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A probability guided evolutionary algorithm for multi-objective green express cabinet assignment in urban last-mile logistics

机译:城市最后一英里物流多目标绿色快速柜分配概率导向进化算法

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摘要

In the past decade, urban last-mile logistics (ULML) has attracted increasing attention with the growth of e-commerce. Under this background, express cabinet has been gradually advocated to improve the efficiency of ULML. This paper focuses on the multi-objective green express cabinet assignment problem (MGECAP) in ULML, where the objectives to be minimised are the total cost and the energy consumption. MGECAP is concerned with optimising the purchase and assignment decision of express cabinets, which is different from conventional assignment problems. To solve MGECAP, firstly, the integer programming model and the corresponding surrogate model are established. Secondly, problem-dependent heuristics, including the solution representation, genetic operators, and repair strategy of infeasible solutions, are proposed. Thirdly, a probability guided multi-objective evolutionary algorithm based on decomposition (PG-MOEA/D) is proposed, which can balance the limited computation resource among sub-problems during the iterative process. Meanwhile, a feedback strategy is put forward to alternatively generate new solutions when the probability condition is not satisfied. Finally, numerical results and a real-life case study demonstrate the effectiveness and the practical values of the PG-MOEA/D.
机译:在过去十年中,城市最后一英里物流(ULML)因电子商务的增长而引起了不断的关注。在此背景下,Express Cabinet逐步主张提高ULML的效率。本文侧重于ULML中的多目标绿色快速柜分配问题(MGECAP),其中最小化的目标是总成本和能源消耗。 MGECAP涉及优化快递柜的购买和分配决策,这与传统分配问题不同。为了解决Mgecap,首先,建立整数编程模型和相应的代理模型。其次,提出了依赖于问题的启发式,包括解决方案表示,遗传运营商和不可行解决方案的修复策略。第三,提出了一种基于分解(PG-MOEA / D)的概率引导的多目标进化算法,其可以在迭代过程中平衡子问题之间的有限计算资源。同时,在不满足概率条件时,提出了反馈策略以替代地生成新的解决方案。最后,数值结果和真实案例研究证明了PG-MOEA / D的有效性和实际值。

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