基于时间窗和位置的大数据分布式集群路由

Mehmet Fatih Yuce, A. Gunes, M. Zontul, Tuğba Altıntaş
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引用次数: 0

摘要

本文将提出一种新的车辆路径算法。该方法将基于“基于时间窗口的聚类”和“基于位置的聚类”,以可逆的连续顺序应用。该方法利用机器学习技术对解空间进行划分和建模,从而提高了时间窗和地理空间聚类计算的性能。另一方面,路由过程将构建在已经存在的开源工具之上,赋予它可用性、适用性、可管理性和集成的视角。该流程将“集群+集群+路由”单元与流程后增强相结合。以前的基于位置的聚类工作被证明是成功的,尽管有一些缺点。另一方面,路由算法大多将时间窗口计算作为二等公民来实现。在该方法中,时间窗是建模过程的主要组成部分。本文也将不同于文献中使用的其他一些组合方法。还将提供所用方法和工具的历史和一般描述。实验结果表明,该算法可以产生很好的结果,其中一些结果是迄今为止文献记录的最佳值。该方法在某大数据平台上得到了应用。还描述了在此类系统上使用最先进工具的水平扩展和分布式处理能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time Window and Location Based Clustered Routing with Big and Distributed Data
In this paper, a novel vehicle routing algorithm will be presented. Proposed method will be based on “time windows-based clustering” and “location-based clustering”, applied in reversable consecutive order. The method partitions and models the solution space with machine learning technologies, resulting in a better performance for time window and geospatial clustering calculations. Routing process, on the other hand, will be built upon already present open source tools, giving it usability, applicability, manageability, and integration perspectives. The process combines “cluster+cluster+route” units with post process enhancements. Previous works on location-based clustering are proved to be successful, albeit with some disadvantages. On the other hand, routing algorithms have mostly implemented time window calculations as second-class citizens. In this method, time window is a major ingredient of the modelling process. This paper will also differs from some other combinatoric methods used in literature. A history and general description of used methods and tools will also be provided. It is shown that the algorithm can generate good results, some of which are the best values in the recorded literature so far. The method is applied on a big data platform. Horizontal scaling and distributed processing capabilities with the state-of-the-art tooling on such systems are also described.
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