Title of article :
Forecasting Municipal Solid waste Generation by Hybrid Support Vector Machine and Partial Least Square Model
Author/Authors :
Abbasi، M نويسنده Faculty of Environment , , Abduli، M.A نويسنده Graduate Faculty of Environment, University of Tehran, P.O. Box 14155-6135, Tehran, Iran , , Omidvar، B نويسنده Faculty of Environment , , Baghvand، A نويسنده Faculty of Environment ,
Issue Information :
فصلنامه با شماره پیاپی 0 سال 2013
Abstract :
Forecasting of municipal waste generation is a critical challenge for decision making and planning,
because proper planning and operation of a solid waste management system is intensively affected by municipal
solid waste (MSW) streams analysis and accurate predictions of solid waste quantities generated. Due to
dynamic and complexity of solid waste management system, models by artificial intelligence can be a useful
solution of this problem. In this paper, a novel method of Forecasting MSW generation has been proposed.
Here, support vector machine (SVM) as an intelligence tool combined with partial least square (PLS) as a
feature selection tool was used to weekly prediction of MSW generated in Tehran, Iran. Weekly MSW
generated in the period of 2008 to 2011 was used as input data for model learning. Moreover, Monte Carlo
method was used to analyze uncertainty of the model results. Model performance evaluated and compared by
statistical indices of Relative Mean Errors, Root Mean Squared Errors, Mean Absolute Relative Error and
coefficient of determination. Comparison of SVM and PLS-SVM model showed PLS-SVM is superior to
SVM model in predictive ability and calculation time saving. Also, results demonstrate which PLS could
successfully identify the complex nonlinearity and correlations among input variables and minimize them. The
uncertainty analysis also verified that the PLS-SVM model had more robustness than SVM and had a lower
sensitivity to change of input variables.
Journal title :
International Journal of Environmental Research(IJER)
Journal title :
International Journal of Environmental Research(IJER)