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Forecasting Household Packaging Waste Generation: A Case Study

机译:预测家庭包装废物产生:一个案例研究

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Nowadays, house packaging waste (HPW) materials acquired a great deal of importance, due to environmental and economic reasons, and therefore waste collection companies place thousands of collection points (ecopontos) for people to deposit their HPW. In order to optimize HPW collection process, accurate forecasts of the waste generation rates are needed. Our objective is to develop forecasting models to predict the number of collections per year required for each ecoponto by evaluating the relevance of ten proposed explanatory factors for HPW generation. We developed models based on two approaches: multiple linear regression and artificial neural networks (ANN) .The results obtained show that the best ANN model, which achieved an R~2 of 0.672 and MAD of 9.1, slightly outperforms the best regression model (R~2 of 0.636, MAD of 10.44). The most important factors to estimate HPW generation rates are related to ecoponto characteristics and to the population and economic activities around each ecoponto location.
机译:如今,由于环境和经济原因,房屋包装废料(HPW)变得非常重要,因此废料收集公司放置了数千个收集点(ecopontos)供人们存放其HPW。为了优化HPW收集过程,需要准确预测废物产生率。我们的目标是通过评估十个建议的解释因素与HPW产生的相关性,开发出预测模型,以预测每个ecoponto每年所需的收集数量。我们基于两种方法开发了模型:多元线性回归和人工神经网络(ANN)。获得的结果表明,最佳的ANN模型的R〜2为0.672,MAD为9.1,略胜于最佳回归模型(R 〜0.636的2,MAD为10.44)。估计HPW产生率的最重要因素与生态海绵的特性以及每个生态海绵所在地的人口和经济活动有关。

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