考虑不确定性的多目标数学模型技术检测中心设施选址优化

Raheleh Arabahmadi, Mehrdad Mohammadi, Mahrou Samizadeh, Masoud Rabbani, Kazhal Gharibi
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引用次数: 3

摘要

在道路上遇到大量车辆可能会带来多种风险,包括更高的事故概率。为了解决这些问题,彻底检查汽车可以大大减少这些危险。技术检测中心在这一过程中起着至关重要的作用,应该易于进入。为了以最低的运输成本为技术检验中心提供最大的客户服务覆盖率,本文提出了设施选址优化的方法。具体来说,我们将技术检验中心的选址作为一个最大覆盖问题来研究,同时最小化技术检验中心的建设成本和客户的运输成本。为了解决这个问题,我们提出了一种考虑数值数据不确定性的鲁棒规划。我们的研究为使用混合数学模型解决问题提供了一种新颖的见解,有助于设施选址优化。针对这一优化问题,提出了一个二元变量的双目标线性优化模型。采用增广Epsilon约束(AEC)方法通过CPLEX求解器和非支配排序遗传算法II (NSGA-II)方法求解大规模问题。通过案例研究,验证了数值分析方法和几个不同规模的实际问题。最后的结果表明,该方法在满足最优性和可行性鲁棒性准则方面是有效的。根据本文的主要目标确定最佳TIC位置证明了使用上述创新方法的优势。
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Facility Location Optimization For Technical Inspection Centers Using Multi-Objective Mathematical Modeling Considering Uncertainty
Encountering numerous vehicles on the roads can pose several risks, including a higher probability of accidents. To address these issues, a thorough examination of cars can significantly reduce these dangers. Technical inspection centers play a crucial role in this process and should be easily accessible. To provide the most customer service coverage at the lowest cost of transportation for technical inspection centers, facility location optimization is proposed in this paper. Specifically, we investigate the location of technical inspection centers (TICs) as a maximum coverage problem while minimizing the cost of TIC locations' construction and customers' transportation. To deal with this problem, we propose a robust programming considering our numeric data's uncertainty. Our research contributes to facility location optimization by providing a novel insight into solving the problem using a hybrid mathematical model. It presents a two-objective linear optimization model with binary variables to address this optimization problem. We used the Augmented Epsilon Constraint (AEC) method via the CPLEX solver and the Non-dominated Sorting Genetic Algorithm II (NSGA-II) method for large-scale problems to solve the model. A case study was conducted to test the numerical analysis methodology and several practical problems of varying scales. The final results demonstrate the effectiveness of the proposed approach in meeting the optimality and feasibility robustness criteria. Identifying optimal TIC locations regarding the paper's main objective proves the advantage of using the mentioned innovative methodology.
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