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Green logistics location-routing problem with eco-packages

机译:绿色物流定位 - 生态包装的路由问题

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Optimization of the green logistics location-routing problem with eco-packages involves solving a two-echelon location-routing problem and the pickup and delivery problem with time windows. The first echelon consists of large eco-package transport, which is modeled by a time-discretized transport-concentrated network flow programming in the resource sharing state-space-time (SST) network. The second echelon focuses on small eco-package pickups and deliveries, established by the cost-minimized synchronization-oriented location routing model that minimizes the total generalized cost, which includes internal transportation cost, value of eco-packages, short-term benefits and environmental externalities. In addition, the Gaussian mixture clustering algorithm is utilized to assign customers to their respective service providers in the pickup and delivery process, and a Clarke-Wright saving method-based non-dominated sorting genetic algorithm II is designed to optimize pickup and delivery routes, and improve their cost-effectiveness and degree of synchronization. Different strategy testing results are used in the service phase as input data to calculate the cost of the transport phase, which is solved through a Lagrangian relaxation approach. The 3D SST network representation innovatively captures the eco-package route sequence and state transition constraints over the shortest path in the pickup and delivery at any given moment of the transport phase. A large-scale logistics network in Chengdu, China, is used to demonstrate the proposed model and algorithm, and undertake sensitivity analysis considering the life cycle of green eco-packages.
机译:使用生态包的绿色物流位置路由问题的优化涉及解决两个梯队位置路由问题以及带时间窗口的拾取和交货问题。第一个梯队由大型生态包传输组成,其通过资源共享状态 - 时空(SST)网络中的时间离散传输集中的网络流程进行建模。第二个梯队专注于由成本最小化的同步定位位置路由模型建立的小生态包装拾取和交付,这最大限度地减少了全面的总体成本,包括内部运输成本,生态包装价值,短期福利和环境外部性。此外,Gaussian混合聚类算法用于将客户分配给他们各自的服务提供商在拾取和交付过程中,并且旨在优化拾取和送货路由的基于克拉基赖特节省的非主导分类遗传算法II,并提高他们的成本效益和同步程度。在服务阶段使用不同的策略测试结果作为输入数据,以计算运输阶段的成本,通过拉格朗日放松方法解决。 3D SST网络表示创新地捕获了在运输阶段的任何给定时刻的拾取器中的最短路径上的生态包路由序列和状态转换约束。中国成都的大规模物流网络用于展示所提出的模型和算法,并考虑绿色生态包装的生命周期进行敏感性分析。

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