Younes Mohammad K, Nopiah Z M, Basri N E Ahmad, Basri H, Abushammala Mohammed F M, Maulud K N A
Department of Civil and Structural Engineering, Universiti Kebangsaan Malaysia, 43600, Bangi, Selangor, Malaysia.
Department of Civil Engineering, Middle East College, Knowledge Oasis Muscat, P.B. No. 79, Al Rusayl, 124, Sultanate of Oman.
Environ Monit Assess. 2015 Dec;187(12):753. doi: 10.1007/s10661-015-4977-5. Epub 2015 Nov 17.
Most of the developing countries have solid waste management problems. Solid waste strategic planning requires accurate prediction of the quality and quantity of the generated waste. In developing countries, such as Malaysia, the solid waste generation rate is increasing rapidly, due to population growth and new consumption trends that characterize society. This paper proposes an artificial neural network (ANN) approach using feedforward nonlinear autoregressive network with exogenous inputs (NARX) to predict annual solid waste generation in relation to demographic and economic variables like population number, gross domestic product, electricity demand per capita and employment and unemployment numbers. In addition, variable selection procedures are also developed to select a significant explanatory variable. The model evaluation was performed using coefficient of determination (R(2)) and mean square error (MSE). The optimum model that produced the lowest testing MSE (2.46) and the highest R(2) (0.97) had three inputs (gross domestic product, population and employment), eight neurons and one lag in the hidden layer, and used Fletcher-Powell's conjugate gradient as the training algorithm.
大多数发展中国家都存在固体废物管理问题。固体废物战略规划需要准确预测产生废物的质量和数量。在马来西亚等发展中国家,由于人口增长和代表社会特征的新消费趋势,固体废物产生率正在迅速上升。本文提出了一种人工神经网络(ANN)方法,即使用带有外部输入的前馈非线性自回归网络(NARX)来预测与人口和经济变量(如人口数量、国内生产总值、人均电力需求以及就业和失业人数)相关的年度固体废物产生量。此外,还开发了变量选择程序以选择显著的解释变量。使用决定系数(R²)和均方误差(MSE)进行模型评估。产生最低测试MSE(2.46)和最高R²(0.97)的最优模型有三个输入(国内生产总值、人口和就业)、八个神经元且隐藏层有一个滞后,并使用弗莱彻 - 鲍威尔共轭梯度作为训练算法。