the samples using piles.
  • The permeability of soil was analysed using a permeameter device according to the method SGI No. 15, and compared with optimal parameters for several specimens; the temperature and humidity conditions were maintained in the laboratory.
  • The immobilisation of the environmentally critical contaminants was performed through leaching with evaluated concentrations of seven types of heavy metals, PAH, PCB, and TNT. The dynamics of leaching speed and value was recorded and evaluated for 6 h to 64 days with labelling of soil leaching over the defined time intervals.
  • The obtained data were recorded for statistical analysis and computer-based modelling. The dynamics of concentration of the contaminants in soil was modelled on the graphs. The behaviour of soil was evaluated using intervals through repetitive soil sampling in laboratory SGI.
  • Statistical correction of the outliers caused by biased sampling was performed in the dataset to obtain statistically sound results.
  • The prognosis of leaching behaviour was numerically modelled using the developed equations and statistical data analysis. The comparison of the achieved levels of pollution and leached contaminants were compared on the original (background) level to estimate the degree of contamination for environmental risk assessment.
The presented workflow of soil treatment enabled the processing of samples of soil specimens in soil samples collected from Kongshavn, Port of Oslo, southern Norway. The experiments resulted in evaluated dynamics of leaching and permeability over time of 64 days. The data were extracted form prognosis modelling for one year based on the computer-assisted statistical analysis. The trends in dynamics of contamination were evaluated over time and compared against the original (background) levels of contaminants.
Using the optimised techniques, we tested different experimental conditions, as follows. In separated batches of soil, different ratios of binders were used to estimate their effects on soil quality (BCSA cement/slag); different ratios of water amount to binder amount and the water binder number (vbt) were evaluated. The permeability and leaching of soil data were tested on six cases to achieve a statistical soundness of the results. The numerical experiments and statistical data processing were performed to derive the average and standard deviation on the measured data. The experiments have shown the importance of exploiting the diverse binder combinations for improving soil properties through stabilization/solidification and leaching. The non-linearity of the permeability and leaching behaviour of soil were evaluated with regard to binder content used for soil stabilization.

3.1. Soil Permeability

The results of the permeability testing demonstrated low permeability level achieved for all tested samples of the dredged soil masses. Figure 3 shows the permeability of soil stabilized with different combinations of binders (cement and slag). The best effect was obtained at 70% added slag admixture in the total amount of binder. Table 2 shows measured permeability for various tested soil specimens. The maximal achieved permeability for sample 1 _ 5 is 1.5 ×   10 9 after 122.22 h of treatment; for the specimen 3 _ 5 1.0 × 10 9 ; for the specimen 4 _ 1 1.2 × 10 9 ; for the specimen 5 _ 4 4.8 × 10 9 ; for the specimen 6 _ 5 3.0 × 10 9 , and for the specimen 8 _ 5 1.5 × 10 9 .
Figure 4 shows the dynamics of the permeability of soil over time in hours. The specimens used in the experiment are indicated by their IDs. Here, the lines show the dynamics and the overall trend in permeability level with respect to the time of treatment of soil samples during stabilization/solidification procedure. The original values of the permeability plotted on the graph show their variations with a general slight decrease in trend which proves the effective selected technique of soil treatment for the increase in strength.

3.2. Concentrations of Contaminants

The detailed chemical information was obtained as concentrations of pollutants in the leachate of soil samples evaluating the leaching mechanism of the contaminants. The obtained results with full data are summarised in Tables and presented in the Appendix of this study. The Appendix A contains the results of leaching of contaminants in sampling passes 2317–2324; Appendix B presents the results of leaching of contaminants in sampling passes 2325–2332, and Appendix C summarises the results of leaching of contaminants in sampling passes 2333–2340.
The background (original) levels of the concentration of contaminants were evaluated and presented in Table 3. The analysis of the original level of contaminants enabled to perform the evaluation of the decontamination of soil based on the discriminating the actual values of pollutants against those of the original (background) level. In such a way, the degree of concentration of contaminants in soil samples was evaluated using the analysis of leaching dynamics for each contaminant, respectively. Reading these data obtained from the leaching experiments include the analysis of information on the amount and concentration of the resolved pollutants with respect to the overall amount of soil and, thus, to evaluate the obtained level of contamination to prevent ecological risks. The evaluated substances included seven (7) types of heavy metals (mg/kg), total PAH-16 (mg/kg) and Tributyltin-Sn (TBT) ( μ g Sn/kg), as shown in Table 3.
The most important parameters in the context of soil contamination by heavy metals have been assessed for the following metal types, arsenic (As), lead (Pb), cadmium (Cd), chromium (Cr), mercury (Hg), nickel (Ni), zinc (Zn), as shown in Table 3. The tests also evaluating the concentrations of elements in soil samples were tested for the organic compounds—16 priority Polycyclic Aromatic Hydrocarbon (PAH) and organotin compounds Tributyltin (TBT), Table 3, and for organic chemicals Polychlorinated biphenyl (PCB) (7 pcs), Table 4. The hydraulic conductivity evaluated the leachate percolation through the soil monolith, and reported in the Appendix in Table A1 showing 251–275 μ S for samplings 2317–2324, Table A3 showing 253–274 μ S for samplings 2325–2332, and in Table A5 showing 252–276 μ S for sampling 2333–2340. Thus, in all cases the conductivity slightly increases in course of the experiment from 6 h to 64 days.
The withdrawal of water for analysis of surface leaching was performed with the following intervals of time periods after 6h of testing, 1 d (24 h), 2.25 days (54 h), and then on days 4, 9, 16, 36, and 64. The repetitions of the tests arranged periodically with a non-linear time gaps in the laboratory across the soil samples enabled to indicate the marks of leaching levels of each of the contaminants separating the amounts of the leached substances from the soil samples. The analysis demonstrated the following leaching values (mg/m2): the highest values of As reached 0.88 with average 0.71; the highest values of Ni reached 2.48 with average 2.20; the maximal leaching of PAH-16 is 0.053 with average 0.039; and the leaching of TBT increased to 0.0010 with average of 0.0009, respectively.
In order to make a comparison of the contamination level in current state against the pre-industrial conditions, the deviation classification for heavy metals in sediments has been carried out according to the existing Swedish standards [93]. The table is recalculated using values from tables 34 and 36 in the Swedish Environmental Protection Agency’s report 4914 (mg/kg TS). Thus, the identification of the high level marks in contamination enables to extract information on changes in concentration of the contaminants during the assessed period, while the amplitude of contamination enables to evaluate the degree and extent of the increase in pollution for each types of contaminant. Here, the evaluation was performed by classes for target substances, such as heavy metals, TBT, PCB, and PAH, compared to the pre-industrial period with a lower pollution level in soil.
The obtained results show that dredged soil material collected from the Kongshavn tested areas are generally above Class 1 (Table 5). The classes in deviation ranking of heavy metals are visually breaking the dataset into five clusters of data according to the value of pollution repetitively for each type of the analysed heavy metals, as shown in Table 5. The description of these values of contamination were stored and used for the comparison of the dynamics of the contaminants for diverse periods, days 1, 2.25, 4, 9, 16, 36, and 64. The full data presented in Appendix of this article included the records on the contamination level, the names of the contaminants, and location of the sample sites.

