Yıl: 2022 Cilt: 6 Sayı: 4 Sayfa Aralığı: 579 - 584 Metin Dili: İngilizce DOI: 10.31015/jaefs.2022.4.10 İndeks Tarihi: 14-07-2023

Modeling wastewater treatment plant (WWTP) performance using artificial neural networks: Case of Adana (Seyhan)

Öz:
In this study, performance estimation of biological wastewater treatment plants (WWTP) was made by applying Artificial Neural Network (ANN) techniques. As material, 355-day data from Adana Metropolitan Municipality Seyhan wastewater treatment plant for 2021 were used. Of the data used, 240 were evaluated as training data and 115 as test data. In the establishment of the ANN model, the daily chemical oxygen demand (COD), daily water flow (Qw) and daily suspended solids (SS) parameters at the entrance of the WWTP were used as input parameters. The daily biological oxygen demand (BOD) parameter was determined as the output parameter. In the study, feed forward back propagation ANN model (FFBPANN) was used to estimate the daily BOD amounts at the entrance of the WWTP. In the statistical analysis, the correlation (R2) values of the input parameters with BOD were found to be 0.906 for COD, 0.294 for Qw and 0.605 for SS. The R2 value was determined as 0.891, the MAE value was 10.32% and the RMSE value was 722.21 in the network structures where the best results were obtained for the test and training data (in the 4-4-1 ANN model). As a result of the study, it was concluded that the ANN model was successful in estimating the BODs of the WWTPs in obtaining reliable and realistic results, and that effective analyzes with the simulation of their nonlinear behavior could be used as a good performance evaluation tool in terms of reducing operating costs.
Anahtar Kelime: Artificial neural network Biological oxygen demand Modeling Waste water treatment plant

Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA Dağtekin M, YELMEN B (2022). Modeling wastewater treatment plant (WWTP) performance using artificial neural networks: Case of Adana (Seyhan). , 579 - 584. 10.31015/jaefs.2022.4.10
Chicago Dağtekin Metin,YELMEN Bekir Modeling wastewater treatment plant (WWTP) performance using artificial neural networks: Case of Adana (Seyhan). (2022): 579 - 584. 10.31015/jaefs.2022.4.10
MLA Dağtekin Metin,YELMEN Bekir Modeling wastewater treatment plant (WWTP) performance using artificial neural networks: Case of Adana (Seyhan). , 2022, ss.579 - 584. 10.31015/jaefs.2022.4.10
AMA Dağtekin M,YELMEN B Modeling wastewater treatment plant (WWTP) performance using artificial neural networks: Case of Adana (Seyhan). . 2022; 579 - 584. 10.31015/jaefs.2022.4.10
Vancouver Dağtekin M,YELMEN B Modeling wastewater treatment plant (WWTP) performance using artificial neural networks: Case of Adana (Seyhan). . 2022; 579 - 584. 10.31015/jaefs.2022.4.10
IEEE Dağtekin M,YELMEN B "Modeling wastewater treatment plant (WWTP) performance using artificial neural networks: Case of Adana (Seyhan)." , ss.579 - 584, 2022. 10.31015/jaefs.2022.4.10
ISNAD Dağtekin, Metin - YELMEN, Bekir. "Modeling wastewater treatment plant (WWTP) performance using artificial neural networks: Case of Adana (Seyhan)". (2022), 579-584. https://doi.org/10.31015/jaefs.2022.4.10
APA Dağtekin M, YELMEN B (2022). Modeling wastewater treatment plant (WWTP) performance using artificial neural networks: Case of Adana (Seyhan). International Journal of Agriculture, Environment and Food Sciences, 6(4), 579 - 584. 10.31015/jaefs.2022.4.10
Chicago Dağtekin Metin,YELMEN Bekir Modeling wastewater treatment plant (WWTP) performance using artificial neural networks: Case of Adana (Seyhan). International Journal of Agriculture, Environment and Food Sciences 6, no.4 (2022): 579 - 584. 10.31015/jaefs.2022.4.10
MLA Dağtekin Metin,YELMEN Bekir Modeling wastewater treatment plant (WWTP) performance using artificial neural networks: Case of Adana (Seyhan). International Journal of Agriculture, Environment and Food Sciences, vol.6, no.4, 2022, ss.579 - 584. 10.31015/jaefs.2022.4.10
AMA Dağtekin M,YELMEN B Modeling wastewater treatment plant (WWTP) performance using artificial neural networks: Case of Adana (Seyhan). International Journal of Agriculture, Environment and Food Sciences. 2022; 6(4): 579 - 584. 10.31015/jaefs.2022.4.10
Vancouver Dağtekin M,YELMEN B Modeling wastewater treatment plant (WWTP) performance using artificial neural networks: Case of Adana (Seyhan). International Journal of Agriculture, Environment and Food Sciences. 2022; 6(4): 579 - 584. 10.31015/jaefs.2022.4.10
IEEE Dağtekin M,YELMEN B "Modeling wastewater treatment plant (WWTP) performance using artificial neural networks: Case of Adana (Seyhan)." International Journal of Agriculture, Environment and Food Sciences, 6, ss.579 - 584, 2022. 10.31015/jaefs.2022.4.10
ISNAD Dağtekin, Metin - YELMEN, Bekir. "Modeling wastewater treatment plant (WWTP) performance using artificial neural networks: Case of Adana (Seyhan)". International Journal of Agriculture, Environment and Food Sciences 6/4 (2022), 579-584. https://doi.org/10.31015/jaefs.2022.4.10