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Reservoir Inflow Modeling Using Temporal Neural Networks with Forgetting Factor Approach

机译:基于时间神经网络的遗忘因子法模拟储层入流

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In this paper, a recursive training procedure with forgetting factor is proposed for on-line calibration of temporal neural networks. The forgetting factor discounts old measurements through an on-line model calibration. The forgetting factor approach enables the recursive algorithm to reduce the effect of the older error data by multiplying the error data by a discounting factor. The proposed procedure is used to calibrate a temporal neural network for reservoir inflow modeling. The mean monthly inflow of the Karoon-III reservoir dam in the south-western part of Iran is used to test the performance of the proposed approach. An autoregressive moving average (ARMA) model is also applied to the same data. The temporal neural network, which is trained with the proposed approach, has shown a significant improvement in the forecast accuracy in comparison with the network trained by the conventional method. It is also demonstrated that the neural network trained with forgetting factor results in better forecasts compared to the statistical ARMA model, which has been calibrated through this approach.
机译:本文提出了一种具有遗忘因子的递归训练程序,用于时间神经网络的在线校准。遗忘因子通过在线模型校准来折旧测量。遗忘因子方法使递归算法可以通过将误差数据乘以折现因子来减少较旧的误差数据的影响。所提出的程序用于校准时间神经网络以进行储层流入建模。伊朗西南部的Karoon-III水库大坝的平均每月流入量用于测试该方法的性能。自回归移动平均值(ARMA)模型也适用于相同数据。与通过传统方法训练的网络相比,使用所提出的方法训练的时间神经网络已显示出预测准确性的显着提高。还表明,与统计ARMA模型相比,使用遗忘因子训练的神经网络可提供更好的预测,而ARMA统计模型已通过此方法进行了校准。

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