3.3. Surface Leaching

Tables summarising the analysis of the leachate are presented in the Appendix. The analysis of the results of the surface leaching tests resulted in a lower values than the expected limits of contaminants, which is reported in the tests protocols see the Appendix A, Appendix B and Appendix C for full chemical protocols. In such cases, when the levels of pollutants are lower than the reported limits, it can be concluded that the leaching of the evaluated substance has a low level, and the soil is environmentally safe. Table 6 shows the distribution of values above or below the reporting limit for metals summarised in the additional Tables of Appendix A, Appendix B and Appendix C.
Among the analysed heavy metals, arsenic (As) and nickel (Ni) demonstrated the levels of concentration above the detection limit for specimens treated during the entire period from 6 h to 64 days of leaching. Figure 5 shows the cumulative leaching of arsenic (As) over time where leaching can be considered as diffusion controlled, as shown in Figure 5. The lines on the graphs were interpolated as several segments of splines, separated by the Batches and Samples between each measurement and compared for average values, logarithm curve and standard deviation between the samples within the same time gap. The lines on the graph show the contamination level as curvatures for each Batch for evaluated specimens. A standard deviation of the leached As on day 16 was significantly higher, e.g., in sample No. 6. It may indicate a biased measurement in the laboratory on a given specific sample. Nevertheless, for the analysis of leaching, the data remain statistical unbiased, and were included in the calculation of the amount of the leached As. The average value of the three samples is used to visualise a statistical trend line. The equation from the trend line is calculated to estimated the expected leaching of As after one year.
The intensive industrial development in the region of Kongshavn (Port of Oslo) in recent decades resulted in significant areas of degraded lands and contaminated soil. Therefore, the need for remediation of soil requires a comparison of data on the contamination level both in a retrospective mode and as a prognosis. The estimation of possible future leaching of the selected contaminants has been performed for arsenic (As), nickel (Ni), PAH-16, and TBT. Using the regression equation from Figure 5 and a time period of 365 days, the potential leaching amount was modelled per m2 for one year, as shown in Equation (1). This gives an estimated leaching of arsenic (As) of 0.9153 mg/m2 per year.
y = 0.128 ln ( t i m e ) + 0.161
Figure 6 shows a cumulative leaching of nickel (Ni) over time. The average value of the three samples is used to plot a statistical trend line showing general development and the interpolated trend in the increase in leaching of Ni. The equation from the trend line is used to calculate the expected leaching of Ni in one year. A trend of Ni leaching is based on the evaluated data from Batch 1 using Samples 6, 7, and 8A. For Ni, the results of estimated leaching look similar and in the same way as for As. Likewise, the regression equation was used from Figure 7 for modelling the data using a time span of 365 days to evaluate possible leaching of Ni per m2 during one year by Equation (2). The computed data give an estimated amount of leaching of Ni as 2.8178 mg/m2 per year.
y = 0.3522 ln ( t i m e ) + 0.7399
Figure 7 shows a graph of the cumulative leaching of PAH-16 in soil samples over time. Here, the results vary a little between sample 8A and samples 6 and 7. However, the standard deviation between those samples is low. The average value of the three samples is used to visualise a statistical trend line. The equation from this line is then used to calculate the expected leaching of PAH-16 after 365 days in m2, according to Equation (3). This gives an estimated value of possible leaching of total PAH-16 as 0.0507 mg/m2 from the soil in Kongshavn per one calendar year.
y = 0.0074 ln ( t i m e ) + 0.0071
The actual content of the PAH-16 substance reflects the results of the statistical analysis. The location of sampling marks was identified with each sampling case representing a central point of the line in a given transect. The detection limit was determined with regard to the standard deviation (Figure 7) obtained when evaluating soil samples. Leaching of PAH-16 is determined as 10 times the standard deviation for specimens and is roughly three times higher than the detected limits of PAH-16 presented in specimens. The dynamics of the PAH-16 leaching was detected based on the frequent measurements as regular samplings of the soil, represented on the lines of the graphs as dots encountered once for the period of measurements on each line segment. The lowest concentration level of PAH-16 was determined as a limit of quantification, that is, quantitatively assessed with a satisfactory certainty.
The overall trend of PAH-16 leaching is increasing with regard to the line path, i.e., the total amount of contaminant is gradually released from the specimens along with soil treatment. This proves a positive effect of solidification and stabilization of soil on the removal of PAH-16 contaminants from soil. The leaching of PCB was not calculated since the values for leached amount of PCBs are positive, i.e., lower than the threshold limit.
Figure 8 shows the dynamics of the cumulative leaching of organotin compound tributyltin (TBT) over time. Using the regression equation from Figure 8 extrapolated for a time period 365 days, the TBT leaching was modelled for a year in m2, following Equation (4). The obtained results give an estimated amount of leaching of TBT of 0.00061 mg/m2 per year. The average value of the three samples is used to draw a statistical trend line which was used to calculate the equation for the expected leaching of TBT within one year. The threshold limit specified for TBT is standard for the concentration parameter. The variations in the TBT concentration can be affected by the dilution due to matrix disturbances, limited sample quantity, or low dry matter content. The threshold limit of chemical substances was estimated following the analytical method which evaluates the lowest level of concentration at which the contaminants are detected in a soil sample.
y = 0.0001 ln ( t i m e ) + 0.0002
For evaluation of the obtained results, a comparison has been completed between the results for surface leaching received in the present study against those from other studies [94,95,96]. More specifically, ref. [97] demonstrates similar results on leaching of As, Pb, and Sb; the immobilisation of Cr, Cu, and Zn were assessed by [98]. Furthermore, ref. [99] reports the leaching of diverse heavy metals from remediated soil. The removal of PHB that is a waste product from the aluminium industry is reported in [100] using stabilization and neutralization methods.
Table 7 summarises the values of leaching recorded in samples from Oslo (O), Arendal (A), and Timrå (T). The results are based on the measurements performed after 9 days of soil testing, and show surface leaching of contaminants (heavy metals and TBT, mg/m2) from soil after 9 days of testing, as shown in Table 7. The threshold limits of contaminant concentration of TBT and heavy metals with regard to the content of binder (water–binder ratio) were evaluated in soil samples as a collective designation for the highest levels of the substances in samples and compared for various test locations, as shown in Table 7. The analysis of Table 7 indicates that the amount of As is slightly higher in Kongshavn Port of Oslo (O) than for Arendal (A) and Timrå (T); however, the content of Cd, Cr, and Ni is lower. Similar results were reported earlier in the study on the immobilisation of Mg, Cu, Zn, Al, and K which were evaluated in Swedish soils in Timrå [101].
As for TBT, the levels are significantly lower in Oslo than for the corresponding sample in Arendal. The TBT was not analysed in the Timrå project, and, therefore, could only be compared between the sampling results from Oslo and Arendal. The threshold limit for for contaminants was determined as a quantification limit of seven types of heavy metals, PAH-16, TBT, and PCB. The applied methodology was optimised to evaluate and report the concentration values in the contaminants from soil stabilised with various binder proportions. The specimens were treated using geotechnical and environmental engineering tests and then evaluated using quantitative methods of the statistical analysis. The comparison of the leaching levels was performed using estimated levels over time as accumulative leaching compared to the background level of toxic contaminants.

