Please use this identifier to cite or link to this item: http://hdl.handle.net/11452/31396
Title: Application of artificial neural network in horizontal subsurface flow constructed wetland for nutrient removal prediction
Authors: Uludağ Üniversitesi/Mühendislik Fakültesi/Çevre Mühendisliği Bölümü.
0000-0002-0387-0656
0000-0002-1762-1140
Özengin, Nihan
Elmacı, Ayşe
Yonar, Taner
AAH-1475-2021
AAD-9468-2019
AAG-9866-2021
16231232500
16230326600
6505923781
Keywords: Environmental sciences & ecology
Artificial neural networks
Constructed wetlands
LECA
Levenberg-Marquardt algorithm
Phragmites australis
Wastewater treatment
Chemical oxygen-demand
Municipal waste-water
Laboratory-scale
Phosphorus
Nitrogen
Design
Phosphate
Selection
Capacity
Plants
Issue Date: 19-Jul-2016
Publisher: Corvinus University Budapest
Citation: Özengin, N. vd. (2016). "Application of artificial neural network in horizontal subsurface flow constructed wetland for nutrient removal prediction". Applied Ecology and Environmental Research, 14(4), 305-324.
Abstract: The aim of this study is to determine the appropriateness of the field measurements for the effectiveness of nutrients removal of Phragmites australis (Cav.) Trin. Ex. Steudel by applying artificial neural network (ANN) and also evaluate the removal capacity of LECA (light expanded clay aggregate) in a horizontal subsurface flow constructed wetland (SSFW). Two laboratory scale reactors were operated with weak and strong synthetic domestic wastewater continuously. One unit was planted with P. australis and the other unit remained unplanted (control reactor). The best performance was achieved with strong domestic wastewater treatment, the average removal efficiencies obtained from the evaluation of the system were 70.15% and 65.29% for TN, 66% and 57.4% for NH4-N, 61.64% and 67.37% for TP and, 66.52% and 51.7% for OP in planted and unplanted reactors, respectively. The average NO3- concentration was 0.90 mg l(-1) in the influent and 0.47 mg l(-1) and 0.60 mg l(-1) from planted and unplanted reactors, respectively. The average NO2- concentration was 0.80 mg l(-1) in the influent and 0.56 mg l-1 and 0.88 mg l(-1) from planted and unplanted reactors, respectively. Based on the obtained results, this system has potential to be an applicable system to treat strong domestic wastewater. The data obtained in this study was assessed using NeuroSolutions 5.06 model. Each sample was characterized using eight independent variables (hydraulic retention time (HRT), dissolved oxygen (DO), pH, temperature (T), ammonium-nitrogen (NH4-N), nitrate (NO3-), nitrite (NO2-), ortho-phosphate (OP), and two dependent variable (total nitrogen (TN) and total phosphorus (TP)). The correlation coefficients between the neural network estimates and field measurements were as high as 0.9463 and 0.9161 for TN and TP, respectively. The results indicated that the adopted Levenberg-Marquardt back-propagation algorithm yields satisfactory estimates with acceptably low MSE values. Besides, the support matrix may play an important role in the system. The constructed wetland planted with P. australis and with LECA as a support matrix may be a good option to encourage and promote the prevention of environmental pollution.
Description: Bu çalışma, Bursa Uludağ Üniversitesi Fen Bilimleri Enstitüsü Ayşe Elmacı'in danışmanlığında Nihan Özengin tarafından yazılan "Farmasötik ürünlerinin sulak alan sisteminde arıtılabilirliğinin araştırılması" adlı doktora tezine dayanılarak hazırlanmıştır.
URI: https://doi.org/10.15666/aeer/1404_305324
https://www.aloki.hu/pdf/1404_305324.pdf
http://hdl.handle.net/11452/31396
ISSN: 1589-1623
1785-0037
Appears in Collections:Scopus
Web of Science

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