Forecast Municipal Solid Waste Generation in Sri Lanka

D. Dissanayaka, S. Vasanthapriyan
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引用次数: 17

Abstract

Municipal Solid Waste Management (MSWM) is one of the primary tasks of metropolitan local authorities in developing countries. For efficient and effective waste management schemes and scheduling, accurate forecast of Municipal Solid Waste (MSW) generation is essential, due to the uncertainties and unavailability of sufficient MSW generation information and resources in developing countries. The objectives of this paper are to identify influential variables that affect the amount of MSW generation and to predict the future MSW in Sri Lanka by consuming linear, nonlinear models, and machine learning techniques and propose a model for forecast future MSW generation using influential variables. Socio-economic data and waste generation data are collected from the Department of Census and Statistics and the National Solid Waste Management Support Center. Data preparation is done with substitute missing values by average values. Pearson correlation and Principal Component Analysis is used to finding correlation among influential variables. Linear model, Non-linear model, and machine learning model are used to forecast municipal solid waste generation in Sri Lanka. Relatively Linear regression analysis, artificial neural network (ANN), and Random forest used as a linear model, Non-linear model, and machine learning model. Relatively Correlation coefficient of linear regression classification, random forest classification, and ANN are R2=0.6973, R2=0.9608, and R2=0.9923. Based on the correlation coefficient, ANN provides higher accurate results than linear regression and random forest models. Based on the analyzed result, proposed a model for forecast future MSW generation with four influential variables that are municipal solid waste generation, total population, GDP growth rate, and Crude birth rate.
斯里兰卡城市固体废物产量预测
城市固体废物管理(MSWM)是发展中国家大城市地方当局的主要任务之一。由于发展中国家不确定和无法获得足够的城市固体废物产生的资料和资源,因此,为了有效和有效的废物管理计划和调度,对城市固体废物产生的准确预测是必不可少的。本文的目标是确定影响城市生活垃圾产生量的影响变量,并通过使用线性、非线性模型和机器学习技术预测斯里兰卡未来的城市生活垃圾,并提出一个使用影响变量预测未来城市生活垃圾产生量的模型。社会经济数据和废物产生的数据是从人口普查和统计局和国家固体废物管理支助中心收集的。数据准备是用平均值代替缺失值完成的。使用Pearson相关和主成分分析来寻找影响变量之间的相关性。采用线性模型、非线性模型和机器学习模型对斯里兰卡城市固体废物产生量进行预测。相对线性回归分析,人工神经网络(ANN)和随机森林用作线性模型、非线性模型和机器学习模型。线性回归分类、随机森林分类和人工神经网络的相对相关系数分别为R2=0.6973、R2=0.9608和R2=0.9923。基于相关系数,人工神经网络提供了比线性回归和随机森林模型更高的准确结果。在分析结果的基础上,提出了以城市生活垃圾产生量、总人口、GDP增长率和粗出生率为影响变量的未来城市生活垃圾产生量预测模型。
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