IoT cloud-based cyber-physical system for efficient solid waste management in smart cities: a novel cost function based route optimisation technique for waste collection vehicles using dustbin sensors and real-time road traffic informatics

IF 1.7 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS IET Cyber-Physical Systems: Theory and Applications Pub Date : 2020-10-12 DOI:10.1049/iet-cps.2019.0110
Ayaskanta Mishra, Arun Kumar Ray
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引用次数: 13

Abstract

IoT cloud-based connected smart dustbins (equipped with sensors) are imperative for efficient waste management in smart city. Municipal agencies can reduce the use of both man and machine by cutting down their overall waste collection route distance as well as number of waste collection vehicles (WCVs) by deploying this proposed cyber-physical system for route optimization of WCVs with capacitated vehicle-routing model. A novel cost function is mathematically modelled using data from dustbin-sensors and real-time road-traffic with modified Dijkstra's algorithm for optimisation of WCVs routes. Amount of solid waste in the dustbin (GC in %), rate of the filling (ΔG) and real-time/dynamic road traffic information from Google distance matrix advanced application programming interface (API) are used for estimation of the optimised route for WCVs. Optimisation goal of this work is to reduce both capital expense (CapEx) and operational expense (OpEx) of solid waste collection in the city by cutting the WCV fleet size and reducing overall distance covered by WCVs. The proposed route optimisation technique is analytically simulated for Bhubaneswar smart city and the result shows 30.28% saving in overall WCVs route distance and hence reducing OpEx around 29.07% and CapEx around 26.83% by reducing WCV fleet size.

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智能城市中高效固体废物管理的基于物联网云的网络物理系统:一种基于成本函数的新型路线优化技术,用于使用垃圾箱传感器和实时道路交通信息的废物收集车辆
基于物联网云的智能垃圾箱(配备传感器)是智慧城市高效垃圾管理的必要条件。市政机构可以通过减少其废物收集路线的总距离以及废物收集车辆(wcv)的数量来减少人和机器的使用,通过部署该建议的网络物理系统来优化具有容量车辆路线模型的废物收集车辆的路线。利用垃圾箱传感器和实时道路交通的数据,利用改进的Dijkstra算法对wcv路线进行优化,建立了一个新的成本函数数学模型。利用垃圾桶中固体废物量(GC %)、填充率(ΔG)和来自Google距离矩阵高级应用程序编程接口(API)的实时/动态道路交通信息来估计wcv的优化路线。这项工作的优化目标是通过减少WCV车队规模和减少WCV覆盖的总距离来减少城市固体废物收集的资本支出(CapEx)和运营支出(OpEx)。所提出的路线优化技术对布巴内斯瓦尔智慧城市进行了分析模拟,结果显示,通过减少WCV车队规模,总体WCV路线距离节省了30.28%,从而减少了约29.07%的运营成本和约26.83%的资本支出。
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来源期刊
IET Cyber-Physical Systems: Theory and Applications
IET Cyber-Physical Systems: Theory and Applications Computer Science-Computer Networks and Communications
CiteScore
5.40
自引率
6.70%
发文量
17
审稿时长
19 weeks
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