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首页> 外文期刊>Journal of Hydrology >Forecasting solute breakthrough curves through the unsaturated zone using artificial neural networks
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Forecasting solute breakthrough curves through the unsaturated zone using artificial neural networks

机译:使用人工神经网络预测穿过非饱和区的溶质突破曲线

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Effective groundwater management requires precise forecasting of the amount of contaminants intruding into groundwater from the surface. In this study, solute breakthrough curves throughout the unsaturated zone were predicted using artificial neural networks (ANNs), through numerical tests and through laboratory experiments. In the numerical tests, the applicability of the ANN model to the prediction of breakthrough curves was evaluated using synthetic data generated by a groundwater flow and transport model, in a variably saturated media, HYDRUS-2D. The use of two ANNs, one for solute arrival times and the other for solute mass breakthroughs after the solute arrival time, was suggested in order to reduce the prediction error. The results showed that the network building process was essential in ANN model applications. The best ANN model gave a correlation coefficient value between target and output values of over 0.98. The sensitivity analysis of data forms for the network training demonstrated that regular breakthrough curves that contain a peak value can train the ANN model effectively. Then, the ANN model was verified using laboratory data obtained by tracer infiltration tests in a sand column. The overall results demonstrate that the ANN model can be an effective method for forecasting solute breakthrough curves through the unsaturated zone when hydraulic data are available. (c) 2006 Elsevier B.V. All rights reserved.
机译:有效的地下水管理要求精确预测从地表侵入地下水的污染物数量。在这项研究中,通过人工神经网络(ANN),数值测试和实验室实验预测了整个非饱和区的溶质突破曲线。在数值测试中,使用由地下水流和运移模型生成的合成数据,在可变饱和介质HYDRUS-2D中,评估了ANN模型对突破曲线预测的适用性。为了减少预测误差,建议使用两种人工神经网络,一种用于溶质到达时间,另一种用于溶质到达时间后的溶质质量突破。结果表明,网络构建过程对于ANN模型应用至关重要。最佳的ANN模型给出的目标值与输出值之间的相关系数值超过0.98。网络训练数据形式的敏感性分析表明,包含峰值的规则突破曲线可以有效地训练ANN模型。然后,使用在沙柱中通过示踪剂渗透测试获得的实验室数据验证了ANN模型。总体结果表明,当获得水力数据时,ANN模型可以作为预测穿过非饱和区的溶质突破曲线的有效方法。 (c)2006 Elsevier B.V.保留所有权利。

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