ARTIFICIAL NEURAL NETWORK APPLIED IN FORECASTING THE COMPOSITION OF MUNICIPAL SOLID WASTE IN IASI, ROMANIA

IF 1 4区 环境科学与生态学 Q4 ENVIRONMENTAL SCIENCES
C. Ghinea, P. Cozma, M. Gavrilescu
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引用次数: 0

Abstract

Neural network time series (NNTS) tool was used to predict municipal solid waste composition in Iasi, Romania. The nonlinear input output (NIO) time series model and nonlinear autoregressive model with external (exogenous) input (NARX) included in this tool were selected. The coefficient of determination (R2) and root mean square error (RMSE) were chosen for evaluation. By applying NIO, the optimum model is 4-11-6 artificial neural network (ANN, R2 = 0.929) in the case of testing as for the validation, with all 0.849 and 0.885, respectively. Applying NARX, the suitable model became 4-13-6 ANN model, with R2 = 0.999 for training, 0.879 for testing, and 0.931, respectively 0.944 for validation and all. The resulted RMSE is zero for training and 0.0109 for validation in the case of this model which had 4 inputs, 13 neurons and 6 outputs. The four input variables were: number of residents, population aged 15–59 years, urban life expectancy, total municipal solid waste (ton/year). The suitable ANN model revealed the lowest root mean square error and the highest coefficient of determination. Results indicate that NNTS tool is a complex instrument, NARX is more accurate than NIO model, and can be used and applied easily.
人工神经网络在罗马尼亚雅西城市生活垃圾组成预测中的应用
采用神经网络时间序列(NNTS)预测罗马尼亚雅西城市生活垃圾组成。选择该工具中包含的非线性输入输出(NIO)时间序列模型和具有外部(外生)输入的非线性自回归模型(NARX)。选择决定系数(R2)和均方根误差(RMSE)进行评价。应用NIO进行验证,在检验的情况下,最优模型为4-11-6人工神经网络(ANN, R2 = 0.929),分别为0.849和0.885。应用NARX,合适的模型为4-13-6 ANN模型,训练模型R2 = 0.999,检验模型R2 = 0.879,验证模型R2 = 0.944,所有模型R2 = 0.931。在这个模型有4个输入、13个神经元和6个输出的情况下,训练的RMSE为零,验证的RMSE为0.0109。四个输入变量为:居民人数、15-59岁人口、城市预期寿命、城市固体废物总量(吨/年)。合适的人工神经网络模型具有最小的均方根误差和最高的决定系数。结果表明,NNTS工具是一种复杂的仪器,NARX比NIO模型更精确,易于使用和应用。
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来源期刊
CiteScore
1.90
自引率
7.70%
发文量
41
审稿时长
>12 weeks
期刊介绍: The Journal of Environmental Engineering and Landscape Management publishes original research about the environment with emphasis on sustainability.
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