Pengfei Sun, Jingbo He, Jianxiong Wan, Yuxin Guan, Dongjiang Liu, Xiaoming Su, Leixiao Li
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引用次数: 0
摘要
物流运输业碳排放量的快速增长凸显了对低碳物流解决方案的迫切需求。人们越来越多地考虑用电动物流车(ELV)替代传统燃油车,以减少城市物流中的排放。然而,电动物流车通常受到电池容量和负载的限制。此外,有效的充电调度和运输时间管理也是必须解决的关键因素。本文探讨了低能耗调度(LECS)问题,其目的是在考虑多个充电站(CS)可用性的情况下,最大限度地降低具有不同负载和电池容量的异构 ELV 的总能耗。鉴于 LECS 问题的复杂性,本研究提出了一种基于编码器-解码器架构(HAMEDA)的异构注意力模型方法,该方法采用了异构图注意力网络,并引入了一种新型解码程序,以提高编码和解码阶段的解决方案质量和学习效率。HAMEDA通过深度强化学习(DRL)以无监督的方式进行训练,善于从呈现的特定案例中为每辆ELV自主推导出最佳运输路线。综合模拟验证表明,与其他传统的启发式或基于学习的算法相比,HAMEDA 可将总体能源利用率降低不少于 1.64%。此外,HAMEDA 还能在执行速度和解决方案质量之间保持良好的平衡,因此非常适合需要快速决策的大型任务。
Deep reinforcement learning based low energy consumption scheduling approach design for urban electric logistics vehicle networks.
The rapid increase in carbon emissions from the logistics transportation industry has underscored the urgent need for low-carbon logistics solutions. Electric logistics vehicles (ELVs) are increasingly being considered as replacements for traditional fuel-powered vehicles to reduce emissions in urban logistics. However, ELVs are typically limited by their battery capacity and load constraints. Additionally, effective scheduling of charging and the management of transportation duration are critical factors that must be addressed. This paper addresses low energy consumption scheduling (LECS) problem, which aims to minimize the total energy consumption of heterogeneous ELVs with varying load and battery capacities, considering the availability of multiple charging stations (CSs). Given that the complexity of LECS problem, this study proposes a heterogeneous attention model based on encoder-decoder architecture (HAMEDA) approach, which employs a heterogeneous graph attention network and introduces a novel decoding procedure to enhance solution quality and learning efficiency during the encoding and decoding phases. Trained via deep reinforcement learning (DRL) in an unsupervised manner, HAMEDA is adept at autonomously deriving optimal transportation routes for each ELV from specific cases presented. Comprehensive simulations have verified that HAMEDA can diminish overall energy utilization by no less than 1.64% compared with other traditional heuristic or learning-based algorithms. Additionally, HAMEDA excels in maintaining an advantageous equilibrium between execution speed and the quality of solutions, rendering it exceptionally apt for expansive tasks that necessitate swift decision-making processes.
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