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An enhanced artificial bee colony algorithm for the green bike repositioning problem with broken bikes

机译:一种增强的人工蜂殖民地群体碎片重新定位破碎自行车的问题

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The Bike Repositioning Problem (BRP) has raised many researchers? attention in recent years to improve the service quality of Bike Sharing Systems (BSSs). It is mainly about designing the routes and loading instructions for the vehicles to transfer bikes among stations in order to achieve a desirable state. This study tackles a static green BRP that aims to minimize the CO2 emissions of the repositioning vehicle besides achieving the target inventory level at stations as much as possible within the time budget. Two types of bikes are considered, including usable and broken bikes. The Enhanced Artificial Bee Colony (EABC) algorithm is adopted to generate the vehicle route. Two methods, namely heuristic and exact methods, are proposed and incorporated into the EABC algorithm to compute the loading/unloading quantities at each stop. Computational experiments were conducted on the real-world instances having 10?300 stations. The results indicate that the proposed solution methodology that relies on the heuristic loading method can provide optimal solutions for small instances. For large-scale instances, it can produce better feasible solutions than two benchmark methodologies in the literature.
机译:自行车重新定位问题(BRP)提出了许多研究人员?近年来要提高自行车共享系统的服务质量(BSSS)的关注。它主要是关于设计车辆的路线和装载指令,以便在站之间转移自行车以实现理想的状态。本研究解决了一个静态的绿色BRP,旨在最大限度地减少重新定位车辆的二氧化碳排放,除了在时间预算中尽可能多地在车站实现目标库存水平。考虑了两种类型的自行车,包括可用和破碎的自行车。采用增强的人造蜂菌落(EABC)算法来产生车辆路线。提出了两种方法,即启发式和精确方法,并结合到EABC算法中,以计算每个站点的加载/卸载量。在拥有10个300站的现实世界实例上进行了计算实验。结果表明,依赖于启发式加载方法的提议方法可以为小型实例提供最佳解决方案。对于大型实例,它可以产生比文献中的两个基准方法更好的可行解决方案。

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