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Total Dissolved Solids (TDS) Modeling by Artificial Neural Networks in the distribution system of drinking water of Hyderabad city

机译:海德拉巴市饮用水分配系统中的人工神经网络综合溶解固体(TDS)建模

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Demanding public opinion for providing safe drinking water is now an increasing constant pressure on the authorities concerned to prevent the human health from contaminated drinking water. Hence latest techniques are employed to predict the critical parameters like, pH, chlorine, turbidity, TDS, and Electrical conductivity, in the distribution systems. In this study Radial Basis Function RBF model is presented to predict the TDS, one of the important parameters of distribution system of drinking water of Hyderabad city. The mean value of TDS observed at 10 locations is 586.418 mg/l with standard deviation of 5.734. ANN model is trained, tested and validated for the data available from a 3 years study completed on weekly basis. Input and output weights are generated and the Sum of Square Error (SSE) is 0.139088 with faster training time of 0.95300 seconds. 09 Neurons in the hidden layer of the model reveal that the ANNs modeling for predicting the parameters of the drinking water is highly successful; which is the prime object of this study.
机译:要求提供安全饮用水的舆论现在是有关当局的持续持续压力,以防止污染的饮用水中的人类健康。因此,在分配系统中,采用最新技术来预测临界参数,pH,氯,浊度,TDS和电导率。在本研究中,提出了径向基函数RBF模型以预测TDS,是海德拉巴市饮用水分配系统的重要参数之一。在10个位置观察到的TD的平均值为586.418 mg / L,标准偏差为5.734。 ANN模型受过培训,测试和验证为每周完成3年的研究可用的数据。生成输入和输出权重,方形误差(SSE)的总和为0.139088,培训时间快0.95300秒。 09模型隐藏层中的神经元揭示了预测饮用水参数的ANNS建模非常成功;这是本研究的素数。

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