人工神经网络建模,以确定去除废水中污染物的最佳吸附能力

R. F. Olanrewaju, Rehab Mariam, Abdulkadir Adekunle Ahmed
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引用次数: 2

摘要

作为污染源的废水的增加与气候变化一样,是当前最紧迫的环境问题。快速发展的工业化和城市化,不适当的卫生处理和生活污水是造成这种污染的原因。这些问题对公共卫生和动物生态系统构成潜在风险和危害。同时,废水处理过程涉及物理和化学过程链,由于人为因素、原水水质的变化以及所用原料的化学/物理特性等因素,容易产生误差。提出了一种基于人工神经网络的污水最优吸附量智能预测方法,以减小百分比误差,获得最优处理效率。主要重点是确定影响吸附能力的操作参数。将这些参数作为输入因素,对所提出的系统进行训练和测试,以获得去除污染物的最佳吸附能力。对该方法在实际数据上的评价和验证取决于平均绝对误差(MAE)、均方误差(MSE)、均方根误差(RMSE)、归一化均方误差(NMSE)和效率相关性。实验结果与人工神经网络的相关性为0.99881 / 100000,表明人工神经网络是完美匹配的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling of ANN to determine optimum adsorption capacity for removal of pollutants in wastewater
The rise in wastewater as a source of pollution rank equal to climate change as the most urgent environmental issues currently. The rapidly growing industrialization and urbanization, improper sanitary disposal and household wastewater has contributed to this pollution. Such concerns pose potential risks and hazards towards the public health and animal ecosystems. Meanwhile, the wastewater treatment process involves both physical and chemical process chain which is susceptible to error due to the human factor, variation in the quality of raw water as well as chemical/physical characteristics of such raw materials used. An intelligent method for predicting the optimal adsorption capacity for removal of pollutants in wastewater based on ANN is proposed to reduce the percentage error and obtain optimal treatment efficiency. The primary focus is to identify the operating parameters which affect adsorption capacity. Using the parameters as input factors, the proposed system is trained and tested to obtain an optimal adsorption capacity to remove pollutants. Evaluation and validation of the proposed method on real data depend on the mean absolute error (MAE), mean square error (MSE), root mean square error(RMSE), normalized mean square error(NMSE) and correlation of efficiency. The correlation between the experimental and ANN result is 0.99881 of 1.00000 which indicates that ANN is a perfect match.
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