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Artificial neural network model as a potential alternative for groundwater halogenated hydrocarbon pollution forecasting

机译:人工神经网络模型可作为地下水卤代烃污染预测的潜在替代方法

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The paper evaluates the prospect of artificial neural network (ANN) simulation over mathematical modeling in estimating volatile organic compounds pollutants in groundwater. Momentum-Adaptive Back-Propagation (MABP) ANN model with quick propagation as training algorithm has been used to forecast halogenated hydrocarbons pollution by contrasting conventional ions. The accuracy, generalization ability and reliability of the model are verified by laboratory data. This model is trained with 26 samples of laboratory data and made prediction on dichloromethane of another 20 samples which can be used to represent halogenated hydrocarbons pollution. The proposed ANN model has surfaced as a simpler and more accurate alternative to the numerical method techniques. ANN can be used as a guide for investigation of groundwater halogenated hydrocarbons pollutions. It further projects a guideline on sampling distribution.
机译:本文评估了在估算地下水中挥发性有机化合物污染物的数学模型上使用人工神经网络(ANN)模拟的前景。具有快速传播的动量自适应反向传播(MABP)ANN模型作为训练算法已被用于通过与常规离子对比来预测卤代烃污染。通过实验室数据验证了模型的准确性,泛化能力和可靠性。用26个实验室数据样本对该模型进行了训练,并对另外20个可用于表示卤代烃污染的样本的二氯甲烷进行了预测。拟议的人工神经网络模型已经浮出水面,成为数值方法技术的一种更简单,更准确的替代方法。人工神经网络可以用作研究地下水卤代烃污染的指南。它还进一步制定了关于抽样分配的准则。

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