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ARTIFICIAL NEURAL NETWORK APPROACH FOR THE PREDICTION OF EFFLUENTS STREAMS FROM A WASTEWATER TREATMENT PLANT: A CASE STUDY IN KOCAELI (TURKEY)

Yıl 2020, Cilt: 6 Sayı: 1, 164 - 171, 30.06.2020
https://doi.org/10.22531/muglajsci.618373

Öz

A three-layer Artificial Neural Network (ANN) model was employed to develop and estimate the effluent stream parameters of two different wastewater treatment plants (WWTP) in Kocaeli, Turkey. The chemical oxygen demand (COD), suspended solid (SS), pH and temperature as the output parameters were estimated by five input parameters such as flow rate, COD, pH, SS and temperature. The ANN model was developed with 400 data sets for prediction of effluent pH, temperature, COD and SS. The benchmark tests were employed to achieve an optimum network algorithm. The network model with optimum functions at hidden and output layers were applied for the forecasts of effluent streams of both WWTPs. The regression values of training, validation and test using this function were found as 0.94, 0.96 and 0.95, respectively. The optimum neuron numbers were determined according to the minimum mean square error values. ANN testing outputs revealed that the model exhibited well performance in forecasting the effluent pH, temperature, SS and COD values.

Destekleyen Kurum

Yalova University

Proje Numarası

2016/YL/068

Kaynakça

  • [1] Beltramo, T., Klocke, M., Hitzmann, B., “Prediction of the biogas production using GA and ACO input features selection method for ANN model”, Inform. Process. Agri. 2019.
  • [2] Yetilmezsoy, K., Ozkaya, B., Cakmakci, M., “Artificial Intelligence-Based Prediction Models for Environmental Engineering”, Neural Network World, 3/11, 193-218, 2011.
  • [3] Hanbay, D., Turkoglu, I., Demir, Y., “Prediction of wastewater treatment plant performance based on wavelet packet decomposition and neural networks”, Expert Syst. Appl. 34 (2), 1038-1043, 2008.
  • [4] Gadekar, M. R., Mansoor Ahammed, M., “Modelling dye removal by adsorption onto water treatment residuals using combined response surface methodology-artificial neural network approach”, J. Environ. Manage. 231, 241–248, 2019.
  • [5] Haykin, S. Neural networks and learning machines. Prentice Hall, 2008.
  • [6] Xiong, Q. and Jutan, A. “Grey-box modelling and control of chemical processes”, Chem. Eng. Sci. 57, 1027–1039, 2002.
  • [7] Canete, J. D., Saz-Orozco, P. D., Baratti, R., Mulas, M., Ruano, A., Garcia-Cerezo, A., “Soft-sensing estimation of plant effluent concentrations in a biological wastewater treatment plant using an optimal neural network”, Expert Syst. Appl. 63, 8–19, 2016.
  • [8] Baklouti, I., Mansouri, M., Hamida, A. B., Nounou, H., Nounou, M., “Monitoring of wastewater treatment plants using improved univariate statistical technique”, Process Saf. Environ. 116, 287–300, 2018.
  • [9] Harrou, F., Dairi, A., Sun, Y., Senouci, M., “Statistical monitoring of a wastewater treatment plant: A case study”, J. Environ. Manage. 223, 807–814. 2018.[10] Han, H.G., Zhang, L., Liu, H.-X., Qiao, J.-F., “Multiobjective design of fuzzy neural network controller for wastewater treatment process”, Appl. Soft Comput. 67, 467–478, 2018.
  • [11] Wan, J., Huang, M., Ma, Y., Guo, W., Wang, Y., Zhang, H., Li, W., Sun, X., “Prediction of effluent quality of a paper mill wastewater treatment using an adaptive network-based fuzzy inference system”, Appl. Soft Comput. 11, 3238–3246, 2011.
  • [12] Silva, I.N. and Flauzino, R.A., “An approach based on neural networks for estimation and generalization of crossflow filtration processes”, Appl. Soft Comput. 8, 590–598, 2008.
  • [13] Holubar, P., Zani, L., Hager, M., Froschl, W., Radak, Z., Braun, R., “Advanced controlling of anaerobic digestion by means of hierarchical neural networks”, Water Res. 36, 2582–2588, 2002.
  • [14] Çinar, Ö., “New tool for evaluation of performance of wastewater treatment plant: Artificial neural network”, Process Biochem. 40, 2980–2984, 2005.
  • [15] Chen, J.C., Chang, N.B., Shieh, W.K., Assessing wastewater reclamation potential by neural network model”, Eng. Appl. Artif. Intell. 16, 149–157, 2003.
  • [16] Nasr, M. S., Moustafa, M.A.E., Seif, H.A.E., El Kobrosy, G., “Application of Artificial Neural Network (ANN) for the prediction of EL-AGAMY wastewater treatment plant performance-EGYPT”, Alexandria Eng. J. 51, 37–43, 2012.
  • [17] Dias, A., Alves, M., Ferreira, E., Application of computational intelligence techniques for monitoring and prediction of biological wastewater treatment systems. In: In Proceedings of the Int. IWA Conf. on Automation in Water Quality Monitoring, 3:Gent, Belgium, 2007, Springer, pp. 1–8.
  • [18] Raduly, B., Gernaey, K.V., Capodaglio, A.G., Mikkelsen, P.S., Henze, M., “Artificial neural networks for rapid WWTP performance evaluation: Methodology and case study”, Environ. Modell. Softw. 22, 1208-1216, 2007.
  • [19] Nadiri, A. A., Shokri, S., Tsai, F.T.C., Moghaddam, A. A. “Prediction of effluent quality parameters of a wastewater treatment plant using a supervised committee fuzzy logic model”, J. Cleaner Prod. 180, 539-549, 2018.
  • [20] Yetilmezsoy, K., Turkdogan, F.I., Temizel, I., Gunay, A., “Development of Ann-Based Models to Predict Biogas and Methane Productions in Anaerobic Treatment of Molasses Wastewater”, Int. J. Green Energy, 10:9, 885-907, 2013.
Yıl 2020, Cilt: 6 Sayı: 1, 164 - 171, 30.06.2020
https://doi.org/10.22531/muglajsci.618373

