4.1. Case of Three Provinces in Iran
Since waste management centers provide one of the most essential urban infrastructures, the proposed waste management center location model’s performance was evaluated in three Iranian provinces: Hamadan, Markazi, and Qom. As mentioned in the introduction section, these three provinces, particularly Markazi at the area’s center, contribute significantly to the country’s production levels. Below (
Figure 3) is a map illustrating the industrial zones and parks found in these three provinces.
Furthermore, in terms of definition, there is not much difference between industrial estates and industrial zones. However, industrial estates usually have larger dimensions and extents compared to industrial zones. Considering the establishment of industrial estates in various locations, there are large industrial estates, ranging from 200 to 3000 hectares, in the country. Still, an industrial zone initially starts with an area of less than 50 hectares and gradually expands through development projects and may eventually become an industrial estate.
4.2. Determining Parameter Values
Eight industrial zones located in these three provinces were considered as candidates centers for the mentioned facilities. The reason for selecting these areas is the availability of space, the potential for further growth, and the absence of pollution. Additionally, eight industrial zones with fewer active factories and workshops, taking into account road access and government budget constraints, were chosen. To calculate the waste shipment arrival rate at the waste collection and sorting centers (
λ), Equation (15) is used, in which, on any given day, each industrial estate or zone contributes:
The entry rates of waste from industrial estates or industrial zones to the waste collection and sorting centers in one day have been calculated in
Table 1.
Because the centers for all eight candidates are considered to be located at the selected industrial zone’s center, the distance from each industrial park or industrial area to the candidate locations for establishing waste collection and sorting centers (
) is calculated as the distance between the centers in kilometers. The corresponding table is an 8 × 74 matrix that specifies the distances between nodes. It is important to note that it is possible to establish a waste collection and sorting center and a WtE center at the same node. Therefore, similarly, the distance between candidate locations for establishing waste collection and sorting centers to candidate locations for establishing WtE centers (
) is calculated in kilometers, according to
Table 2. These distances are calculated in terms of road kilometers and represent traversable distances.
A portion of the waste shipment designated for processing by WtE facilities, as determined from available statistics in the reports of the environmental organization, accounts for 18% (
β) of the total waste shipment entering the waste collection and separation centers. Although it appears that these shipments should contain a larger amount of organic materials capable of being converted into energy, the provided were employed. The number of waste shipments, each with a probability associated with the desirability of their transport to each of the candidate locations for WtE facility deployments, refers to the WtE facilities. This desirability value depends on factors such as distance, road quality, and environmental pollution risk. The effective factors and the mathematical relationship of desirability were obtained through surveys. Initially, the influential factors were examined and surveyed. Then, inquiries were made regarding desirability, considering these factors. The values presented were normalized, and a function for the desirability of travel was fitted, based on the responses of five experts working in the industrial parks of the mentioned provinces. Equation (16) provides the resulting desirability function.
k1: Road quality factor and low risk in terms of pollution, 0.5 ≤ k1 ≤ 1.
k2: Coefficient of desirability of energy production in terms of usability and the possibility of contributing to the energy network, 0.7 ≤ k2 ≤ 1.
The
k1 and
k2 values are calculated based on expert estimations using a Likert scale ranging from 1 to 9. Subsequently, these values are normalized corresponding to the consensus among the experts, according to their upper and lower limits. The results of the calculations are shown in
Table 3 and as can be seen, the convenience of traveling from each center to the same center, that is, the center for the separation and conversion into energy, is the most convenient.
The fixed cost of establishing waste collection and separation centers and WtE facilities is estimated to be 180 units () and 630 units (), respectively, based on conducted investigations. The fixed cost of processing/conversion for each waste collection and separation center is approximately 0.67 units (), and the fixed cost of each processing/conversion at the WtE facility is approximately 1.5 units (). The waiting cost of waste shipments at the waste collection and separation and the WtE center for both facilities is estimated at 22.5 units (w1 and w2). The cost per kilometer traveled by waste shipments between population nodes to candidate locations for waste collection and separation centers and candidate locations for WtE facility deployment is also determined to be 0.47 units (TrC). Finally, a small value of 0.00001 (є) is assigned for solving the model. The estimation of these costs is based on conducted investigations and involve assessments, quotes, and financial planning by the comprehensive waste management center in the Department of the Environment in Iran. Regarding the data values, scaled data was used, and as a result, no specific units were assigned to the costs.
The results obtained after solving the models:
To analyze the proposed models, the problem presented in the case study section was solved using a weighted sum method in MATLAB, using a genetic algorithm. Equal importance was given to all three objective functions.
As observed, solving both models provided relatively similar solutions, according to
Table 4. All 8 proposed locations for establishing waste collection and separation centers, as well as the proposed locations for the WtE facilities, except for C2, C3, and C6, are listed. The value of variable
(the allocation of industrial parks or industrial areas to the waste collection and separation centers) is relatively consistent for both models, according to
Table 5 and
Appendix A.
As this was a case study, the number of selected locations and distances do not allow for enough dispersion under real conditions; thus, both the static and dynamic models yield approximately the same results. In the following sections, in line with the sensitivity analysis, the capabilities and changes will be observed.
4.3. Sensitivity Analysis
In the location of waste management centers within the framework of the proposed models, determining the parameters has a direct effect on the calculation of the main variables (locations of centers and processing/conversion rates). The purpose of presenting this section is to review and compare the results with changes in several parameters in the proposed models.
At first, the cost per time unit of waiting for each consignment to the waste collection and separation centers and the WtE (
w1 and
w2) is considered. It can be seen in
Table 6 that with the increase in the cost of waiting, the values of objective functions 1 and 2 (functions of the cost of setting up centers and the average total cost of waiting) increase in both models. The reason for the increase in the values of objective functions 1 and 2 is the increase in the processing/conversion rate that has been set up in the centers. This issue can be observed in
Appendix B. With the increase in the cost of waiting in the centers, the processing/conversion rate of the centers set up in both models increases so that the waste consignor spends less time on average waiting to receive the service, and in this way, the spread of pollution to the environment is prevented.
In the second phase of the study, a percentage of the waste shipments sent to the waste collection and sorting centers requiring the WtE process (
β) was considered. To investigate the effect of the
β parameter, its value was changed from 0.18 to 0.3, 0.45, and 0.53, respectively. The results obtained for the variables after applying this change are presented in
Table 7. According to
Figure 4, the values of all three objective functions in both models increased with an increase in the amount of waste sent to the WtE centers, as expected due to the response to the demand of the population nodes. In
Appendix C, the number of established waste collection and sorting centers in the static allocation model decreased from 13 centers to 10 centers, while in the DAM, the number of established WtE centers increased by one unit, reaching a total of 14 centers. This change in the
β parameter demonstrates the sensitivity of the results to this parameter and highlights its impact on the establishment and operation of waste management facilities, particularly WtE centers.
As illustrated in
Appendix C, in the solutions obtained for both models, a reduction in the waste transportation cost parameter leads to a decrease in the number of established centers. With an increase in the value of this parameter, the total number of established centers in both models increases, but after several increments in the cost of travel parameter, the number of established centers gradually stabilizes, and the value of the variable for the processing/transformation rate does not change significantly.