4.7 Article

Utilization of random vector functional link integrated with manta ray foraging optimization for effluent prediction of wastewater treatment plant

Journal

JOURNAL OF ENVIRONMENTAL MANAGEMENT
Volume 298, Issue -, Pages -

Publisher

ACADEMIC PRESS LTD- ELSEVIER SCIENCE LTD
DOI: 10.1016/j.jenvman.2021.113520

Keywords

Data-driven model; Artificial neural network; Random vector functional link; Manta-ray foraging optimization; Biological oxygen demand; Total suspended solids

Funding

  1. China Scholarship Council grant (CSC) [2018GBJ008465]

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An innovative predictive model using MRFO-RVFL was employed to predict key performance indicators of a full-scale WWTP, outperforming the conventional RVFL model. Results showed that the MRFO-RVFL model demonstrated higher performance and accuracy in predicting TSS and optimal BOD5.
An innovative predictive model was employed to predict the key performance indicators of a full-scale wastewater treatment plant (WWTP) operated with an activated sludge treatment process. The data-driven model was obtained using data gathered from Cairo, Egypt. The proposed model consists of Random Vector Functional Link (RVFL) Networks incorporated with Manta Ray Foraging Optimizer (MRFO). RVFL is used as an advanced Artificial Neural Network (ANN) that avoids the common conventional ANN problems such as overfitting. MRFO is employed to determine the best RVFL parameters to maximize the prediction accuracy of the model. The developed MRFO-RVFL is compared with conventional RVFL to figure out the role of MRFO as an optimization tool to enhance model performance. Both models were trained and tested using experimental data measured during a long period of 222 days. This study aims to provide an accurate prediction of the most widely treated effluent indicators of BOD5 and TSS in the wastewater treatment plants. In this study, ten well-known influent wastewater parameters, BOD5, TSS, and VSS, influent flow rate, pH, ambient temperature, F/M ratio, SRT, WAS, and RAS, the output BOD5 and TSS were modeled and predicted using the integrated MRFO-RVFL algorithms and compared with the standalone RVFL model. The performance of the models was evaluated using different assessment measures such as R-2, RMSE, and others. The obtained results of R-2 and RMSE for the MRFO-RVFL model were 0.924 and 3.528 for BOD5 and 0.917 and 6.153 for TSS, which were much better than the results of conventional RVFL with 0.840 and 6.207 for BOD5 and 0.717 and 10.05 for TSS. Based on the obtained results, the selective model (MRFO-RVFL) exhibited a higher performance and validity to predict the TSS and optimal BOD5.

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