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Article

Sensitivity Analysis of Rigid Pavement Design Based on Semi-Empirical Methods: Romanian Case Study

1
Department of Civil Engineering, Transilvania University of Brasov, Eroilor 29, 500036 Brasov, Romania
2
Department of Mechanical Engineering, Transilvania University of Brasov, Eroilor 29, 500036 Brasov, Romania
*
Author to whom correspondence should be addressed.
Symmetry 2021, 13(2), 168; https://doi.org/10.3390/sym13020168
Submission received: 21 December 2020 / Revised: 9 January 2021 / Accepted: 18 January 2021 / Published: 22 January 2021
(This article belongs to the Special Issue Symmetry in Engineering Sciences Ⅲ)

Abstract

:
Due to the intensive process of road construction or rehabilitation of pavement caused by an increase in traffic volume, in the field of rigid pavement design and research in Romania, we can say that there is a need to improve the design method. In the last decade, more and more researchers have been concerned about climate change and the increase in traffic volume; hence, there is a need for a renewal of the climatological, as well as traffic, databases because these are part of the input data for the design process. The design method currently used in Romania for jointed plain concrete pavement design is NP081/2002. The limitation of the data and the lack of lifetime estimation of structural and functional performance are the main aspects that need to be addressed in the new design procedure. The Mechanistic–Empirical Pavement Design (MEPDG) method offers the possibility of the design of pavement structures by estimating the structural and functional performances. This paper aims to obtain a comparative study of these two methods for the analysis of the input data collected from the field corresponding to the three failure criteria, while the symmetry of the characteristics of the material and their asymmetrical thicknesses are compared, thus contributing to the design of viable and long-lasting pavement structures using a rigid pavement with the specific characteristics of the mountainous area in northeastern Romania on the national road DN17 Suceava—Vatra Dornei. The novelty of this study consists of the implementation of the mechanistic–empirical method MEPDG instead of the old NP081/2002 method used in Romania.

1. Introduction

The design of road structures involves the estimation of structural and functional performances. With greater design accuracy, all maintenance and repair costs are reduced, and the corrective activities can be planned in advance. For the design of rigid pavements, over time, several methods have been developed, including predominantly theoretical (the Westergaard, Westergaard/Ioannides—USA diagram method and the Picket and Ray USA—method based on the finite element calculation scheme) and semi-empirical methods that combine theoretical design relationships with experimental results (modified Westergaard method, Highway Agency—UK method, AASHTO—American Association of State Highway and Transportation Officials method for plain concrete and for continuously reinforced concrete pavement, the MEPDG method—Mechanistic–Empirical Pavement Design USA, the Romanian method NP 081/2002, etc.) [1,2]. The semi-empirical methods have the advantage of estimating the lifetime of the pavement design on the basis of performances obtained in practice, whereas the input data allow the personalization of each case according to the climatic conditions, soil condition, pavement structure, and the traffic loads, as discussed elsewhere [3,4,5]. Gaspar et al. [6] and Plescan [7] presented comparative studies on the application of these methods, from the geographical and topographic point of view, and others discussed optimization methods of the pavement design by recalibrating the obtained models [8,9,10]. Of all the mechanistic–empirical methods, the MEPDG method is considered one of the most realistic methods, not only for the design of pavement models but also because it offers the possibility of sizing the pavement structures by modifying the parameters of the transfer function, as discussed elsewhere [11,12,13,14,15]. It was found that both the loads imposed on the ground and the time accelerate the structural and functional deterioration of rigid pavements, leading to its premature failure. Therefore, the sensitivity analysis of the most significant predictive factor of pavement performance analyzed in a known geoclimatic context and under certain traffic conditions represents the current challenge of the researchers in the field, as discussed by [16,17]. Thus, the quality of a jointed plain concrete pavement (JPCP) design is given by the degree of sensitivity of the results obtained by modifying the scenario or the input dataset, as discussed by Zhu et al. and Mu et al. [18,19]. Amin [4] presented comparatively different deterministic and stochastic approaches for calculating the pavement performance curves, highlighting the advantages and disadvantages of each approach. Chong et al. [20] presented a method of multi-objective optimization of rigid pavement design starting from the objective function of reducing energy consumption and greenhouse gas emissions, in correlation with the thickness of the pavement and the surface roughness. Although the design of JPCP is carried out under the conditions of known parameters (traffic volume, climatic conditions, material), it has been found that traffic volume increases in logarithmic progression, which affects the structural and functional performances of the pavement in a shorter time than predicted by the design methods. Bayrak and Hinislioğlu [21] presented a comprehensive study that combines different analysis methods to determine the optimum thickness of the layer and the quality of the materials at a low cost–efficiency ratio.
Due to the particularities of each area, namely, environmental conditions, type of traffic, or characteristics of the base layer, the design of the road structure differs. Starting from the variability in the methods for designing the road pavement, the objective of the paper consists of a critical analysis of the efficiency of the MEPDG method for designing a jointed plain concrete pavement (JPCP). In order to achieve the proposed objective, a detailed study on the principles of the design methods for rigid pavement structures currently used in the world was undertaken, finally selecting and studying this method in detail by applying it to a significant case study in Romania located in a northeastern Romania mountain area on the National Road DN17 (E 576). This road was selected to predict the jointed plain concrete pavement models and analyze them from the performance point of view, compared to the Romanian design method according to the NP081/2002 standard. The novelty of this study consists of predicting the behavior of 72 pavement structures with different physical–mechanical characteristics, according to their response over time from the point of view of cracking, faulting, and roughness (international roughness index, IRI).

