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Impact of population change and unemployment rate on Philadelphia's waste disposal

机译:人口变化和失业率对费城废物处理的影响

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摘要

Predicting waste disposal of a given municipality could be complicated and expensive for government agencies. Lack of a uniform modeling approach, the gap between the scientific community and the government, inaccessibility to the forecasts of variables used in the waste management literature, and budget deficiencies could all result in over-simplification and possibly employing inaccurate modeling approaches for decision makers. This paper portrays the trend of Total Solid Waste (TSW) and Municipal Solid Waste (MSW) disposal of Philadelphia (Pennsylvania, US) with respect to the rate of population change, unemployment rate change, and the current recycling policies. The objective is to develop satisfactory predictive models for the TSW disposal using the same number of variables as currently used by the City of Philadelphia. It is crucial to include an economic factor such as unemployment rate in modeling the waste disposal, especially during economic downturns when economic factors can dominate the effects of population change on waste generation and therefore disposal. Two predictive models are developed using time series analysis and stationary multiple linear regression. The stationary multiple linear regression model yields more accurate predictions for both TSW and MSW disposal of Philadelphia with an approximate level of 8.8% Root Mean Square Percentage Error (RMSPE) and R-2 of 0.7. Even the VAR model, with RMSE of 0.15 million tons (RMSPE = 10.7%), provides better estiamtions than does the City of Philadelphia's current working model. (C) 2019 Elsevier Ltd. All rights reserved.
机译:对于政府机构而言,预测给定市政的废物处置可能是复杂且昂贵的。缺乏统一的建模方法,科学界与政府之间的鸿沟,无法获得废物管理文献中使用的变量的预测以及预算不足,都可能导致过度简化,甚至可能为决策者采用不准确的建模方法。本文从人口变化率,失业率变化和当前的回收政策方面,描绘了费城(美国宾夕法尼亚州)的总固体废物(TSW)和城市固体废物(MSW)处置的趋势。目的是使用与费城目前使用的变量数量相同的变量,为TSW处置开发令人满意的预测模型。在对废物处置进行建模时,必须包括诸如失业率之类的经济因素,尤其是在经济不景气时期,因为经济因素可能主导人口变化对废物产生和废物处置的影响。使用时间序列分析和平稳多元线性回归开发了两个预测模型。平稳的多元线性回归模型可为费城的TSW和MSW处置提供更准确的预测,近似均方根百分比误差(RMSPE)为8.8%,R-2为0.7。即使是VAR模型,RMSE为15万吨(RMSPE = 10.7%),也比费城市当前的工作模型提供了更好的估计。 (C)2019 Elsevier Ltd.保留所有权利。

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