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Neural network simulation of spring flow in karst environments

机译:岩溶环境下弹簧流动的神经网络模拟

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Daily discharges of two springs lying in a karstic environment were simulated for a period of 2.5 years with the use of a multi-layer perceptron back-propagation neural network. Two models were developed for the springs, one relying on the original data and another where the missing discharge values were supplemented by assuming linear relationships during base flow conditions. For both springs the mean square error of the two models did not differ significantly, with an improvement exhibited at the extremes, during the network's training phase, by the model that utilized the extended data set, the results of which are reported here. The time lag between precipitation and spring discharge differed significantly for the two springs indicating that in karstic environments hydraulic behavior is dominated, even within a few hundred meters, by local conditions. Optimum training results were attained with a Levenberg-Marquardt algorithm resulting in a network architecture consisting of two input layer neurons, four hidden layer neurons, and one output layer neuron, the spring's discharge. The neural network's predictions captured the behavior for both springs and followed very closely the discontinuities in the discharge time series. Under-/over-estimation of observed discharges for the two springs remained below 3 %, with the exception of a few local maxima where the predicted discharges diverged more strongly from observed values. Inclusion of temperature data did not add to the improvement of predictions.Finally, optimum predictions were attained when past discharge data were added to the input record and discharge differentials rather than direct discharges were calculated resulting in elimination of any local maximum discrepancy between observed and predicted discharge values.
机译:利用多层感知器反向传播神经网络,模拟了处于岩溶环境中的两个弹簧的日排放量,为期2.5年。为弹簧开发了两种模型,一种模型依赖于原始数据,另一种模型通过假设基本流量条件下的线性关系来补充缺失的排放值。对于两个弹簧,两个模型的均方误差没有显着差异,在极端情况下,在网络的训练阶段,利用扩展数据集的模型表现出了改善,其结果在此处报告。对于两个弹簧来说,降水和春季排放之间的时间差显着不同,这表明在岩溶环境中,即使在几百米之内,水力行为也受当地条件的影响。使用Levenberg-Marquardt算法可获得最佳的训练结果,该网络结构由两个输入层神经元,四个隐藏层神经元和一个输出层神经元(弹簧放电)组成。神经网络的预测捕获了两个弹簧的行为,并非常紧密地跟踪了排放时间序列中的不连续性。对两个弹簧的观测流量的低估/过高估算值保持在3%以下,除了一些局部最大值之外,在该局部最大值处,预测的流量与观测值的差异更大。最后,当将过去的排放数据添加到输入记录中并计算出排放差异而不是直接排放时,可以获得最佳的预测结果,从而消除了观测值和预测值之间的任何局部最大差异放电值。

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