2. Summary of Basic Theory

2.1. Romanian Standard NP 081/2002

2.1.1. The Design Traffic

According to Romanian Standard NP 081/2002 “Technical recommendation for the structural design of rigid road pavements” [2], the jointed plain concrete pavement is based on the following main steps: establishing the design traffic; establishing the bearing capacity of the foundation soil; conceiving the rigid pavement structure; establishing the bearing capacity at the level of the base course; determining the thickness of the surface course. Preliminary studies have been undertaken to obtain relevant data concerning the composition, intensity, and evolution of traffic, the geotechnical characteristics of the foundation soil, and the hydrologic regime on the site, provided by the Regional Roads and Bridges Directorate Iasi. The design traffic denoted Nc is expressed in millions of standard axles and is calculated with Equation (1), as a function of the average annual daily traffic (AADT) presented in Table 1, for a perspective period of 30 years, and a coefficient for the transversal distribution crt for the lanes of 0.50.
N c = 365 10 6 p p c r t k = 1 6 M Z A p k f e k ,
where pp is the perspective period, crt is the transversal distribution, MZA/AADT is the annual average daily traffic, pk is the coefficient of evolution, and fek is the equivalence coefficient.
Substituting the values in mathematical Equation (1) allows obtaining the design traffic Nc = 20.43 m.s.a. (millions of single axles).

2.1.2. The Bearing Capacity of the Foundation Soil

The coefficient of subgrade reaction, K0, is determined in correlation with the climate and hydrologic regime and soil type, as given in Table 2. According to Romanian standard STAS 1709/2 [22], the hydrological regime is distributed as follows: hydrological regime 1, corresponding to the favorable conditions; hydrological regime 2, corresponding to the medium and unfavorable hydrological conditions, where 2a represents embankment road sectors, with a minimum height of 1.00 m, 2b is considered for sectors of road located in the mound with a height beneath 1.00 m, at ground height, at a mixed profile, and in cutting. Table 2 presents the soil type according to Romanian standard STAS 1243–1988 [23]. Because the road segment to which we applied the Romanian dimensioning method is characterized by soil type P3, climate type III, and hydrologic regime 2b, following Table 2, the coefficient of subgrade reaction is K0 = 42 MN/m3.

2.1.3. The Bearing Capacity at the Level of the Base Course

The bearing capacity at the level of the base course is expressed by the coefficient of reaction at the surface of the base course, K, as given in Figure 1a, which is determined as a function of the coefficient of subgrade reaction K0 and the equivalent thickness of the base/subbase courses in cm, Hech. The equivalent thickness of the base/subbase courses is calculated as the sum of the equivalent thicknesses of these layers, as given by Equation (2).
H e c h = i = 1 n h i a i ,
where n is the number of layers, hi is the actual thickness of the layer “i”, in cm, and ai is the equivalence coefficient for the layer “i”. Knowing that the equivalence coefficient for ballast subbase is 0.75 (NP081/2002), it turns out that Hech = 25 × 0.75 = 18.75 cm.
For the type of soil P3, climate type III, and hydrologic regime 2b, the dynamic elastic modulus is K = 58 MN/m3.

