@article{scholars5290, volume = {180}, note = {cited By 1; Conference of 7th International Conference on Waste Management and the Environment, WM 2014 ; Conference Date: 12 May 2014 Through 14 May 2014; Conference Code:105914}, doi = {10.2495/WM140181}, address = {Ancona}, title = {The modelling of an anoxic-aerobic biological reactor}, year = {2014}, publisher = {WITPress}, journal = {WIT Transactions on Ecology and the Environment}, pages = {213--221}, abstract = {The anoxic-aerobic wastewater treatment process increases wastewater treatment efficiency and decreases the aeration basin. In this study, raw data obtained from two anoxic-aerobic biological reactors (AABR) used for the trseatment of different loads of petroleum refinery wastewater (PRW) were used for developing a mathematical model that could simulate the process trend. The data consists of 160 entries and was gathered over approximately 180 days from two AABR reactors that were continuously operated in parallel. Two configurations of artificial neural networks were compared and different numbers of neurons were tested for an optimum model that could represent the process behaviour under different loads. The tangent sigmoid transfer function (Tansig) at the hidden layer and a linear transfer function (Purelin) at the output layer with 9 hidden neurons were selected as the best optimum model. From the simulation model, the highest removal efficiency was observed as 96, which was recorded for chemical oxygen demand (COD) influent concentration of 3150 mg/L. Effluent concentration below 100 mg/L was recorded for influent COD concentration, which ranged between 150 and 700 mg/L corresponding to the removal efficiency in the range of 78-88. {\^A}{\copyright} 2014 WIT Press.}, keywords = {aeration; anoxic conditions; artificial neural network; bioreactor; chemical oxygen demand; efficiency measurement; mathematical analysis; modeling; numerical model; oxic conditions; wastewater; water treatment}, url = {https://www.scopus.com/inward/record.uri?eid=2-s2.0-84903218454&doi=10.2495\%2fWM140181&partnerID=40&md5=20e94aa736fa7e809f212acd943658f4}, isbn = {9781845647605}, issn = {17433541}, author = {Kutty, S. R. M. and Gasim, H. A. and Isa, M. H.} }