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使用 ANN 废物预测评估废物特征及其对 GIS 车辆收集路线优化的影响。

Assessment of waste characteristics and their impact on GIS vehicle collection route optimization using ANN waste forecasts.

机构信息

Environmental Systems Engineering, University of Regina, Saskatchewan, Canada.

Environmental Systems Engineering, University of Regina, Saskatchewan, Canada.

出版信息

Waste Manag. 2019 Apr 1;88:118-130. doi: 10.1016/j.wasman.2019.03.037. Epub 2019 Mar 22.

Abstract

Combining an artificial neural network (ANN) waste prediction model with a geographic information system (GIS) waste collection route optimization, the paper shows how the compositional features of waste materials affect the optimized truck route time, distance, and air emissions. Using data from Austin, Texas, USA, a nonlinear autoregressive ANN model is used to predict the waste generation rate of the recycling and garbage streams for the year 2023 in four sub-areas of the city. This ANN model resulted in mean absolute percentage errors ranging from 10.92% to 16.51%. Modified compositions of the recycling and garbage streams are then used as inputs, along with the year 2023 generation rates, to create 6 modified and 3 non-modified scenarios that reflect possible future changes in waste composition. These waste stream scenarios are then used as input parameters to determine optimal waste collection routes with minimal travel distance in each of the four sub-areas using the GIS vehicle routing problem network analysis tool. Results of these 36 scenarios yield changes in travel distance of up to 19.9%, when compared to the non-modified composition. Further, dual compartment trucks were compared to single compartment trucks and found to save between 10.3 and 16.0% in travel distance and slightly reduce emissions but had a 15.7-19.8% increase in collection time. Results suggest temporal changes in waste composition and characteristics are important in GIS route optimization studies.

摘要

将人工神经网络 (ANN) 废物预测模型与地理信息系统 (GIS) 废物收集路线优化相结合,本文展示了废物材料的组成特征如何影响优化后的卡车路线时间、距离和空气排放。使用来自美国德克萨斯州奥斯汀的数据,使用非线性自回归 ANN 模型来预测该市四个分区 2023 年回收和垃圾流的废物产生率。该 ANN 模型的平均绝对百分比误差范围为 10.92%至 16.51%。然后,将回收和垃圾流的修改后的成分作为输入,以及 2023 年的产生率,创建 6 个修改后的和 3 个未修改的场景,这些场景反映了废物成分可能发生的未来变化。然后,使用 GIS 车辆路径问题网络分析工具,将这些废物流场景用作输入参数,以确定四个分区中每个分区的最小行驶距离的最佳废物收集路线。与未修改的成分相比,这些 36 个场景的结果导致行驶距离变化高达 19.9%。此外,与单舱卡车相比,双舱卡车在行驶距离上可节省 10.3%至 16.0%,并略微减少排放,但收集时间增加了 15.7-19.8%。结果表明,废物成分和特征的时间变化在 GIS 路线优化研究中很重要。

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