2.1.4. Determining the Thickness of the Concrete Slab

The design criterion is expressed as follows (Equation (3)):
σ σ t , a ,
where σ is the tensile stress from bending in the concrete slab, determined following the design hypothesis, and   σ a , t is the allowable tensile stress from bending.
The allowable tensile stress from bending ( σ a , t ) is determined using Equation (4).
σ a , t = R i n c k α ( 0.70 γ l o g N c ) ,
where R i n c k   is the specific bending strength of the concrete at 28 days, α is the coefficient of concrete strength increase from 28–90 days, equal to 1.1, Nc is the traffic for the design period, and γ is a coefficient equal to 0.05.
The design hypotheses are as follows:
Σ = σt + 0.8 × σt∆tσ σt,a for technical class I and II roads;
σ = σt + 0.8 × 0.65 × σt∆tσ σt,a for technical class III and IV roads;
σ = σtσt,a, for technical class V roads.
Because the analyzed road sector has a technical class III, we chose the second hypothesis. Depending on the modulus of subgrade reaction K = 58 MN/m3 and on the allowable flexural strength σt,a = 3.48 MPa, the slab thickness results as Hslab = 23 cm, following the design diagram presented in Figure 1b.

2.2. The Mechanistic–Empirical Method MEPDG

The MEPDG method for JPCP design is illustrated by the flowchart presented in Figure 2 [24]. According to this flowchart, in the first stage, a JPCP structure is proposed that takes into consideration the specific site conditions of traffic, climatic conditions, and soil type. Then, the failure criteria are set on the basis of the desired performance that will be achieved at the end of the design life (for example, an acceptable level of faulting, cracking, and IRI for JPCP). Reliability levels are also selected for each of these performance indicators. Then, these input data are processed by the program using the finite element method for each axle type and the load over the design life. The key distresses, faulting, cracking, and roughness, are predicted month by month during the design period, using mechanistic–empirical performance models existing in the MEPDG methodology [25,26,27]. The roughness is then estimated on the basis of the value of the initial IRI, the distresses that occur over time, and the site conditions. The estimated performance of this structure is evaluated at the established reliability level. If the designed JPCP structure does not meet the set criteria, then it must be modified accordingly, and the design procedure applied to this modified structure is repeated.

3. Data Preparation Models with MEPDG Method

3.1. Climate Data for JPCP Model Development

The Romanian National Road DN17 (E 576) placed between Suceava town and Vatra Dornei city, i.e., the road sector from km 217 to 218 (Figure 3), was selected to predict the jointed plain concrete pavement models and analyzing them from the performance point of view.
From the geological point of view, in this area, cohesive soils (such as silty and sandy clays) and the local slopes consist of the base layer, as considered from other sedimentary and metamorphic rocks. The climatic conditions in the area include severe winters (−250 °C) and hot summers (+30 °C) and a high level of seasonal precipitation between 1200 mm/m2 and 1400 mm/m2, with depth of frost between 100 and 110 cm. The data were collected from the Meteorology National Agency of Romania (ANM), Călimănești climate station. Knowing that the demonstrative road sector is located at 45.38° latitude, −89.28° longitude, 485.5 m (1593 ft) elevation, and 3 m (10 ft) depth of water table, the climate data type NARR– North American Regional Reanalysis from MEPDG software was correlated with climate data from the field.

