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Genetic Algorithms for Municipal Solid Waste Collection and Routing Optimization

机译:市政固体废弃物收集和路线优化的遗传算法

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In the present paper, the Genetic Algorithm (GA) is used for the identification of optimal routes in the case of Municipal Solid Waste (MSW) collection. The identification of a route for MSW collection trucks is critical since it has been estimated that, of the total amount of money spent for the collection, transportation, and disposal of solid waste, approximately 60-80% is spent on the collection phase. Therefore, a small percentage improvement in the collection operation can result to a significant saving in the overall cost. The proposed MSW management system is based on a geo-referenced spatial database supported by a geographic information system (GIS). The GIS takes into account all the required parameters for solid waste collection. These parameters include static and dynamic data, such as the positions of waste bins, the road network and its related traffic, as well as the population density in the area under study. In addition, waste collection schedules, truck capacities and their characteristics are also taken into consideration. Spatio-temporal statistical analysis is used to estimate inter-relations between dynamic factors, like network traffic changes in residential and commercial areas. The user, in the proposed system, is able to define or modify all of the required dynamic factors for the creation of alternative initial scenarios. The objective of the system is to identify the most cost-effective scenario for waste collection, to estimate its running cost and to simulate its application.
机译:在本文中,遗传算法(GA)用于确定城市生活垃圾(MSW)收集情况下的最佳路线。确定MSW收集卡车的路线至关重要,因为据估计,在收集,运输和处置固体废物的总费用中,大约60-80%用于收集阶段。因此,收集操作中的小百分比改进可以导致整体成本的显着节省。提出的MSW管理系统基于地理信息系统(GIS)支持的地理参考空间数据库。 GIS考虑了收集固体废物所需的所有参数。这些参数包括静态和动态数据,例如废物箱的位置,道路网络及其相关交通以及研究区域中的人口密度。此外,还考虑了废物收集时间表,卡车容量及其特性。时空统计分析用于估计动态因素之间的相互关系,例如住宅和商业区域的网络流量变化。在所提出的系统中,用户能够定义或修改所有必需的动态因素,以创建替代的初始方案。该系统的目的是确定最经济有效的废物收集方案,估算其运行成本并模拟其应用。

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