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东欧城市生活垃圾生成的预测方法的应用与评价。

Application and evaluation of forecasting methods for municipal solid waste generation in an Eastern-European city.

机构信息

Department of Environmental Engineering, Kaunas University of Technology, Kaunas, Lithuania.

出版信息

Waste Manag Res. 2012 Jan;30(1):89-98. doi: 10.1177/0734242X10396754. Epub 2011 Mar 7.

DOI:10.1177/0734242X10396754
PMID:21382880
Abstract

Forecasting of generation of municipal solid waste (MSW) in developing countries is often a challenging task due to the lack of data and selection of suitable forecasting method. This article aimed to select and evaluate several methods for MSW forecasting in a medium-scaled Eastern European city (Kaunas, Lithuania) with rapidly developing economics, with respect to affluence-related and seasonal impacts. The MSW generation was forecast with respect to the economic activity of the city (regression modelling) and using time series analysis. The modelling based on social-economic indicators (regression implemented in LCA-IWM model) showed particular sensitivity (deviation from actual data in the range from 2.2 to 20.6%) to external factors, such as the synergetic effects of affluence parameters or changes in MSW collection system. For the time series analysis, the combination of autoregressive integrated moving average (ARIMA) and seasonal exponential smoothing (SES) techniques were found to be the most accurate (mean absolute percentage error equalled to 6.5). Time series analysis method was very valuable for forecasting the weekly variation of waste generation data (r (2) > 0.87), but the forecast yearly increase should be verified against the data obtained by regression modelling. The methods and findings of this study may assist the experts, decision-makers and scientists performing forecasts of MSW generation, especially in developing countries.

摘要

由于缺乏数据和选择合适的预测方法,发展中国家的城市固体废物(MSW)产生量预测通常是一项具有挑战性的任务。本文旨在选择和评估几种适用于经济快速发展的中东欧城市(立陶宛考纳斯)的 MSW 预测方法,以评估与富裕程度相关和季节性影响。根据城市经济活动(回归建模)和时间序列分析对 MSW 产生量进行了预测。基于社会经济指标的建模(在 LCA-IWM 模型中实施的回归)显示出对外部因素的特殊敏感性(与实际数据的偏差范围为 2.2 至 20.6%),例如富裕参数的协同效应或 MSW 收集系统的变化。对于时间序列分析,发现自回归综合移动平均(ARIMA)和季节性指数平滑(SES)技术的组合是最准确的(平均绝对百分比误差等于 6.5)。时间序列分析方法对于预测废物产生数据的每周变化非常有价值(r (2) > 0.87),但应根据回归建模获得的数据验证对每年的增长预测。本研究的方法和结果可能有助于进行 MSW 产生预测的专家、决策者和科学家,特别是在发展中国家。

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