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Analysis of organic pollutant and coliform in Thamiraparani River with artificial neural networks

机译:用人工神经网络分析泰勒帕拉尼河的有机污染物和大肠菌

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Thamiraparani River, flowing continuously for 128km, passes through many villages, towns and Tirunelveli Corporation. It is a perennial river and monsoon based catchment, where drainage water and night soil pollutants are mixed and the pollutants from Textile and Paper industries are drained to this region. These are the main sources of pollutants of ThamiraparaniRiver. Since long, Thamiraparani Riveris a main source of water supply to many towns which include Tirunelveli Corporation. Rapid urbanization and industrialization are the significant issues in environmental degradation especially in the quality of both surface and ground water quality. The fundamental water quality factors are, natural contamination indicated by Biological Oxygen Demand (BOD) and pathogens confirmed by coliform. The idea of the study is to predict the influences of BOD and Fecal coliform in Total coliform by using Neural Network. Water quality dataof Thamiraparani River for 12 years were collected from Central Pollution Control Board (CPCB), for six different locations such as Papanasam, Cheranmahadevi, Tirunelveli, Murappanadu, Ambasamuthram and Arumuganeri. In those samples, BOD and Fecal coliform biological parameters are used as independent variables and Total coliform is used as dependent variable. The multilayer perceptron neural network is designed to predict the Total coliform with BOD and fecal coliform as input variables. Study revealed that the association between the independent and dependent variables are good and R~2value of the model was 0.846. The investigation recommends that fecal coliform and Total coliform versus BOD can be applied as contamination indicator for further research of water quality, Since BOD levels mostly mirror the level of natural contamination related tofecal sources in this waterway. The proposed ANN model uses BOD and fecal coliform to predict the future Total coliform values, which assists in easy predictability of water contaminants.
机译:Thamiraparani River,连续流动128公里,通过许多村庄,城镇和Tirunelveli Corporation。它是一条多年生河流和季风的集水区,其中排水和夜土壤污染物混合,纺织品和造纸工业的污染物排放到该地区。这些是Thamiraparaniriver污染物的主要来源。自从长时间以来,Thamiraparani Riveris是许多包括Tirunelveli Corporation的许多城镇供水的主要来源。快速的城市化和产业化是环境退化中的重要问题,特别是在表面和地面水质的质量。基本水质因素是通过生物氧需求(BOD)和Color类证实的病原体指示的天然污染。该研究的想法是通过使用神经网络预测总大肠杆菌中BOD和FECAL大肠菌群的影响。从中央污染控制委员会(CPCB)收集了Thamiraparani River的水质Dataof,六个不同的地方,如Papanasam,Cheranmahadevi,Tirunelveli,Murpapanadu,Ambasamuthram和Arumuganeri等六个不同的地点。在这些样品中,BOD和粪便大肠杆菌生物学参数用作独立变量,并且总大肠菌体用作依赖变量。多层的Perceptron神经网络被设计成预测总大肠杆菌和粪便大小,作为输入变量。研究表明,独立和依赖变量之间的关联是良好的,型号的R〜2值为0.846。该调查建议粪便大肠菌群和总大肠杆菌与BOD可以应用于水质进一步研究的污染指标,因为BOD水平大部分镜像在该水道中的自然污染相关的豆腐源水平。所提出的ANN模型使用BOD和FECAL COLIMS预测未来的总大肠杆菌值,这有助于轻松预测水污染物。

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