4. Conclusions

Recent industrialisation has resulted in the increased soil contamination by heavy metals, TBT, PCB, and PAH. The need for decontamination and remediation of soil aimed at removing contaminants in large quantities necessitates the development of effective optimised methods for soil treatment. Using adjusted stabilization workflow with experimentally adjusted proportions of binders, the scheme of soil remediation has been employed in polluted sediments collected from the Port of Oslo (Kongshavn), Norway. This method demonstrated a particular effectiveness for immobilisation of heavy metals, TBT, PAH, and PCB from soil samples.
We have proposed an optimised approach to leaching experiments on soil for physical decontamination from heavy metals and chemical PAH, PCB, and TBT that relies on processing the soil samples using multi-factor tests. To this end, we have performed a series of the experiments on soil testing that allow modelling the non-linear behaviour of leaching from soil and the evaluation of the effects from the combination of binders. This method of soil decontamination provided additional information on the concentration of contaminants in the sampled soil collected in Kongshavn (Port of Oslo) and enabled the estimation of a prognosis of leaching for one year based on the obtained results simulated for long term release.
Soil contamination is a significant environmental problem that includes threats to human health and environmental sustainability. At the same time, large construction and industrial projects increase soil contamination. This project contributed to establish the links between the construction engineering and environmental monitoring. Specifically, the presented scheme of the workflow enabled to perform accurate decontamination and remediation of soil based on the proposed integrated approaches of in situ soil sampling and statistical data analysis. As a result of the implemented framework, soil specimens were processed, stabilized, solidified, and decontaminated. Such workflow presented a model for the further processing of large quantities of soil material in harbours and marine ports. For environmental purposes, data extrapolation was presented for the estimation of possible leaching dynamics during one year. The visualised examples of leaching behaviour from contaminated soil are presented graphically and in tables with provided detailed comments and formulae used for numerical modelling.
Optimization of workflow is a crucial issue in large-scale projects, such as harbour construction and civil engineering. A current limitation of our project is its use of dredged sediments collected from the harbour. This has shortcomings, since sampling of the marine sediments decreases the availability of suitable disposal specimens and increases the transportation and storage costs. At the same time, soil processing for industrial projects involves a lengthy, costly, and difficult process and high capital costs. As a continuation of this work, we intend to study the soil properties using samples collected at different depths. We also plan to investigate how statistical methods could be exploited to model soil collected in large quantities (hundreds of tons) for optimization of large-scale industrial projects such as harbour construction.
This study contributes to a better understanding of leaching behaviour in the stabilized soil and can be considered and compared in similar research. The obtained results can be used as information for the environmental risk assessment and evaluation of soil quality. This article gives an insight on the durability of the treated soil based on the performed environmental engineering workflow. The results can be reused for estimation of the pollution level in the areas of Kongshavn. As a recommendation for future similar works where large quantity of soil should be processed for industrial construction purposes with optimised workflow, a pilot project should always be carried out to ensure the reduced cost of soil processing in a large volume before testing. Second, when comparing laboratory tests and pilot scale, the temperature of the dredged soil masses should be taken into account since it plays a role in the development of soil strength. Moreover, to control soil properties, temperature measurements should be included at different depths.

Author Contributions

Supervision, conceptualization, methodology, visualization, software, resources, data curation, formal analysis, validation, funding acquisition, and project administration, P.L. (Per Lindh); writing—original draft preparation, methodology, software, formal analysis, writing—review and editing, and investigation, P.L. (Polina Lemenkova). All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

Not applicable.

Acknowledgments

The authors thank the reviewers for reading, suggestions and comments that improved an earlier version of this manuscript.

Conflicts of Interest

The authors declare no conflict of interest.

Abbreviations

The following abbreviations are used in this manuscript:
BCSABelite Calcium Sulfoaluminate
BaPBenz[a]pyrene
BghiPBenz[g,h,i]perylene
DBTDibutyltin
DBahADibenz[a,h]anthracene
DOTDioctyltin
DPhTDiphenyltin
IPIndeno[1,2,3-cd]pyrene
MBTMonobutyltin
MOTMonooctyltin
MPhTMonophenyltin
PAHPolycyclic Aromatic Hydrocarbon
PCBPolychlorinated biphenyl
SGISwedish Geotechnical Institute
TBTTributyltin
TPhTTriphenyltin
TCyTTricyclohexyltin
TTBTTetrabutyltin

Appendix A. Leaching of Contaminants: Sampling 2317–2324

Appendix A.1. Surface Leaching of Contaminants

Notations for common for all the samples in Table A1; the applied Methodology is based on standard SS-EN 15863:2015. The start and end days of the tests are from 30 January 2023 until 4 April 2023. The experiments were performed in Swedish Geotechnical Institute. The amount of leachate for all samples is 1.50 L. Conductivity was measured in mS/m by temperature of sampling at 25 C. The period refers to the day of sampling. Surface: 0.0197 m2. Redox (mVolts) refers to oxidation (reduction) potential of solutions or chemical species to acquire/lose electrons and be reduced/oxidised. Leached amount/withdrawal is given in mg/m2 for all the samples.
Abbreviations for organic compounds: Acy—acenaphthylene; BaP—Benz(a)pyrene; B[a]A—Benz[a]anthracene; BjF—Benzo[j]fluoranthene; BkF—Benzo[k]fluoranthene; MBT—Monobutyltin; DBT—Dibutyltin; TBT—Tributyltin; TTBT—Tetrabutyltin; MOT—Monooctyltin; DOT—Dioctyltin; TCyT—Tricyclohexyltin; MPhT—Monophenyltin; DPhT—Diphenyltin; IP—Indeno[1,2,3-cd]pyrene; DBahA—Dibenz[a,h]anthracene; BghiP—Benz[g,h,i]perylene; TPhT—Triphenyltin; Total oth. PAH—Total other PAH; Total carc. PAH—Total amount of carcinogenic PAH.
Table A1. Surface leaching of contaminants (heavy metals, organic compounds, PCB and PAH, mg/m2) from soil specimens during period of 64 days of sampling (2317–2324).
Table A1. Surface leaching of contaminants (heavy metals, organic compounds, PCB and PAH, mg/m2) from soil specimens during period of 64 days of sampling (2317–2324).
Period6 h1 Days2.25 Days4 Days9 Days16 Days36 Days64 Days
Sample No23172318231923202321232223232324
pH8.939.128.859.189.178.958.438.11
Conductivity25102500298027602740275027702750
Redox (mV)2973333421194884
Al2.081.691.491.290.7550.7510.5850.531
As0.05530.07360.0840.08520.08070.350.07280.0669
Ba6.317.028.47.513.113.321.622
Ca15,50017,00019,60019,30024,30025,30034,60038,200
Cd<0.004<0.004<0.004<0.004<0.004<0.004<0.004<0.004
Co0.0380.03060.02440.02020.03330.02440.03580.0508
Cr<0.04<0.04<0.04<0.04<0.04<0.04<0.04<0.04
Cu1.581.030.7440.5320.6530.50.860.634
Fe0.8980.7390.6640.486<0.3<0.3<0.3<0.3
Hg<0.002<0.002<0.002<0.002<0.002<0.002<0.002<0.002
K15,90015,60017,30016,20015,70015,70016,30015,400
Mg39,00038,70043,10040,00033,10034,30026,20025,400
Mn1.20.9440.5660.6610.2180.3210.06460.0921
Mo0.8070.7090.8070.7270.910.7761.131.18
Na374,000374,000414,000390,000368,000370,000356,000360,000
Ni0.2850.2710.2370.2110.2720.1820.240.182
Pb<0.02<0.02<0.02<0.02<0.02<0.02<0.02<0.02
V0.1530.2120.240.2820.3910.2640.1550.139
Zn0.18<0.2<0.20.179<0.2<0.2<0.2<0.2
B140142157145126126101101
Sb0.04670.05340.04960.05750.08220.06880.110.116
Se<0.2<0.2<0.2<0.2<0.27.2<0.2<0.2
Naphthalene<0.002<0.002<0.002<0.002<0.002<0.002<0.002<0.002
Acy<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
Acenaphthene<0.0008<0.0008<0.0008<0.00080.000990.00084<0.0008<0.0008
Fluorine<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
Phenanthrene<0.002<0.002<0.002<0.002<0.002<0.002<0.002<0.002
Anthracene<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
Fluoranthene<0.0008<0.0008<0.0008<0.000840.0020.00140.0019<0.0008
Pyrene<0.00080.00130.0020.00210.00370.0040.00520.0028
B[a]A<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
Chrysene<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
BjF<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
BkF<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
BaP<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
DBahA<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
BghiP<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
IP<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
Total PAH 16<0.00720.00130.0020.00290.00620.0060.00710.0028
Total carc. PAH<0.0027<0.0027<0.0027<0.0027<0.0027<0.0027<0.0027<0.0027
Total oth. PAH<0.0050.00130.0020.00290.00620.0060.00710.0028
Total PAH L<0.0019<0.0019<0.0019<0.00190.000990.00084<0.0019<0.0019
Total PAH M<0.0020.00130.0020.00290.00520.00520.00710.0028
Total PAH H<0.003<0.003<0.003<0.003<0.003<0.003<0.003<0.003
MBT0.0004040.003260.002020.002230.005360.00550.00440.00711
DBT<0.00008<0.00008<0.00008<0.000080.0001420.0001120.0001530.00024
TBT0.00008070.0000951<0.000080.00008830.0001010.0001040.00007990.000133
TTBT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
MOT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
DOT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
TCyT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
MPhT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
DPhT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
TPhT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
PCB 28<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
PCB 52<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
PCB 101<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
PCB 118<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
PCB 138<0.000091<0.000091<0.000091<0.000091<0.000091<0.000091<0.000091<0.000091
PCB 153<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
PCB 180<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
Total PCB 7<0.0003<0.0003<0.0003<0.0003<0.0003<0.0003<0.0003<0.0003

