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Prediction of Ground Water Levels in the Uplands of a Tropical Coastal Riparian Wetland using Artificial Neural Networks

机译:利用人工神经网络预测热带沿海河岸湿地高地的地下水位

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摘要

Artificial Neural Networks (ANNs) have been found to be a robust tool to model many non-linear hydrological processes. The present study aims at evaluating the performance of ANN in simulating and predicting ground water levels in the uplands of a tropical coastal riparian wetland. The study involves comparison of two network architectures, Feed Forward Neural Network (FFNN) and Recurrent Neural Network (RNN) trained under five algorithms namely Levenberg Marquardt algorithm, Resilient Back propagation algorithm, BFGS Quasi Newton algorithm, Scaled Conjugate Gradient algorithm, and Fletcher Reeves Conjugate Gradient algorithm by simulating the water levels in a well in the study area. The study is analyzed in two cases-one with four inputs to the networks and two with eight inputs to the networks. The two networks-five algorithms in both the cases are compared to determine the best performing combination that could simulate and predict the process satisfactorily. Ad Hoc (Trial and Error) method is followed in optimizing network structure in all cases. On the whole, it is noticed from the results that the Artificial Neural Networks have simulated and predicted the water levels in the well with fair accuracy. This is evident from low values of Normalized Root Mean Square Error and Relative Root Mean Square Error and high values of Nash-Sutcliffe Efficiency Index and Correlation Coefficient (which are taken as the performance measures to calibrate the networks) calculated after the analysis. On comparison of ground water levels predicted with those at the observation well, FFNN trained with Fletcher Reeves Conjugate Gradient algorithm taken four inputs has outperformed all other combinations.
机译:人工神经网络(ANN)已被发现是对许多非线性水文过程进行建模的强大工具。本研究旨在评估人工神经网络在模拟和预测热带沿海河岸湿地高地地下水位方面的性能。该研究涉及两种网络架构的比较,前馈神经网络(FFNN)和递归神经网络(RNN)受五种算法训练,这些算法分别是Levenberg Marquardt算法,弹性反向传播算法,BFGS Quasi Newton算法,可缩放共轭梯度算法和Fletcher Reeves通过模拟研究区域中一口井中的水位,采用共轭梯度算法。在两种情况下对研究进行了分析:一种是对网络的四个输入,另外两个对网络的八个输入。比较两种情况下的两种网络五种算法,以确定可以令人满意地模拟和预测过程的最佳性能组合。在所有情况下,都采用Ad Hoc(尝试和错误)方法来优化网络结构。总体而言,从结果中可以看出,人工神经网络已经以合理的精度模拟并预测了井中的水位。从分析后计算出的标准化均方根误差和相对均方根误差的低值以及Nash-Sutcliffe效率指数和相关系数(用作校准网络的性能指标)的高值可以明显看出这一点。在将预测的地下水位与观测井的地下水位进行比较后,采用Fletcher Reeves共轭梯度算法训练的FFNN的四个输入优于所有其他组合。

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