3.2. Physical and Mechanical Characteristics of JPCP Models

According to the Romanian standard recommendation, the minimum thickness for the JPCP is 18 cm and the maximum value is 28 cm, whereas 23 cm is the thickness resulting for the case we studied with the Romanian standard NP 081/2002. For MEPDG analysis, three types of jointed plain concrete pavement models were analyzed from a thickness point of view with three asymmetric structures: 18 cm (denoted A); 23 cm (denoted B); 28 cm (denoted C) (Figure 3). In the other layers (layers 2 and 3), the geometric and structural characteristics were symmetric. Thus, the second layer was considered with the same thickness (30 mm) for all three cases and contained river-run gravel or cement-stabilized well-graded gravel. All studied variants of plain concrete pavements were analyzed assuming they have no dowels. The third layer was represented by foundation ground with infinite thickness. The length variations of rigid pavement slabs were presented in three cases: 4 m, 6 m, and 8 m. Figure 4 presents the basic matrix of JPCP.
Applying the MEPDG method, different variables such as the thickness of the concrete slab, type of the base layer, coefficient of thermal expansion, compressive strength, and the distance between the transverse joints were applied to the simulation of JPCP lifetime behavior. Thus, the AADTT type traffic value was 1776, and the simulation was conducted by varying the mechanical characteristics of jointed plain concrete pavement: two different values of the coefficient of thermal expansion (CTE), 10 × 10−6/°C and 13 × 10−6/°C; two different values of compressive strength Rc (28 days), 20 MPa and 55 MPa; unit weight, 2403 kg/m3; 0.15 Poisson’s ratio; cement type I; water/cement ratio of 0.45. Regarding the base foundation, the thickness was established at 30 cm, 0.27 Poisson’s ratio, and two types of material were taken into account: river-run gravel and stabilized cement.
Combining these parameters into the MEPDG program, a total of 72 results were obtained, which allowed analysis of the variation of JPCP performance for 5, 10, 15, 20, 25, 30, and 35 years in correlation with the influence of each of the selected input parameters. The models obtained using the MEPDG method were evaluated in terms of their behavior in cases of cracking, faulting, and roughness (IRI). The codification of each type of jointed plain concrete pavement resulting from the combination of parameters is presented in Table 3.
For the presented study, the Mechanistic–Empirical Pavement Design Guide (MEPDG) developed under the National Cooperative Highway Research Program (NCHRP) Project 1–37A, version 1.003/2007 AASHTO’s DARWin-ME, was used.

4. Results and Discussion

The analysis performed using the MEPDG method highlighted the response of all 72 structural variants established for the design life for the traffic loads and the predetermined climatic conditions, being useful in establishing the decisions regarding the rehabilitation of any road structure similar to that in the presented study. According to [1], the most important performance criteria for rigid pavements are cracking, faulting, and roughness of concrete slab surfaces. Thus, the obtained results are presented concerning the three performance criteria.

4.1. Estimation of Cracking

The most important degradation recorded by plain concrete pavement structures is their cracking. Thus, transverse cracks of the concrete slabs can occur at the surface of the concrete slab and propagate down (top-down cracking) or at the base of the concrete slab (bottom-up cracking) depending on the load and environmental conditions, properties of the materials, design features, and the conditions during construction. Bottom-up transverse cracking is caused by tensile bending stress at the bottom of the PCC – Pavement Concrete Compressive Strength slab, midway between two transverse joints [28,29]. Repeated heavy axle loading and a high positive temperature gradient (the top of the slab is warmer than the bottom of the slab) cause fatigue damage to occur along the bottom of the slab. This fatigue damage results in a transverse crack of the pavement that can propagate to the surface. Bottom-up transverse cracking is combined with top-down transverse cracking and calculated as a percentage of slabs cracked [30,31]. Transverse cracks of JPCP may have a small impact on overall structure performance as long as they have not evolved too much. Structural performance is influenced by transverse cracks when dynamic loads from the rigid pavements with a high roughness reduce the pavement life [18]. Transverse cracks can be caused by the uneven distribution of loads to the joints of the irregularity of the surface of the subbase, the insufficient thickness of the slab, and the shortcomings of the quality of the materials used. The influence of each parameter on the cracking of the concrete slab is presented below. Figure 5 presents the variation of cracking during the design life. With the increasing distance of the joints (length of the slab), an increase in cracking percentage of the slab of about 53.5% can be observed (Figure 5). The increase in compressive strength of concrete from 20 MPa to 55 MPa led to a decrease in the cracking percentage of the concrete slab to 1.1% (length of 4 m). Increasing the distance between the joints (6 m, 8 m) led to a decrease in cracking resistance.
Thus, it can be considered that the structure AG1b1, with a granular base layer, showed the best behavior between the concrete strength and the distance between the joints. From the point of view of the JPCP with a stabilized base layer, a similar behavior to that of a granular base layer can be noted, with the rate of occurrence of cracks reduced. Thus, in the case of the granular base layer with a concrete slab with a length of 8 m and a compressive strength of 20 MPa (structure AG1a3), it predicts the occurrence of 40% of cracks in 2.5 years. In the case of a stabilized ballast structure, the cracking percentage of 40% occurs after approximately 15 years for the AS1a3 structure (Figure 5). From the point of view of structural resistance to cracks, two optimal pavement types can be considered: AS1b1 and AS1b2. Figure 6 presents the sensitivity analysis of cracked concrete slabs with the smallest variation of percentage cracking in time.
It can be seen that the AS1b1 structure showed the lowest values of the cracking percentage, which is characterized by a stabilized base layer, a concrete slab with a length of 4 m, CTE = 10, and a compressive strength of 55 MPa concrete. From the efficiency point of view, all the variants determined using the MEPDG method in Figure 6 can be taken into consideration in the design calculation, as the values of the cracking percentage were recorded below 5% during the 35 years. Cracks occurred due to repeated loading, leading to compressive stress. Once the cracks appeared, they propagated from the bottom up. An important factor that led to the increase in cracking rate on the Romanian traffic section was the variation in extreme temperatures during the year, which led to the expansion phenomenon and contraction of the water accumulated in the concrete pores or the interfaces between the JPCP layers. The MEPDG crack analysis resulted in a matrix of the rigid pavement with the lowest percentage of cracking, up to a maximum percentage of 50% over 35 years of the pavement life, as can be seen in Table 4.

