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Great Recession, environmental awareness, and Philadelphia's waste generation

机译:经济大萧条,环保意识和费​​城的废物产生

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摘要

Waste disposal has always been one of the challenging aspects of human life mostly in populated areas. In every urban region, various factors can impact both amount and composition of the generated waste, and these factors might depend on a series of parameters. Therefore, developing a predictive model for waste generation has always been challenging. We believe that one main problem that city planners and policymakers face is a lack of an accurate yet easy-to-use predictive model for the waste production of a given municipality. It would be vital for them, especially during business downturns, to access a reliable predictive model that can be employed in planning resources and allocating budget. However, most developed models are complicated and extensive. The objective of this research is to study the trend of solid waste generation in Philadelphia with respect to business cycle indicators, population growth, current policies and environmental awareness, and to develop a satisfactory predictive model for waste generation.;Three predictive models were developed using time series analysis, stationary and nonstationary multiple linear regressions. The nonstationary OLS model was just used for comparison purposes and does not have any modeling value. Among the other two developed predictive models, the multiple linear regression model with stationary variables yielded the most accurate predictions for both total and municipal solid waste generation of Philadelphia. Despite its unsatisfactory statistics (R-square, p-value, and F-value), stationary OLS model could predict Philadelphia's waste generation with a low level of approximately 9% error. Although time series modeling demonstrated a less successful prediction comparing to the stationary OLS model (25% error for total solid waste, and 10.7% error for municipal waste predictions), it would be a more reliable method based on its model statistics. The common variable used in all three developed models which made our modeling different from the Streets Department's estimations was unemployment rate. Including an economic factor such as unemployment rate in modeling the waste generation could be helpful especially during economic downturns, in which economic factors can dominate the effects of population growth on waste generation.;A prediction of waste generation may not only help waste management sector in landfill and waste-to-energy facilities planning but it also provides the basis for a good estimation of its future environmental impacts. In future, we are hoping to predict related environmental trends such as greenhouse gas emissions using our predictive model.
机译:废物处理一直是人类生活中最具挑战性的方面之一,主要是在人口稠密地区。在每个城市地区,各种因素都会影响所产生废物的数量和组成,而这些因素可能取决于一系列参数。因此,开发用于废物产生的预测模型一直是具有挑战性的。我们认为,城市规划人员和政策制定者面临的一个主要问题是,缺乏给定市镇产生废物的准确但易于使用的预测模型。对于他们来说,至关重要的是,尤其是在业务低迷时期,访问可靠的预测模型,该模型可用于计划资源和分配预算。但是,大多数已开发的模型复杂且范围广泛。这项研究的目的是从商业周期指标,人口增长,现行政策和环境意识等方面研究费城固体废物的发展趋势,并开发出令人满意的废物产生预测模型。时间序列分析,平稳和非平稳多元线性回归。非平稳OLS模型仅用于比较目的,没有任何建模价值。在其他两个已开发的预测模型中,带有固定变量的多元线性回归模型对费城的总固体废物和城市固体废物产生产生了最准确的预测。尽管统计数据(R平方,p值和F值)不尽人意,但固定的OLS模型可以预测费城的废物产生,且其错误率约为9%。尽管与固定的OLS模型相比,时间序列建模的预测效果较差(总固体废物误差为25%,城市废物预测误差为10.7%),但基于其模型统计信息,这将是更可靠的方法。在所有三个已开发模型中使用的共同变量(使我们的模型与街道部门的估计不同)是失业率。在废物产生模型中包括诸如失业率之类的经济因素可能会有所帮助,尤其是在经济不景气期间,在经济不景气期间,经济因素可能会主导人口增长对废物产生的影响。;对废物产生的预测可能不仅会帮助墨西哥的废物管理部门垃圾填埋场和废物转化为能源的设施规划,但它也为良好地估算其未来环境影响提供了基础。将来,我们希望使用我们的预测模型来预测相关的环境趋势,例如温室气体排放。

著录项

  • 作者

    Khajevand, Nikoo.;

  • 作者单位

    Temple University.;

  • 授予单位 Temple University.;
  • 学科 Environmental engineering.;Environmental economics.;Environmental management.
  • 学位 M.S.Env.E.
  • 年度 2016
  • 页码 79 p.
  • 总页数 79
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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