Appendix A.2. Cumulative Surface Leaching of Contaminants

Notations for Table A2: The applied methodology is based on the three approaches:
  • Standards SS-EN ISO 10523:2012 with measurement uncertainty of ±0.05 pH-enh;
  • SS-EN 27888-1:1994 with measurement uncertainty ±2.9%;
  • SGI-method with measurement uncertainty pf ± 25%.
Abbreviations for organic compounds in Table A2: Acy—acenaphthylene; BaP—Benz[a]pyrene; B[a]A—Benz[a]anthracene; BjF—Benzo[j]fluoranthene; BghiP—Benz[g,h,i]perylene; BkF—Benzo[k]fluoranthene; MBT—Monobutyltin; DBT—Dibutyltin; TBT—Tributyltin; TTBT—Tetrabutyltin; MOT—Monooctyltin; DOT—Dioctyltin; TCyT—Tricyclohexyltin; MPhT—Monophenyltin; DPhT—Diphenyltin; IP—Indeno[1,2,3-cd]pyrene; DBahA—Dibenz[a,h]anthracene; TPhT—Triphenyltin; Total oth. PAH—Total other PAH; Total carc. PAH—Total amount of carcinogenic PAH.
Table A2. Cumulative surface leaching (heavy metals, organic compounds, PCB and PAH, mg/m2) from soil specimens during period of 64 days of sampling (2317–2324).
Table A2. Cumulative surface leaching (heavy metals, organic compounds, PCB and PAH, mg/m2) from soil specimens during period of 64 days of sampling (2317–2324).
Period6 h1 Days2.25 Days4 Days9 Days16 Days36 Days64 Days
Sample No23172318231923202321232223232324
Al2.083.775.266.557.38.058.649.17
As0.05530.1290.210.2980.3790.730.8020.868
Ba6.3113.32229.242.355.677.299
Ca15,50032,00051,90071,20095,500121,000155,000194,000
Cd<0.004<0.008<0.01<0.02<0.02<0.02<0.03<0.03
Co0.0380.06860.0930.1130.1470.1710.2070.258
Cr<0.04<0.08<0.1<0.2<0.1<0.1<0.3<0.3
Cu1.582.63.353.884.5355.896.53
Fe0.8981.642.32.79<3<3<4<4
Hg<0.002<0.003<0.005<0.006<0.008<0.009<0.01<0.01
K15,90031,50048,80065,00080,70096,400113,000128,000
Mg39,00077,500121,000161,000194,000228,000254,000280,000
Mn1.22.162.733.393.613.933.994.08
Mo0.8071.522.323.0544.745.877.05
Na374,000748,0001,160,0001,550,0001,920,0002,290,0002,650,0003,000,000
Ni0.2850.5560.79311.281.461.71.88
Pb<0.02<0.03<0.05<0.06<0.08<0.09<0.1<0.1
V0.1530.3650.6050.8871.281.541.71.84
Zn0.18<0.3<0.50.666<0.8<1<1<1
B1402824385847108369371040
Sb0.04670.10.150.2070.2890.3580.4680.584
Se<0.2<0.5<0.7<0.9<18.34<9<9
Naphthalene<0.002<0.005<0.007<0.009<0.01<0.01<0.02<0.02
Acy<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
Acenaphthene<0.0008<0.002<0.002<0.003<0.0040.0049<0.006<0.006
Fluorine<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
Phenanthrene<0.002<0.003<0.005<0.006<0.008<0.009<0.01<0.01
Anthracene<0.0008<0.002<0.002<0.003<0.004<0.005<0.002<0.006
Fluoranthene<0.0008<0.002<0.0020.00310.0050.0060.0079<0.009
Pyrene<0.00080.00210.0040.00560.00930.010.0180.021
B[a]A<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
Chrysene<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
BjF<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
BkF<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
BaP<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
DBahA<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
BghiP<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
IP<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
Total PAH 16<0.00720.00850.010.0130.0190.0250.0320.035
Total carc. PAH<0.0027<0.0053<0.008<0.011<0.013<0.016<0.019<0.021
Total oth. PAH<0.0050.00590.0070.010.0160.0220.030.032
Total PAH L<0.0019<0.0038<0.0057<0.00760.00860.0094<0.011<0.013
Total PAH M<0.0020.00360.0050.0080.0130.0180.0250.028
Total PAH H<0.003<0.006<0.009<0.01<0.02<0.02<0.02<0.02
MBT0.0004040.003660.005690.007920.01330.01880.02320.0303
DBT<0.00008<0.0002<0.0002<0.00030.0004460.0005580.0007110.00095
TBT0.00008070.000176<0.00030.000340.0004410.0005450.0006250.000758
TTBT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
MOT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
DOT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
TCyT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
MPhT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
DPhT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
TPhT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
PCB 28<0.000084<0.00017<0.00025<0.00033<0.00042<0.0005<0.00059<0.00067
PCB 52<0.000084<0.00017<0.00025<0.00033<0.00042<0.0005<0.00059<0.00067
PCB 101<0.000084<0.00017<0.00025<0.00033<0.00042<0.0005<0.00059<0.00067
PCB 118<0.000084<0.00017<0.00025<0.00033<0.00042<0.0005<0.00059<0.00067
PCB 138<0.000091<0.00018<0.00027<0.00037<0.00046<0.00055<0.00064<0.00073
PCB 153<0.000084<0.00017<0.00025<0.00033<0.00042<0.0005<0.00059<0.00067
PCB 180<0.000084<0.00017<0.00025<0.00033<0.00042<0.0005<0.00059<0.00067
Total PCB 7<0.0003<0.00059<0.00089<0.0012<0.0015<0.0018<0.0021<0.0024