4.2. Estimation of Faulting

The level difference between the edges of two adjacent slabs, at a transverse or longitudinal joint, represents another criterion for evaluating the performance of a JPCP, known as faulting. This distress can be caused by repeated heavy axle loads, poor joint load transfer efficiency, free moisture below the concrete slab, erosion of the base, subbase, subgrade, or shoulder material, and upward curling of the slab [32]. Transverse joint faulting is a measurement of the differential deflection across a joint, and the admissible value is 0.19685 inches (5 mm). The modeling results revealed that the lowest average faulting values were obtained for the 28 cm thick slab, reaching the admissible value in about 30 years. In the case of the 18 cm thick slab, faulting occurred after approximately 15 years, and, in the case of 23 cm thick slab, faulting occurred after 25 years (see Figure 7).
The stabilized base is a cemented, rigid material that distributes the load over a large area, and stresses in the subgrade are reduced, which provides excellent support for the concrete slab of a rigid pavement. The stabilized base material is stronger, uniform, and more water-resistant than a granular base. The use of cement-stabilized bases reduces the occurrence of faulting, as can be seen in Figure 8. Thus, the different behavior of the base layer is manifested by a decrease of approximately 85% in the case of the stabilized ballast layer compared to the granular layer after 5 years. Increasing the strength of concrete from 20 MPa to 50 MPa contributes to increasing the rigidity of the road structure to about 50% after 5–10 years.
Table 5 presents the influences of each parameter taken into account related to the admissible value of faulting (0.196585 in, 0.5 cm). Thus, it can be noticed that the values lower than 100% fall within the admissible values, while the highest are variants of road structures that no longer meet this criterion at any given time. Therefore, in terms of the thickness of the concrete slabs (coded A, B, C), the tiles with the largest thickness (28 cm) recorded the lowest values of the faulting. The stabilized ballast provided a better pavement structure behavior, and the coefficient of expansion CTE = 13 × 10−6/°C favored the occurrence of faulting with values about 66% higher than CTE = 10 × 10−6/°C. Doubling the distance between the joints and the length of the concrete slab increased the compaction by approximately 50% in the first 5 years. Starting with the 15th year of pavement life, the structures with a small thickness of the slab and highest length with river-run gravel subbase and a high coefficient expansion would require maintenance work. The results of MEPDG analysis highlighted that from 72 variants of JPCPs, 64 hypothetical cases met the condition whereby faulting was less than the nominal value (0.19685 in, 0.5 cm).