Öz

Proje Numarası

2016/YL/068

Kaynakça

  • [1] Beltramo, T., Klocke, M., Hitzmann, B., “Prediction of the biogas production using GA and ACO input features selection method for ANN model”, Inform. Process. Agri. 2019.
  • [2] Yetilmezsoy, K., Ozkaya, B., Cakmakci, M., “Artificial Intelligence-Based Prediction Models for Environmental Engineering”, Neural Network World, 3/11, 193-218, 2011.
  • [3] Hanbay, D., Turkoglu, I., Demir, Y., “Prediction of wastewater treatment plant performance based on wavelet packet decomposition and neural networks”, Expert Syst. Appl. 34 (2), 1038-1043, 2008.
  • [4] Gadekar, M. R., Mansoor Ahammed, M., “Modelling dye removal by adsorption onto water treatment residuals using combined response surface methodology-artificial neural network approach”, J. Environ. Manage. 231, 241–248, 2019.
  • [5] Haykin, S. Neural networks and learning machines. Prentice Hall, 2008.
  • [6] Xiong, Q. and Jutan, A. “Grey-box modelling and control of chemical processes”, Chem. Eng. Sci. 57, 1027–1039, 2002.
  • [7] Canete, J. D., Saz-Orozco, P. D., Baratti, R., Mulas, M., Ruano, A., Garcia-Cerezo, A., “Soft-sensing estimation of plant effluent concentrations in a biological wastewater treatment plant using an optimal neural network”, Expert Syst. Appl. 63, 8–19, 2016.
  • [8] Baklouti, I., Mansouri, M., Hamida, A. B., Nounou, H., Nounou, M., “Monitoring of wastewater treatment plants using improved univariate statistical technique”, Process Saf. Environ. 116, 287–300, 2018.
  • [9] Harrou, F., Dairi, A., Sun, Y., Senouci, M., “Statistical monitoring of a wastewater treatment plant: A case study”, J. Environ. Manage. 223, 807–814. 2018.[10] Han, H.G., Zhang, L., Liu, H.-X., Qiao, J.-F., “Multiobjective design of fuzzy neural network controller for wastewater treatment process”, Appl. Soft Comput. 67, 467–478, 2018.
  • [11] Wan, J., Huang, M., Ma, Y., Guo, W., Wang, Y., Zhang, H., Li, W., Sun, X., “Prediction of effluent quality of a paper mill wastewater treatment using an adaptive network-based fuzzy inference system”, Appl. Soft Comput. 11, 3238–3246, 2011.
  • [12] Silva, I.N. and Flauzino, R.A., “An approach based on neural networks for estimation and generalization of crossflow filtration processes”, Appl. Soft Comput. 8, 590–598, 2008.
  • [13] Holubar, P., Zani, L., Hager, M., Froschl, W., Radak, Z., Braun, R., “Advanced controlling of anaerobic digestion by means of hierarchical neural networks”, Water Res. 36, 2582–2588, 2002.
  • [14] Çinar, Ö., “New tool for evaluation of performance of wastewater treatment plant: Artificial neural network”, Process Biochem. 40, 2980–2984, 2005.
  • [15] Chen, J.C., Chang, N.B., Shieh, W.K., Assessing wastewater reclamation potential by neural network model”, Eng. Appl. Artif. Intell. 16, 149–157, 2003.
  • [16] Nasr, M. S., Moustafa, M.A.E., Seif, H.A.E., El Kobrosy, G., “Application of Artificial Neural Network (ANN) for the prediction of EL-AGAMY wastewater treatment plant performance-EGYPT”, Alexandria Eng. J. 51, 37–43, 2012.
  • [17] Dias, A., Alves, M., Ferreira, E., Application of computational intelligence techniques for monitoring and prediction of biological wastewater treatment systems. In: In Proceedings of the Int. IWA Conf. on Automation in Water Quality Monitoring, 3:Gent, Belgium, 2007, Springer, pp. 1–8.
  • [18] Raduly, B., Gernaey, K.V., Capodaglio, A.G., Mikkelsen, P.S., Henze, M., “Artificial neural networks for rapid WWTP performance evaluation: Methodology and case study”, Environ. Modell. Softw. 22, 1208-1216, 2007.
  • [19] Nadiri, A. A., Shokri, S., Tsai, F.T.C., Moghaddam, A. A. “Prediction of effluent quality parameters of a wastewater treatment plant using a supervised committee fuzzy logic model”, J. Cleaner Prod. 180, 539-549, 2018.
  • [20] Yetilmezsoy, K., Turkdogan, F.I., Temizel, I., Gunay, A., “Development of Ann-Based Models to Predict Biogas and Methane Productions in Anaerobic Treatment of Molasses Wastewater”, Int. J. Green Energy, 10:9, 885-907, 2013.
Toplam 19 adet kaynakça vardır.