Appendix B. Leaching of Contaminants: Sampling 2325–2332

Appendix B.1. Surface Leaching of Contaminants

Notations for common for all the samples in Table A3. The applied Methodology contains Batch 1, Prov 7. The start and end days of the tests are from 30 January 2023 until 4 April 2023. The experiments were performed by Robert Selegård in Swedish Geotechnical Institute, registered under Diary Nr. 1.1-2107-0587. The amount of leachate for all samples is 1.50 L. Conductivity was measured in mS/m by temperature of sampling at 25 C. The period refers to the day of sampling. Surface: 0.0197 m2. Redox (mVolts) refers to oxidation (reduction) potential of solutions or chemical species to acquire/lose electrons and be reduced/oxidised. Leached amount/withdrawal is given in mg/m2 for all the samples.
Abbreviations for organic compounds: Acy—acenaphthylene; BaP—Benz[a]pyrene; B[a]A—Benz[a]anthracene; BjF—Benzo[j]fluoranthene; BkF—Benzo[k]fluoranthene; MBT—Monobutyltin; DBT—Dibutyltin; TBT—Tributyltin; TTBT—Tetrabutyltin; MOT—Monooctyltin; DOT—Dioctyltin; TCyT—Tricyclohexyltin; MPhT—Monophenyltin; DPhT—Diphenyltin; IP—Indeno[1,2,3-cd]pyrene; DBahA—Dibenz[a,h]anthracene; BghiP—Benz[g,h,i]perylene; TPhT—Triphenyltin; Total oth. PAH—Total other PAH; Total carc. PAH—Total amount of carcinogenic PAH.
Table A3. Surface leaching of contaminants (heavy metals, organic compounds, PCB and PAH, mg/m2) from soil specimens during period of 64 days of sampling (2325–2332).
Table A3. Surface leaching of contaminants (heavy metals, organic compounds, PCB and PAH, mg/m2) from soil specimens during period of 64 days of sampling (2325–2332).
Period6 h1 Days2.25 Days4 Days9 Days16 Days36 Days64 Days
Sample No23252326232723282329233023312332
pH8.949.219.19.29.229.068.428.21
Conductivity25302510284028602600276027302740
Redox (mV)3670363930275887
Al1.861.731.41.340.680.610.4170.387
As0.05810.07530.08590.06420.07820.08210.05690.0828
Ba6.046.897.666.6513.113.42120.1
Ca15,90017,40019,60019,00024,20024,30032,30035,000
Cd0.00420.00505<0.004<0.004<0.004<0.004<0.0040.00431
Co0.0370.02950.02390.02660.04190.02710.02920.0413
Cr<0.04<0.04<0.04<0.04<0.04<0.04<0.04<0.04
Cu1.30.9360.6740.5390.5990.5940.890.967
Fe0.8590.660.590.463<0.3<0.3<0.3<0.3
Hg<0.002<0.002<0.002<0002<0.002<0.002<0.002<0.002
K16,00015,60017,50016,30016,00015,40016,20015,500
Mg39,40039,40043,60040,70034,00034,30026,70027,200
Mn1.331.030.5420.5610.1960.2710.07980.0427
Mo0.7820.720.7820.680.8980.7981.11.17
Na380,000371,000418,000394,000371,000364,000350,000359,000
Ni0.4110.3150.2240.3010.4110.2330.1730.158
Pb<0.02<0.02<0.02<0.02<0.02<0.02<0.02<0.02
V0.1410.210.2430.2420.3510.240.150.116
Zn0.278<0.2<0.2<0.2<0.2<0.2<0.2<0.2
B144144157149128124101104
Sb0.0440.04850.05010.05110.08820.07250.1140.11
Se<0.2<0.2<0.2<0.2<0.24.2<0.2<0.2
Naphthalene<0.002<0.002<0.002<0.002<0.002<0.002<0.002<0.002
Acy<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
Acenaphthene<0.0008<0.0008<0.0008<0.00080.000920.0008<0.0008<0.0008
Fluorine<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
Phenanthrene<0.002<0.002<0.002<0.002<0.002<0.002<0.002<0.002
Anthracene<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
Fluoranthene<0.0008<0.0008<0.0008<0.00080.00120.00120.00180.001
Pyrene<0.00080.00120.00170.0020.00350.00370.00530.0044
B[a]A<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
Chrysene<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
BjF<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
BkF<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
BaP<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
DBahA<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
BghiP<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
IP<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
Total PAH 16<0.00730.00120.00170.0020.00570.00570.00710.0054
Total carc. PAH<0.0027<0.0027<0.0027<0.0027<0.0027<0.0027<0.0027<0.0027
Total oth. PAH<0.0050.00120.00170.0020.00570.00570.00710.0054
Total PAH L<0.0019<0.0019<0.0019<0.00190.000920.0008<0.0019<0.0019
Total PAH M<0.0020.00120.00170.0020.00480.00490.00710.0054
Total PAH H<0.003<0.003<0.003<0.003<0.003<0.003<0.003<0.003
MBT0.0003330.00270.002290.003350.003980.01530.005150.0174
DBT<0.00008<0.00008<0.00008<0.000080.000130.0001080.0001320.000272
TBT0.0001080.0000936<0.000080.00009440.0001030.0001090.0000890.000144
TTBT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
MOT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
DOT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
TCyT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
MPhT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
DPhT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
TPhT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
PCB 28<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
PCB 52<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
PCB 101<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
PCB 118<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
PCB 138<0.000092<0.000092<0.000092<0.000092<0.000092<0.000092<0.000092<0.000092
PCB 153<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
PCB 180<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
Total PCB 7<0.0003<0.0003<0.0003<0.0003<0.0003<0.0003<0.0003<0.0003