4.3. Evaluation of International Roughness Index (IRI)

Pavement roughness is used as a composite index of pavement quality and is directly related to overall ride quality, the factor of most importance to highway users. Because of these reasons, empirical roughness prediction models have been incorporated in the MEPDG, being characterized in terms of the IRI, measured in inches of roughness per miles in American standard (measured in meters/kilometers in Romanian Standard NP 081/2002). IRI depends on the initial input parameters used for pavement design and the climatic conditions that may affect roughness of the road through mechanisms such as shrinkage or swelling of subgrade soils and frost. IRI was established by Sayers et al. in 1986 as an internationally accepted parameter, and it is determined with specialized vehicles that measured the displacement of the vehicle chassis placed on the rear axle [32,33]. The IRI threshold recommended by the FHWA (Federal Highway Administration of USA) in 1998 is 95–170 in/mi for acceptable ride quality and less than 95 in/mi for good road quality, being considered the most international index for pavement roughness measurement [3]. In 2008, DDOT (District Department of Transportation, USA) changed the IRI threshold in PCI (pavement condition index) for bituminous and concrete pavement in cases of urban road, as summarized by Arhin et al. [34] and Perez et al. [35]. Table 6 presents the IRI values relative to lifetime prediction. Analyzing the influence of the various parameters on the cumulative IRI values for 35 years, it is noted that, for an 18 cm thick concrete slab, a deviation from smoothness is recorded after 20 years, and a 38% increase in the thickness of the concrete slab leads to a 25% increase in the service life, which is within acceptable limits (see Table 6). The use of a stabilized cement base layer leads to a 75% increase in the operating life below 170 inches per mile compared to the duration of the granular subbase. The same aspect is also noticeable when a lower thermal expansion coefficient is used, being reduced by approximately 23% (e.g., CTE 10 (10−6/°C)). The use of a low-strength concrete (20 MPa) leads to the appearance of surface roughness exceeding acceptable limits after 23 years of service life, and doubling the distance between the joints would lead to the appearance of roughness over acceptable limits in only 20 years (Table 6). From the MEPDG simulation, it was observed that none of the road structures showed values below 95 in/mile, but there was a set of variants with an IRI index below 170 in/mi, as can be seen in Table 7.

5. Conclusions

The paper presented the lifetime prediction of jointed plain concrete pavement for a real traffic road segment analyzed using two methods: one according to Romanian standards and the other according to the more comprehensive MEPDG method. The estimation of the dimensions (thickness) of jointed plain concrete pavement using the Romanian Standard NP 081/2002 was very close to the MEPDG method (23 cm) but poorer and without time estimation of structural and functional performance. The MEPDG method analyzed the influence of each parameter, offering a realistic analysis as a function of the cumulative effect of these factors, such that the solutions obtained by the sensitivity method returned only the variants of the road structure that simultaneously fulfilled the three requirements of structural and functional performance—cracking, faulting, and IRI. Table 8 presents the seven solutions out of the 72 analyzed which can be chosen for the design of the pavement structures in traffic conditions and an environment specific to a temperate mountainous region, with temperature variations and annual humidity specific to the northern Romania area.
In conclusion, the analyses performed in this significant study highlight the critical design phases within the MEPDG methodology, as well as possibilities for applying this method in other countries where national standards are based on classical methods. From a practical point of view, the presented study highlights how the MEPDG method can objectively lead to the elimination of possible variants of JPCP that do not simultaneously meet the requirements of structural and functional performance. From the results, the constructor or the beneficiary can choose the most convenient variant from the financial point of view.

Author Contributions

Conceptualization, C.P. and E.-L.P.; methodology, C.P.; software, E.-L.P.; validation, C.P., E.-L.P., M.D.S., M.B. and D.T.; formal analysis, M.D.S., M.B. and D.T.; investigation, E.-L.P.; resources, M.D.S., M.B. and D.T.; data curation, C.P. and E.-L.P.; writing—original draft preparation, C.P.; writing—review and editing, E.-L.P.; visualization, M.B.; supervision, M.D.S. and M.B.; project administration, E.-L.P.; funding acquisition, M.D.S. All authors have read and agreed to the published version of the manuscript.

Funding

This study was conducted within the Doctoral Program BRAIN, POSDRU/6/1.5/S/9 [No.6681].

