一个动态数据驱动的废物收集优化模型

P. Sarvari, Issam Abdeldjalil Ikhelef, S. Faye, D. Khadraoui
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引用次数: 2

摘要

从环境、社会和经济的角度来看,商业废物收集活动至关重要。在任何大或小的人类住区进行的物流活动必须通过克服障碍,同时优化稀有和宝贵的资源的使用,从而提高效率。随着物联网和智慧废物管理理念的出现,静态废物收集资源优化的概念,更具体地说,车辆路线问题正在发生幸运的突变。针对一类特殊的垃圾收集问题,提出了一种动态垃圾收集优化模型及其求解方法。与由同质顾客组成的公共废物收集不同,商业废物收集必须考虑与服务质量或时间有关的其他因素,同时考虑顾客的社会经济特征。此外,本文还对垃圾收集领域进行了全面的文献综述,强调了问题的奇异性和提出的数学模型。本文提出的数据驱动模型旨在通过调用集成在废物容器中的液位传感器产生的实时数据来优化嵌入式求解器中的成本。该模型的输出是动态的和按时间规划的车辆路线链,以便在现场官方指导方针、约束和优先级下有效地收集废物。为了仔细检查所提出模型的可扩展性、适用性和有效性,考虑了卢森堡的一个现实生活网络,该网络包含多个车辆、站点、仓库和处置站点。与一家名为polygo的废物管理公司合作,用真实数据对结果进行基准测试,总结出论文的优点、卓越之处和发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A dynamic data-driven model for optimizing waste collection
Commercial waste collection activities are critical from environmental, societal, as well as economic perspectives. Logistic activities carried out in any large or small human settlement, must be efficient by passing through obstacles while optimizing rare and valuable resource usages. With the advent of the Internet of Things and smart waste management ideas, the concept of static waste collection resource optimization and more specifically vehicle routing problem are being exposed to a fortunate mutation. This study introduces a dynamic waste collection optimization model and its solution for a unique type of waste collection problem. Unlike public waste collection, which is made up of homogeneous customers, commercial waste collection has to consider other factors, relating to the quality or time of service, while considering the socio-economic characteristics of the customers. Moreover, the paper has completed a comprehensive literature review over the waste collection filed to emphasize the singularity of the problem and the proposed mathematical model. The data-driven model proposed in this paper targets the optimization of costs in the embedded solver with invoking real-time data generated by filllevel sensors integrated into waste containers. The outputs of the model are dynamic and time-wise vehicle routing chains for efficient waste collection under the field official guidelines, constraints, and priorities. In order to scrutinize the scalability, applicability and validity of the proposed model, a real-life network in Luxembourg with multiple vehicles, stops, as well as a depot and a disposal site has been considered. The partnership with a waste management company, called Polygone, benchmarking results with real data conclude the merits, excellence, and findings of the paper.
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