Ayrıntılar

Birincil Dil İngilizce
Konular Mühendislik
Bölüm Makaleler
Yazarlar

Esra Bilgin Şimşek 0000-0002-2207-3855

Taner Alkay Bu kişi benim 0000-0002-2207-3855

Proje Numarası 2016/YL/068
Yayımlanma Tarihi 30 Haziran 2020
Yayımlandığı Sayı Yıl 2020 Cilt: 6 Sayı: 1

Kaynak Göster

APA Bilgin Şimşek, E., & Alkay, T. (2020). ARTIFICIAL NEURAL NETWORK APPROACH FOR THE PREDICTION OF EFFLUENTS STREAMS FROM A WASTEWATER TREATMENT PLANT: A CASE STUDY IN KOCAELI (TURKEY). Mugla Journal of Science and Technology, 6(1), 164-171. https://doi.org/10.22531/muglajsci.618373
AMA Bilgin Şimşek E, Alkay T. ARTIFICIAL NEURAL NETWORK APPROACH FOR THE PREDICTION OF EFFLUENTS STREAMS FROM A WASTEWATER TREATMENT PLANT: A CASE STUDY IN KOCAELI (TURKEY). MJST. Haziran 2020;6(1):164-171. doi:10.22531/muglajsci.618373
Chicago Bilgin Şimşek, Esra, ve Taner Alkay. “ARTIFICIAL NEURAL NETWORK APPROACH FOR THE PREDICTION OF EFFLUENTS STREAMS FROM A WASTEWATER TREATMENT PLANT: A CASE STUDY IN KOCAELI (TURKEY)”. Mugla Journal of Science and Technology 6, sy. 1 (Haziran 2020): 164-71. https://doi.org/10.22531/muglajsci.618373.
EndNote Bilgin Şimşek E, Alkay T (01 Haziran 2020) ARTIFICIAL NEURAL NETWORK APPROACH FOR THE PREDICTION OF EFFLUENTS STREAMS FROM A WASTEWATER TREATMENT PLANT: A CASE STUDY IN KOCAELI (TURKEY). Mugla Journal of Science and Technology 6 1 164–171.
IEEE E. Bilgin Şimşek ve T. Alkay, “ARTIFICIAL NEURAL NETWORK APPROACH FOR THE PREDICTION OF EFFLUENTS STREAMS FROM A WASTEWATER TREATMENT PLANT: A CASE STUDY IN KOCAELI (TURKEY)”, MJST, c. 6, sy. 1, ss. 164–171, 2020, doi: 10.22531/muglajsci.618373.
ISNAD Bilgin Şimşek, Esra - Alkay, Taner. “ARTIFICIAL NEURAL NETWORK APPROACH FOR THE PREDICTION OF EFFLUENTS STREAMS FROM A WASTEWATER TREATMENT PLANT: A CASE STUDY IN KOCAELI (TURKEY)”. Mugla Journal of Science and Technology 6/1 (Haziran 2020), 164-171. https://doi.org/10.22531/muglajsci.618373.
JAMA Bilgin Şimşek E, Alkay T. ARTIFICIAL NEURAL NETWORK APPROACH FOR THE PREDICTION OF EFFLUENTS STREAMS FROM A WASTEWATER TREATMENT PLANT: A CASE STUDY IN KOCAELI (TURKEY). MJST. 2020;6:164–171.
MLA Bilgin Şimşek, Esra ve Taner Alkay. “ARTIFICIAL NEURAL NETWORK APPROACH FOR THE PREDICTION OF EFFLUENTS STREAMS FROM A WASTEWATER TREATMENT PLANT: A CASE STUDY IN KOCAELI (TURKEY)”. Mugla Journal of Science and Technology, c. 6, sy. 1, 2020, ss. 164-71, doi:10.22531/muglajsci.618373.
Vancouver Bilgin Şimşek E, Alkay T. ARTIFICIAL NEURAL NETWORK APPROACH FOR THE PREDICTION OF EFFLUENTS STREAMS FROM A WASTEWATER TREATMENT PLANT: A CASE STUDY IN KOCAELI (TURKEY). MJST. 2020;6(1):164-71.

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