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Acknowledgments

The authors are thankful to Radu Andrei and Boboc Vasile from Cheorghe Asachi Technical University of Iasi for administrative and technical support.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Design charts for determining (a) the bearing capacity at the level of the base course K, and (b) the thickness of the concrete slab H [2].
Figure 1. Design charts for determining (a) the bearing capacity at the level of the base course K, and (b) the thickness of the concrete slab H [2].
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Figure 2. Flowchart for the design of jointed plain concrete pavement (JPCP) using the Mechanistic–Empirical Pavement Design (MEPDG) method [24].
Figure 2. Flowchart for the design of jointed plain concrete pavement (JPCP) using the Mechanistic–Empirical Pavement Design (MEPDG) method [24].
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Figure 3. Location of the road sector of National Road DN17: (a) position on Romania map; (b) location of road sector for analysis [7].
Figure 3. Location of the road sector of National Road DN17: (a) position on Romania map; (b) location of road sector for analysis [7].
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Figure 4. Types of pavement analyzed.
Figure 4. Types of pavement analyzed.
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Figure 5. Lifetime prediction of cracking for different JPCPs.
Figure 5. Lifetime prediction of cracking for different JPCPs.
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Figure 6. Sensitivity analysis of cracking propagation in the case of JPCP with the smallest variation of cracking percentage in time.
Figure 6. Sensitivity analysis of cracking propagation in the case of JPCP with the smallest variation of cracking percentage in time.
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Figure 7. Variation in time of faulting depending on the thickness of concrete slabs.
Figure 7. Variation in time of faulting depending on the thickness of concrete slabs.
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Figure 8. Lifetime prediction of faulting for different types of JPCPs.
Figure 8. Lifetime prediction of faulting for different types of JPCPs.
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Table 1. The variables used for design traffic calculation. AADT, average annual daily traffic.
Table 1. The variables used for design traffic calculation. AADT, average annual daily traffic.
kVehicle TypeAADT
(Millions of Standard Axles) MZA
Coefficient of Evolution
(Growth Factor) pk
Equivalence Coefficient (ESAL-Equivalent Single Axle Load Factor) fek M Z A p k f e k
12 axle trucks3582.680.30288
23 and 4 axle trucks2241.833.801558
3Articulated vehicle2961.742.901494
4Buses812.301.50279
5Farm tractors112.040.204
6Road trains461.481.60109
Table 2. Coefficient of subgrade reaction values, K0 [23].
Table 2. Coefficient of subgrade reaction values, K0 [23].
Climate TypeHydrologic RegimeSoil Type
P1P2P3P4P5
I15653465050
2a5653445048
2b5653444646
II15653445050
2a5653445046
2b5650444646
III15653423950
2a5650423744
2b5650423744
Table 3. The codification of studied pavement structures.
Table 3. The codification of studied pavement structures.
Concrete Slab Thickness (cm)Subbase Type Coefficient of Thermal Expansion (10−6/°C)28 Day PCC Pavement Concrete Compressive Strength (MPa)Joint Design
4 m
Code 1
6 m
Code 2
8 m
Code 3
18
Code A
River-run gravel
Code G
10
Code 1
20
Code a
AG1a1AG1a2AG1a3
55
Code b
AG1b1AG1b2AG1b3
13
Code 2
20
Code a
AG2a1AG2a2AG2a3
55
Code b
AG2b1AG2b2AG2b3
Cement Stabilized
Code S
10
Code 1
20
Code a
AS1a1AS1a2AS1a3
55
Code b
AS1b1AS1b2AS1b3
13
Code 2
20
Code a
AS2a1AS2a2AS2a3
55
Code b
AS2b1AS2b2AS2b3
23
Code B
River-run gravel
Code G
10
Code 1
20
Code a
BG1a1BG1a2BG1a3
55
Code b
BG1b1BG1b2BG1b3
13
Code 2
20
Code a
BG2a1BG2a2BG2a3
55
Code b
BG2b1BG2b2BG2b3
Cement Stabilized
Code S
10
Code 1
20
Code a
BS1a1BS1a2BS1a3
55
Code b
BS1b1BS1b2BS1b3
13
Code 2
20
Code a
