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COMBINING MONTE CARLO SIMULATION WITH HEURISTICS TO SOLVE A RICH AND REAL-LIFE MULTI-DEPOT VEHICLE ROUTING PROBLEM

机译:将Monte Carlo模拟与启发式仿真结合起来解决了丰富而现实的多仓库车辆路由问题

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This paper presents an optimization approach which integrates Monte Carlo simulation (MCS) within a heuristic algorithm in order to deal with a rich and real-life vehicle routing problem. A set of customers' orders must be delivered from different depots and using a heterogeneous fleet of vehicles. Also, since the capacity of the firm's depots is limited, some vehicles might need to be replenished using external tanks. The MCS component, which is based on the use of a skewed probability distribution, allows to transform a deterministic heuristic into a probabilistic procedure. The geometric distribution is used to guide the local search process during the generation of high-quality solutions. The efficiency of our approach is tested against a real-world instance. The results show that our algorithm is capable of providing noticeable savings in short computing times.
机译:本文介绍了一种优化方法,将蒙特卡罗模拟(MCS)集成在启发式算法中,以处理丰富和现实的车辆路线问题。一套客户的订单必须从不同的仓库提供,并使用异构的车辆。此外,由于公司仓库的容量有限,因此可能需要使用外部罐补充一些车辆。基于使用偏斜概率分布的MCS组件允许将确定性启发式转换为概率过程。几何分布用于指导在生成高质量解决方案期间的本地搜索过程。我们的方法的效率是针对真实世界的实例测试的。结果表明,我们的算法能够在短期计算时间内提供明显的节省。

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