Appendix B.2. Cumulative Surface Leaching of Contaminants

Notations for Table A4. The applied methodology is based on the three approaches:
  • Standards SS-EN ISO 10523:2012 with measurement uncertainty of ±0.05 pH-enh;
  • SS-EN 27888-1:1994 with measurement uncertainty ±2.9%;
  • SGI-method with measurement uncertainty pf ± 25%.
Table A4. Cumulative surface leaching (heavy metals, organic compounds, PCB and PAH, mg/m2) from soil specimens during period of 64 days of sampling (2325–2332).
Table A4. Cumulative surface leaching (heavy metals, organic compounds, PCB and PAH, mg/m2) from soil specimens during period of 64 days of sampling (2325–2332).
Period6 h1 Days2.25 Days4 Days9 Days16 Days36 Days64 Days
Sample No23252326232723282329233023312332
Al1.863.656.3277.68.028.41
As0.05810.1330.2190.2840.3620.4440.5010.584
Ba6.0412.920.627.240.353.87494.6
Ca15,90033,30052,90072,00096,300121,00015,300190,000
Cd0.00420.00927<0.01<0.02<0.02<0.02<0.030.0328
Co0.0370.06630.09020.1170.1590.1860.2150.256
Cr<0.04<0.08<0.1<0.2<0.2<0.2<0.3<0.3
Cu1.32.232.913.454.044.645.536.5
Fe0.8591.522.12.57<3<3<3<4
Hg<0.002<0.003<0.005<0.006<0.008<0.009<0.01<0.01
K16,00031,60049,10065,40081,30096,700113,000128,000
Mg39,40078,800122,000163,000197,000231,000258,000285,000
Mn1.332.352.93.463.653.9244.05
Mo0.7821.52.2933.874.665.76.9
Na380,000747,0001,170,0001,560,0001,930,0002,290,0002,600,0003,010,000
Ni0.4110.7260.951.251.661.92.072.23
Pb<0.02<0.03<0.05<0.06<0.08<0.09<0.1<0.1
V0.1410.350.5910.8331.181.41.571.69
Zn0.278<0.4<0.6<0.7<0.9<1<1<1
B1442884455947228469471050
Sb0.0440.09240.1430.1940.2820.3540.4690.579
Se<0.2<0.5<0.7<0.9<15.35<6<6
Naphthalene<0.002<0.005<0.007<0.009<0.01<0.01<0.02<0.02
Acy<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
Acenaphthene<0.0008<0.002<0.002<0.0030.0040.005<0.006<0.006
Fluorine<0.0008<0.002<0.002<0.0030.0040.005<0.005<0.006
Phenanthrene<0.0008<0.002<0.002<0.0030.0040.005<0.005<0.006
Anthracene<0.0008<0.002<0.002<0.0030.0040.005<0.005<0.006
Fluoranthene<0.0008<0.002<0.002<0.0030.00430.0055<0.0074<0.0084
Pyrene<0.00080.00190.00360.00560.00910.0130.0180.023
B[a]A<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
Chrysene<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
BjF<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
BkF<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
BaP<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
DBahA<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
BghiP<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
IP<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
Total PAH 16<0.00730.00840.010.0120.0180.0230.0310.036
Total carc. PAH<0.0027<0.0054<0.0081<0.011<0.013<0.016<0.019<0.021
Total oth. PAH<0.0050.00580.00740.00940.0150.0210.0280.033
Total PAH L<0.0019<0.0038<0.0058<0.00770.00860.009<0.011<0.013
Total PAH M<0.0020.00350.00510.00710.0120.0170.0240.029
Total PAH H<0.003<0.006<0.009<0.01<0.02<0.02<0.02<0.02
MBT0.0003330.0030.005310.008660.01260.02790.03310.0505
DBT<0.00008<0.0002<0.0002<0.00030.0004360.0005450.0006770.000948
TBT0.0001080.000202<0.00030.0003730.0004760.0005850.0006740.000818
TTBT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
MOT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
DOT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
TCyT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
MPhT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
DPhT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
TPhT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
PCB 28<0.000084<0.00017<0.00025<0.00034<0.00042<0.00051<0.00059<0.00068
PCB 52<0.000084<0.00017<0.00025<0.00034<0.00042<0.00051<0.00059<0.00068
PCB 101<0.000084<0.00017<0.00025<0.00034<0.00042<0.00051<0.00059<0.00068
PCB 118<0.000084<0.00017<0.00025<0.00034<0.00042<0.00051<0.00059<0.00068
PCB 138<0.000092<0.00018<0.00028<0.00037<0.00046<0.00055<0.00064<0.00074
PCB 153<0.000084<0.00017<0.00025<0.00034<0.00042<0.00051<0.00059<0.00068
PCB 180<0.000084<0.00017<0.00025<0.00034<0.00042<0.00051<0.00059<0.00068
Total PCB 7<0.0003<0.0006<0.0009<0.0012<0.0015<0.0018<0.0021<0.0024

Appendix C. Leaching of Contaminants: Sampling 2333–2340

Appendix C.1. Surface Leaching of Contaminants

Notations for all the samples in Table A5. The applied Methodology contains Batch 1, Prov 8A. The start and end days of the tests are from 30 January 2023 until 4 April 2023. The experiments were performed by Robert Selegård in Swedish Geotechnical Institute, registered under Diary Nr. 1.1-2107-0587. The amount of leachate for all samples is 1.5 L. Conductivity was measured in mS/m by temperature of sampling at 25 C. The period refers to the day of sampling. Surface: 0.0197 m2. Redox (mVolts) refers to oxidation (reduction) potential of solutions or chemical species to acquire / lose electrons and be reduced/oxidised. Leached amount/withdrawal is given in mg/m2 for all the samples.
Table A5. Surface leaching of contaminants (heavy metals, organic compounds, PCB and PAH, mg/m2) from soil specimens during period of 64 days of sampling (2333–2340).
Table A5. Surface leaching of contaminants (heavy metals, organic compounds, PCB and PAH, mg/m2) from soil specimens during period of 64 days of sampling (2333–2340).
Period6 h1 Days2.25 Days4 Days9 Days16 Days36 Days64 Days
Sample No23332334233523362337233823392340
pH8.758.688.578.728.88.498.157.87
Conductivity25202510266028602750276027402760
Redox (mV)4684745745427475
Al2.252.031.751.60.7490.780.6240.646
As0.06370.0740.0840.06870.1050.1350.0710.0895
Ba8.119.2511.310.419.420.530.326.8
Ca16,70018,10022,00022,00030,10031,50050,00047,000
Cd0.00560.00637<0.004<0.004<0.004<0.004<0.0040.00499
Co0.04140.0360.0330.02260.0420.0280.04860.0499
Cr0.04140.0360.0330.02260.0420.0280.04860.0499
Cu1.461.130.8030.7220.7390.7410.9410.941
Fe0.9020.840.5560.593<0.3<0.3<0.3<0.3
Hg<0.002<0.002<0.002<0.002<0.002<0.002<0.002<0.002
K16,00015,80017,50016,20015,90015,60016,40020,000
Mg38,80037,90041,80038,40029,50029,90020,00020,500
Mn1.281.10.6120.7720.1350.08560.02630.0247
Mo0.8110.7720.8950.7721.040.9481.191.29
Na375,000370,000415,000389,000370,000366,000360,000364,000
Ni0.3720.3620.2920.2680.40.2590.3380.129
Pb<0.02<0.02<0.02<0.02<0.02<0.02<0.02<0.02
V0.1720.2840.3530.3640.450.2950.1540.122
Zn0.2940.1830.2160.2<0.2<0.2<0.2<0.2
B13913915114111611088.791.8
Sb0.05610.06640.06990.07240.1080.09710.1350.135
Se<0.2<0.2<0.2<0.20.554.47<0.2<0.2
Naphthalene<0.002<0.002<0.002<0.0020.004<0.002<0.002<0.002
Acy<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
Acenaphthene<0.0008<0.0008<0.0008<0.00080.0017<0.0008<0.0008<0.0008
Fluorine<0.0008<0.0008<0.0008<0.00080.00099<0.0008<0.0008<0.0008
Phenanthrene<0.002<0.002<0.002<0.0020.0041<0.002<0.002<0.002
Anthracene<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
Fluoranthene0.000990.0020.00220.00280.00430.0036<0.0008<0.0008
Pyrene0.00110.00220.00290.00340.00570.00570.00370.0013
B[a]A<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
Chrysene<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
BjF<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
BkF<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
BaP<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
DBahA<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
BghiP<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
IP<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008<0.0008
Total PAH 160.00210.00420.00510.00620.0210.009330.00370.0013
Total carc. PAH<0.0027<0.0027<0.0027<0.0027<0.0027<0.0027<0.0027<0.0027
Total oth. PAH0.00210.00420.00510.00620.0210.009330.00370.0013
Total PAH L<0.0019<0.0019<0.0019<0.00190.0057<0.0019<0.0019<0.0019
Total PAH M0.00210.00420.00510.00620.0150.009330.00370.0013
Total PAH H<0.003<0.003<0.003<0.003<0.003<0.003<0.003<0.003
MBT0.001420.002550.001890.002620.004530.009020.005540.00661
DBT0.0000910.000110.00008490.000110.0002110.0002480.0002360.000593
TBT0.0001420.0001180.0001090.0001510.0001570.0001210.0001250.000113
TTBT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
MOT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
DOT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
TCyT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
MPhT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
DPhT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
TPhT<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008<0.00008
PCB 28<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
PCB 52<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
PCB 101<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
PCB 118<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
PCB 138<0.000092<0.000092<0.000092<0.000092<0.000092<0.000092<0.000092<0.000092
PCB 153<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
PCB 180<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084<0.000084
Total PCB 7<0.0003<0.0003<0.0003<0.0003<0.0003<0.0003<0.0003<0.0003