BS2a1BS2a2BS2a3
55
Code b
BS2b1BS2b2BS2b3
28
Code C
River-run gravel
Code G
10
Code 1
20
Code a
CG1a1CG1a2CG1a3
55
Code b
CG1b1CG1b2CG1b3
13
Code 2
20
Code a
CG2a1CG2a2CG2a3
55
Code b
CG2b1CG2b2CG2b3
Cement Stabilized
Code S
10
Code 1
20
Code a
CS1a1CS1a2CS1a3
55
Code b
CS1b1CS1b2CS1b3
13
Code 2
20
Code a
CS1a1CS2a2CS2a3
55
Code b
CS2b1CS2b2CS2a3
Table 4. Sensitivity matrix of pavement relative to the percentage of cracking.
Table 4. Sensitivity matrix of pavement relative to the percentage of cracking.
0%<1%1–10%10–50%
BG1b1AS1b1AG1b1AG1b2
BG1b2BG1a1AG2b1AS1a1
BG2b1BG2b2AS1b2AS1b3
BS1b1BS1a1AS2b1BG1a2
BS1b2BS2b2BG2a1BG1b3
BS2b1CG1a2BS1b3BS1a2
CG1a1CG1b3BS2a1CG2b3
CG1b1CG2a1CG2a2CS1a3
CG1b2CS1a2CS2a2
CG2b1CS2a1
CG2b2
CS1b1
CS1b2
CS1b3
CS2b1
CS2b2
Table 5. Percentage values related to admissible values of faulting.
Table 5. Percentage values related to admissible values of faulting.
Input DataFaulting Related to Admissible Value (%)
5101520253035
Slab thickness
(cm)
A55.88086.360106.680121.920137.160152.400167.640
B30.48055.88071.12086.360101.600111.760121.920
C25.40045.72060.96071.12086.36096.520106.680
Subbase
(cm)
G55.88086.360111.760127.000142.240157.480172.720
S20.32035.56050.80060.96071.12081.28091.440
CTE
(10−6/°C)
1015.24030.48040.64055.88066.04071.12081.280
1360.96091.440116.840137.160152.400167.640177.800
Rc (28 days) (MPa) 2030.48050.80071.12086.36096.520106.680121.920
5545.72071.12091.440106.680116.840132.080142.240
Distance between joints
(m)
415.24030.48045.72055.88066.04076.20086.360
630.48050.80066.04081.28096.520106.680116.840
866.040101.600127.000147.320162.560172.720187.960
Table 6. Lifetime prediction of international roughness index (IRI) values.
Table 6. Lifetime prediction of international roughness index (IRI) values.
Input DataIRI m/km
5101520253035
Pavement thickness (cm) 181.662.132.502.843.293.553.78
231.401.752.022.372.662.893.11
281.351.571.812.042.302.512.70
Sub base
(cm)
River-run gravel1.582.002.322.653.033.273.50
Cement stabilized1.361.631.902.192.472.692.90
CTE
(10−6/°C)
CTE 101.271.561.832.102.382.602.80
CTE 131.692.112.432.773.173.413.64
Rc
(28 days), MPa
Rc 20 MPa1.551.952.262.622.973.213.43
Rc 55 MPa1.391.691.962.212.532.752.97
Distance between joints
(m)
4 m1.281.571.862.152.442.672.89
6 m1.351.691.942.282.682.923.13
8 m1.782.182.462.753.043.273.48
Table 7. Sensitivity matrix of pavement related to IRI.
Table 7. Sensitivity matrix of pavement related to IRI.
95–170 in/miles (1.4994–2.683 m/km)
AS1b1AS1b2AS1b3
BG1b1BG1b2BS1b3
BS1a1BS1a2CG1b3
BS1b1BS1b2CS1b3
BS2b1CG1a2
CG1a1CG1b2
CG1b1CG2b2
CS1a1CS1a2
CS1b1CS1b2
CS2b1CS2b2
CG2b2
Table 8. The optimal variants of road structure that comply simultaneously with the three criteria of structural and functional performance.
Table 8. The optimal variants of road structure that comply simultaneously with the three criteria of structural and functional performance.
VariantsPercentage of Slabs Cracked
(<1%)
Faulting
(<0.03937 in) (1 mm)
IRI
(95–170 in/miles)
(1.4994–2.683 m/km))
1AS1b1AS1b1AS1b1
2BS1b1BS1b1BS1b1
3CG1a1CG1a1CG1a1
4CG1b1CG1b1CG1b1
5CS1b1CS1b1CS1b1
6CS1b2CS1b2CS1b2
7CS1b3CS1b3CS1b3
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Pleșcan, C.; Pleșcan, E.-L.; Stanciu, M.D.; Botiș, M.; Taus, D. Sensitivity Analysis of Rigid Pavement Design Based on Semi-Empirical Methods: Romanian Case Study. Symmetry 2021, 13, 168. https://doi.org/10.3390/sym13020168

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Pleșcan C, Pleșcan E-L, Stanciu MD, Botiș M, Taus D. Sensitivity Analysis of Rigid Pavement Design Based on Semi-Empirical Methods: Romanian Case Study. Symmetry. 2021; 13(2):168. https://doi.org/10.3390/sym13020168

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Pleșcan, Costel, Elena-Loredana Pleșcan, Mariana D. Stanciu, Marius Botiș, and Daniel Taus. 2021. "Sensitivity Analysis of Rigid Pavement Design Based on Semi-Empirical Methods: Romanian Case Study" Symmetry 13, no. 2: 168. https://doi.org/10.3390/sym13020168

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