Literature DB >> 27264459

Evaluating the ability of artificial neural network and PCA-M5P models in predicting leachate COD load in landfills.

Sama Azadi1, Hamid Amiri2, G Reza Rakhshandehroo1.   

Abstract

Waste burial in uncontrolled landfills can cause serious environmental damages and unpleasant consequences. Leachates produced in landfills have the potential to contaminate soil and groundwater resources. Leachate management is one of the major issues with respect to landfills environmental impacts. Improper design of landfills can lead to leachate spread in the environment, and hence, engineered landfills are required to have leachate monitoring programs. The high cost of such programs may be greatly reduced and cost efficiency of the program may be optimized if one can predict leachate contamination level and foresee management and treatment strategies. The aim of this study is to develop two expert systems consisting of Artificial Neural Network (ANN) and Principal Component Analysis-M5P (PCA-M5P) models to predict Chemical Oxygen Demand (COD) load in leachates produced in lab-scale landfills. Measured data from three landfill lysimeters, including rainfall depth, number of days after waste deposition, thickness of top and bottom Compacted Clay Liners (CCLs), and thickness of top cover over the lysimeter, were utilized to develop, train, validate, and test the expert systems and predict the leachate COD load. Statistical analysis of the prediction results showed that both models possess good prediction ability with a slight superiority for ANN over PCA-M5P. Based on test datasets, the mean absolute percentage error for ANN and PCA-M5P models were 4% and 12%, respectively, and the correlation coefficient for both models was greater than 0.98. Developed models may be used as a rough estimate for leachate COD load prediction in primary landfill designs, where the effect of a top and/or bottom liner is disputed.
Copyright © 2016 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  ANN; COD load; Landfill; Leachate management; PCA-M5P; Prediction

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Year:  2016        PMID: 27264459     DOI: 10.1016/j.wasman.2016.05.025

Source DB:  PubMed          Journal:  Waste Manag        ISSN: 0956-053X            Impact factor:   7.145


  1 in total

1.  Evaluation of the bias and precision of regression techniques and machine learning approaches in total dissolved solids modeling of an urban aquifer.

Authors:  Conglian Pan; Kelvin Tsun Wai Ng; Bahareh Fallah; Amy Richter
Journal:  Environ Sci Pollut Res Int       Date:  2018-11-19       Impact factor: 4.223

  1 in total

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