Appendix C.2. Cumulative Surface Leaching of Contaminants

Table A6. Cumulative surface leaching (heavy metals, organic compounds, PCB and PAH, mg/m2) from soil specimens during period of 64 days of sampling (2333–2340).
Table A6. Cumulative surface leaching (heavy metals, organic compounds, PCB and PAH, mg/m2) from soil specimens during period of 64 days of sampling (2333–2340).
Period6 h1 Days2.25 Days4 Days9 Days16 Days36 Days64 Days
Sample No23332334233523362337233823392340
Al2.254.286.037.638.389.169.7810.4
As0.06370.1380.220.290.3950.530.60.69
Ba8.1117.428.739.158.579109136
Ca16,70034,80057,00079,000109,000141,000200,000230,000
Cd0.00560.012<0.02<0.02<0.02<0.03<0.030.0361
Co0.04140.07750.110.1330.180.20.2510.301
Cr<0.04<0.08<0.1<0.2<0.2<0.2<0.3<0.3
Cu1.462.593.44.124.865.66.547.48
Fe0.9021.72.32.89<3<4<4<4
Hg<0.002<0.003<0.005<0.006<0.008<0.009<0.01<0.01
K16,00031,80049,30065,50081,40097,000113,000100,000
Mg38,80076,800119,000157,000186,000216,000236,000257,000
Mn1.282.3933.773.913.994.024.04
Mo0.8111.582.483.254.295.246.437.72
Na375,000750,0001,170,0001,550,0001,900,0002,290,0002,600,0003,010,000
Ni0.3720.7331.031.291.71.952.292.42
Pb<0.02<0.03<0.05<0.06<0.08<0.09<0.1<0.1
V0.1720.4560.811.171.61.922.072.2
Zn0.2940.4770.6930.893<1<1<1<2
B139278430570686796885976
Sb0.05610.1230.1920.2650.3730.470.6040.74
Se<0.2<0.5<0.7<0.91.55.94<6<6
Naphthalene<0.002<0.005<0.007<0.0090.013<0.02<0.02<0.02
Acy<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
Acenaphthene<0.0008<0.002<0.002<0.0030.0047<0.006<0.006<0.007
Fluorine<0.0008<0.002<0.002<0.003<0.0041<0.005<0.006<0.006
Phenanthrene<0.002<0.003<0.005<0.0060.01<0.01<0.01<0.01
Anthracene<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
Fluoranthene0.000990.0030.00520.0080.0120.016<0.02<0.02
Pyrene0.00110.00330.00620.00960.0150.0210.0250.026
B[a]A<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
Chrysene<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
BjF<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
BkF<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
BaP<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
DBahA<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
BghiP<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
IP<0.0008<0.002<0.002<0.003<0.004<0.005<0.005<0.006
Total PAH 160.00210.00630.0110.0180.0380.04760.0510.053
Total carc. PAH<0.0027<0.0054<0.008<0.011<0.013<0.016<0.019<0.021
Total oth. PAH0.00210.00630.0110.0180.0380.04760.0510.053
Total PAH L<0.0019<0.0038<0.0057<0.00760.013<0.015<0.017<0.019
Total PAH M0.00210.00630.0110.0180.03260.04190.0460.047
Total PAH H<0.003<0.006<0.009<0.01<0.02<0.02<0.02<0.02
MBT0.001420.003980.005860.008490.0130.0220.02760.0342
DBT0.0000910.00020.0002830.000390.0006010.0008490.001080.00168
TBT0.0001420.000260.0003690.0005190.0006760.0007970.0009220.00104
TTBT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
MOT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
DOT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
TCyT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
MPhT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
DPhT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
TPhT<0.00008<0.0002<0.0002<0.0003<0.0004<0.0005<0.0005<0.0006
PCB 28<0.000084<0.00017<0.00025<0.00034<0.00042<0.0005<0.00059<0.00067
PCB 52<0.000084<0.00017<0.00025<0.00034<0.00042<0.0005<0.00059<0.00067
PCB 101<0.000084<0.00017<0.00025<0.00034<0.00042<0.0005<0.00059<0.00067
PCB 118<0.000084<0.00017<0.00025<0.00034<0.00042<0.0005<0.00059<0.00067
PCB 138<0.000092<0.00018<0.00028<0.00037<0.00046<0.00055<0.00064<0.00073
PCB 153<0.000084<0.00017<0.00025<0.00034<0.00042<0.0005<0.00059<0.00067
PCB 180<0.000084<0.00017<0.00025<0.00034<0.00042<0.0005<0.00059<0.00067
Total PCB 7<0.0003<0.0006<0.00089<0.0012<0.0015<0.0018<0.0021<0.0024

