Title of article
Estimation of Oxygen Exchange duringTreatment Sludge Composting through Multiple Regression and Artificial Neural Networks (Estimation of Oxygen Exchange during Composting)
Author/Authors
Yildiz، S. نويسنده , , Degirmenci، M. نويسنده Cumhuriyet University, Engineering Faculty,Department of Environmental Engineering, 58140, Sivas, Turkey ,
Issue Information
فصلنامه با شماره پیاپی 36 سال 2015
Pages
10
From page
1173
To page
1182
Abstract
In general, amount of sludge will definitely increase in near future and composting processes,
optimum composting conditions and compost use as fertilizer and soil amendment will then be significant
research topics. The present study was conducted for O2 parameter estimation by multiple regression and
artificial neural networks methods. Daily temperature, CH4, H2S, CO2 and O2 measurements were performed
over three different windrows during the composting period (136 days). Three different models were developed
for each windrow. Multiple regression and artificial neural network methods were then applied to these models
for O2 estimations. High confidence levels were attained between the parameters of multiple regression
analysis. However, correlation values in artificial neural network applications (R2 = 0.65-0.98) were even
higher. Thus, artificial neural network model applied for each windrow and model was highly confident. The
present results indicated that temperature, CH4, CO2 and H2S measurements performed during the composting
of waste treatment sludge yielded satisfactory estimations for O2. The recommended correlation may provide
significant contributions to composting processes and implementations.
Journal title
International Journal of Environmental Research(IJER)
Serial Year
2015
Journal title
International Journal of Environmental Research(IJER)
Record number
2388344
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