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Experimental evaluation of artificial neural network for predicting drainage water and groundwater salinity at various drain depths and spacing

机译:人工神经网络预测各种排水深度和间距的排水和地下水盐度的实验评价

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摘要

Drainage design parameters of drain depth and spacing are the pivotal factors affect the drain water quality by radial flow of underground water. In this study, artificial neural network modeling has been employed with Levenberg-Marquardt learning algorithm followed by Sigmoid Axon transfer function to anticipate the temporal changes in shallow groundwater and drain water salinities at various depths and spaces of drain installation. Calibration and validation of the model results were carried out based on data obtained from experimental model with 1.8m long, 1m wide, and 1.2m high. In the model, drains were installed at 20, 40, and 60cm depths and 60, 90, and 180cm spaces. The values of error indices of RMSE and SE as well as R-2 between measured and simulated shallow groundwater salinities were 5.27dS/m, 0.12, and 0.96, respectively. These indexes for drain water salinity were obtained 0.72dS/m, 0.096, and 0.99, respectively. The key results revealed that artificial neural network methodology has a reasonable accuracy on simulating temporal shallow groundwater and drain water salinities in different drain depth and drain spacing.
机译:排水深度和间距的排水设计参数是枢转因子通过地下水的径向流动影响水质。在这项研究中,人工神经网络建模已经采用Levenberg-Marquardt学习算法,然后采用Sigmoid轴突传递函数,以预测浅地下水的时间变化,并在排水装置的各种深度和空间中排出水盐度。模型结果的校准和验证是根据从1.8米长,宽的实验模型获得的数据进行的数据进行,1.2米高。在该模型中,漏极安装在20,40和60cm深度和60,90和180cm空间。 RMSE和SE的误差指数以及测量和模拟浅层地下水盐度之间的R-2分别为5.27ds / m,0.12和0.96。将这些用于排出水盐度的这些指标分别得到0.72Ds / m,0.096和0.99。关键结果表明,人工神经网络方法在模拟颞浅地下水中具有合理的准确性,并在不同的排水深度和排水间距中排出水盐水。

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