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Figure 1. Containers in which dredged soil materials were stored after transportation. Photo source: Per Lindh.
Figure 1. Containers in which dredged soil materials were stored after transportation. Photo source: Per Lindh.
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Figure 2. Process of surface leaching test on soil specimens. Photo source: Per Lindh.
Figure 2. Process of surface leaching test on soil specimens. Photo source: Per Lindh.
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Figure 3. Permeability of soil in relation to the ratio between cement (c) and slag (s) for dredged soil. The best results with the lowest permeability of soil show the combination of binders for 30% cement and 70% slag. The abbreviation H W L B stands for “high water–low binder” level in a mixture.
Figure 3. Permeability of soil in relation to the ratio between cement (c) and slag (s) for dredged soil. The best results with the lowest permeability of soil show the combination of binders for 30% cement and 70% slag. The abbreviation H W L B stands for “high water–low binder” level in a mixture.
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Figure 4. Permeability of soil samples changing over time of experiment (in hours), Specimen IDs: (a) 1 _ 5 , (b) 4 _ 1 , (c) 5 _ 4 , (d) 3 _ 5 , (e) 6 _ 5 , and (f) 8 _ 5 .
Figure 4. Permeability of soil samples changing over time of experiment (in hours), Specimen IDs: (a) 1 _ 5 , (b) 4 _ 1 , (c) 5 _ 4 , (d) 3 _ 5 , (e) 6 _ 5 , and (f) 8 _ 5 .
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Figure 5. Cumulative leaching of arsenic (As) against time in tested specimen samples.
Figure 5. Cumulative leaching of arsenic (As) against time in tested specimen samples.
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Figure 6. Cumulative leaching of nickel (Ni) over time in tested soil specimens.
Figure 6. Cumulative leaching of nickel (Ni) over time in tested soil specimens.
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Figure 7. Cumulative leaching of PAH-16 in tested soil samples.
Figure 7. Cumulative leaching of PAH-16 in tested soil samples.
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Figure 8. Developed leaching of TBT from the soil samples over time. Blue area represents the significant level of cumulative leaching.
Figure 8. Developed leaching of TBT from the soil samples over time. Blue area represents the significant level of cumulative leaching.
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Table 1. Parameters of the six soil specimens tested for permeability using permeameter in SGI.
Table 1. Parameters of the six soil specimens tested for permeability using permeameter in SGI.
Sample IDSample Water Ratio (%)Bulk Density (t/m3)Dry Density (t/m3)
1 _ 5 60.81.621.01
4 _ 1 75.31.490.85
5 _ 4 1071.400.68
3 _ 5 63.51.620.99
6 _ 5 45.21.771.22
8 _ 5 45.51.721.18
Table 2. Development of permeability (p, m/s) of the soil specimen over time (t, hours). The maximal achieved permeability level in soil specimen after the period of treatment is in bold text.
Table 2. Development of permeability (p, m/s) of the soil specimen over time (t, hours). The maximal achieved permeability level in soil specimen after the period of treatment is in bold text.
Sample 1_5Sample 3_5Sample 4_1Sample 5_4Sample 6_5Sample 8_5
tptptptptptp
41.901.7  ×   10 9 41.941.1  ×   10 9 41.911.2  ×   10 9 65.916.2  ×   10 10 41.962.3  ×   10 9 17.981.2  ×   10 9
49.961.8  ×   10 9 49.991.2  ×   10 9 49.971.1  ×   10 9 74.056.1  ×   10 10 46.292.3  ×   10 9 26.021.2  ×   10 9
65.881.9  ×   10 9 65.931.4  ×   10 9 65.891.5  ×   10 9 91.275.0  ×   10 10 50.002.3  ×   10 9 41.961.7  ×   10 9
74.021.8  ×   10 9 74.071.4  ×   10 9 74.031.8  ×   10 9 122.254.9  ×   10 10 65.942.5  ×   10 9 50.111.9  ×   10 9
91.231.5  ×   10 9 91.291.2  ×   10 9 91.241.6  ×   10 9 74.092.9  ×   10 9 67.321.7  ×   10 9
91.313.0  ×   10 9
122.221.5  ×   10 9 122.261.0  ×   10 9 122.231.2  ×   10 9 144.984.8  ×   10 10 122.273.0  ×   10 9 98.281.5  ×   10 9
Table 3. Original level of contaminants: 7 types of heavy metals (mg/kg), total PAH-16 (mg/kg), and TBT ( μ g Sn/kg) collected in various test sites (TS) of Kongshavn.
Table 3. Original level of contaminants: 7 types of heavy metals (mg/kg), total PAH-16 (mg/kg), and TBT ( μ g Sn/kg) collected in various test sites (TS) of Kongshavn.
Test SiteHeavy MetalsTotal PAH-16TBT-Sn
AsPbCdCrHgNiZn
1–213470.5470.365412009.437
3–410340.2430.17381400.52.8
59380.32450.174301400.94<2.0
67.5450.1370.317261801.438
8131000.86520.574503508.15.9
Table 4. Concentration level of origin for PCBs in Kongshavn test sites (TS) (mg/kg TS).
Table 4. Concentration level of origin for PCBs in Kongshavn test sites (TS) (mg/kg TS).
TSPCB 28PCB 52PCB 101PCB 118PCB 153PCB 138PCB 180∑ 7 PCB
1–20.00540.0190.0140.00980.200.200.0130.1
3–4<0.000500.00061<0.00050<0.000500.000630.00063<0.000500.0019
5<0.00053<0.00053<0.00053<0.000530.00110.00110.000700.0029
60.00170.00590.00260.00310.00330.00330.00220.022
80.00630.0170.0150.0120.0120.0120.00710.081
Table 5. Deviation classification of heavy metals according to the Swedish standards (mg/kg TS).
Table 5. Deviation classification of heavy metals according to the Swedish standards (mg/kg TS).
MetalClass 1Class 2Class 3Class 4Class 5
As<1010–1717–2828–45>45
Cd<0.21.2–0.50.5–1.21.2>3
Cr<4040–4848–6060–72>72
Cu<1515–3030–49.549.5–79.5>79.5
Hg<0.040.04–0.120.12–0.40.4–1>1
Ni<3030–4546–6666–99>99
Pb<2525–4040–6565–110>110
Zn<8585–127.5127.5–204204–357>357
Notations for Classes in Table 5: Class 1—No insignificant deviation from comparative values; Class 2—Small deviation the comparative value; Class 3—Clear deviation from comparative values; Class 4—Large deviation from comparative values; Class 5—Very large deviation from comparative values.
Table 6. Values of concentrations of leaching contaminants (mg/m2) from soil samples: above or below the reported limits.
Table 6. Values of concentrations of leaching contaminants (mg/m2) from soil samples: above or below the reported limits.
SampleAsPbCdCrHgNiZn
B 1, S-6abovebelowbelowbelowbelowaboveboth
B 1, S-7abovebelowbelowbelowbelowabovebelow
B 1, S-8Aabovebelowbelowbelowbelowaboveboth
Notations for abbreviations in Table 6: B1—Batch 1; S6—Sample 6; S7—Sample 7; S-8A—Sample 8A; As—Arsenic; Pb—Lead; Cd—Cadmium; Cr—Chromium; Hg—Mercury; Ni—Nickel; Zn—Zinc.
Table 7. Surface leaching of contaminants (heavy metals and TBT, mg/m2) from soil after 9 days.
Table 7. Surface leaching of contaminants (heavy metals and TBT, mg/m2) from soil after 9 days.
Metal O _ P 6 O _ P 7 O _ P 8 A A H W L B 23A H W L B 17A H W L B 18T H W L B 11T H W L B 09
As0.08070.07820.1050.02760.0050<0.00140.00420.0090
Cd<0.004<0.004<0.0040.00250.00035<0.00028<0.0003<0.0003
Cr<0.04<0.04<0.040.0060.0100.00910.00910.024
Hg<0.002<0.002<0.002<0.0063<0.0070<0.0070<0.0076<0.0082
Ni0.2720.4110.40.521.10.140.460.69
Zn<0.2<0.2<0.2<0.013<0.014<0.014<0.015<0.02
TBT101  ×   10 6 103  ×   10 6 157  ×   10 6 275  ×   10 6 1180  ×   10 6 315  ×   10 6
Notations for Table 7: H W L B indicate a “high water/low binder” ratio in a mixture. The abbreviations indicate the locations where measurements were performed: Oslo (O), Arendal (A), and Timrå (T).
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Lindh, P.; Lemenkova, P. Optimized Workflow Framework in Construction Projects to Control the Environmental Properties of Soil. Algorithms 2023, 16, 303. https://doi.org/10.3390/a16060303

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Lindh P, Lemenkova P. Optimized Workflow Framework in Construction Projects to Control the Environmental Properties of Soil. Algorithms. 2023; 16(6):303. https://doi.org/10.3390/a16060303

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Lindh, Per, and Polina Lemenkova. 2023. "Optimized Workflow Framework in Construction Projects to Control the Environmental Properties of Soil" Algorithms 16, no. 6: 303. https://doi.org/10.3390/a16060303

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Lindh, P., & Lemenkova, P. (2023). Optimized Workflow Framework in Construction Projects to Control the Environmental Properties of Soil. Algorithms, 16(6), 303. https://doi.org/10.3390/a16060303

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