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Forecasting of the unknown end-of-life tire flow for control and decision making in urban solid waste management: A case study

机译:预测未知报废轮胎流量以进行城市固体废物管理中的控制和决策

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摘要

Efficient urban planning requires managers' experience and knowledge of reverse logistics in solid urban waste processes. Forecasting tools are needed to control, select and manage municipal solid waste. This paper presents the application of dynamic modeling approaches, namely, a linear autoregressive seasonal model, a model based on a FeedForward Artificial Neural Network and a Recurrent Neural Networks model, in order to forecast the unknown flows of end-of-life tires 12 months ahead. The models were identified using a database comprising four years of historical series related to the unknown flows of end-of-life tires. These were obtained through an exploratory analysis based on the annual sales reports of new tires issued by the Brazilian Institute of Geography and Statistics and reports related to the number of vehicles in circulation issued by Brazil's National Traffic Department. The results show that the models are able to carry out consistent forecasts over the horizon of a year ahead and the predictions are capable of identifying seasonalities and supporting decision making in urban waste management.
机译:高效的城市规划需要管理者在固体废物处理过程中的经验和逆向物流知识。需要使用预测工具来控制,选择和管理城市固体废物。本文介绍了动态建模方法的应用,即线性自回归季节模型,基于前馈人工神经网络和递归神经网络模型的模型,以预测12个月报废轮胎的未知流量先。使用包含四年历史系列的数据库对模型进行了识别,这些历史系列与报废轮胎的未知流量有关。这些是根据巴西地理与统计研究所发布的新轮胎的年度销售报告以及巴西国家交通部门发布的有关流通车辆数量的报告,通过探索性分析得出的。结果表明,这些模型能够在未来一年的时间范围内进行一致的预测,并且该预测能够识别季节性并支持城市废物管理中的决策。

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