Journal of Water Resource and Protection

Volume 4, Issue 5 (May 2012)

ISSN Print: 1945-3094   ISSN Online: 1945-3108

Google-based Impact Factor: 1.01  Citations  h5-index & Ranking

Performance Simulation of H-TDS Unit of Fajr Industrial Wastewater Treatment Plant Using a Combination of Neural Network and Principal Component Analysis

HTML  Download Download as PDF (Size: 738KB)  PP. 311-317  
DOI: 10.4236/jwarp.2012.45034    4,067 Downloads   6,777 Views  Citations

ABSTRACT

Nowadays, with regard to environmental issues, proper operation of wastewater treatment plants is of particular importance that in the case of inappropriate utilization, they will cause serious problems. Processes that exist in environmental systems and environmental engineers are dealing with them mostly have two major characteristics: they are dependent on many variables; and there are complex relationships between its components which make them very difficult to analyze. Being familiar with characteristics of industrial town effluents from various wastewater treatment units, which have high qualitative and quantitative variations and more uncertainties compared to urban wastewaters, plays very effective role in governing them. In order to achieve a better and efficient control over the operation of an industrial wastewater treatment plant, powerful mathematical tool can be used that is based on recorded data from some basic parameters of wastewater during a period of treatment plant operation. In this study, the multilayer perceptron (MLP) feed forward neural network with a hidden layer and stop training method was used to predict quality parameters of the industrial effluent. Data of this study are related to the Fajr Industrial Wastewater Treatment Plant located in Mahshahr—Iran that qualitative and quantitative characteristics of its units were used for training, calibration and evaluation of the neural model. Also, Principal Component Analysis technique was applied to modify and improve performance of generated models of neural networks. The results of this model showed good accuracy of the model in estimating qualitative pro- file of wastewater. This model facilitates evaluating the performance of each treatment plant units through comparing the results of prediction model with the standard amount of output.

Share and Cite:

Hasanlou, H. , Mehrdadi, N. , Taghi Jafarzadeh, M. and Hasanlou, H. (2012) Performance Simulation of H-TDS Unit of Fajr Industrial Wastewater Treatment Plant Using a Combination of Neural Network and Principal Component Analysis. Journal of Water Resource and Protection, 4, 311-317. doi: 10.4236/jwarp.2012.45034.

Cited by

[1] Estimating the chemical oxygen demand of petrochemical wastewater treatment plants using linear and nonlinear statistical models–A case study
2021
[2] A SURVEY ON WASTEWATER TREATMENT (WWT) ANALYSIS USING VARIOUS TECHNIQUES.
2018
[3] A SURVEY ON WASTEWATER TREATMENT (WWT) ANALYSIS USING VARIOUS TECHNIQUES
2018
[4] بررسی عملکرد و ارائه راهکارهای بهینه سازی سیستم لجن فعال در تصفیه فاضلاب واحد ABS پتروشیمی تبریز‎
2018
[5] PERFORMANCE ASSESSMENT OF BIOLOGICAL TREATMENT OF SEQUENCING BATCH REACTOR USING ARTIFICIAL NEURAL NETWORK TECHNIQUE
2018
[6] Performance evaluation of activated sludge system as pretreatment plant of ABS manufacturing industry
2016
[7] The implementation of data reconciliation for evaluating a full-scale petrochemical wastewater treatment plant
Environmental Science and Pollution Research, 2016
[8] Application of factor analysis in a large‐scale industrial wastewater treatment plant simulation using principal component analysis–artificial neural network hybrid …
Environmental Progress & Sustainable Energy, 2015
[9] به کارگیری روش های آماری برای افزایش دقت مدلسازی تصفیه خانه های فاضلاب صنعتی با استفاده از شبکه های عصبی مصنوعی‎
2015
[10] Patten Classification Based on a Hybrid Neural Network
Journal of Information & Computational Science, 2015
[11] Application of factor analysis in a large‐scale industrial wastewater treatment plant simulation using principal component analysis–artificial neural network hybrid …
Environmental Progress & Sustainable Energy, 2015
[12] Application of Statistical Techniques In Order To Improve Neural Modeling of Industrial Waste Water Treatment Plants
2015
[13] Energy saving opportunity in a Wastewater Treatment Plant
International Journal of Innovation Technology and …, 2014
[14] Energy Saving Opportunity in a Waste Water Treatment Plant
D Sandhu, R Pandey - ijitee.org, 2014
[15] Simulating Industrial Wastewater Treatment Plant by Artificial Neural Network
2014

Copyright © 2024 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.