Estimation performance of neural networks

J. L. Crespo, E. Mora, J. Peire
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引用次数: 5

Abstract

In order to test neural network abilities as estimators of engineering value, a network is presented to derive streamflow from precipitation data. Validation tests show good performance, hence increasing confidence in these methods. Monthly mean squared errors remaining after adjustment are presented and compared with those of deterministic methods, since these are other options for the estimation problem. A possible caveat of artificial neural networks (ANN) is that they are very difficult to interpret. Interpretation of the learnt representation in this case is offered by simulating with selected inputs, showing reasonable results and providing some insight in the hydrologic process being modeled. This is a generic possibility for dealing with black-box models. When estimating some system's behavior it is interesting to know whether the qualitative representation is also faithful. In the proposed example, special properties of the flow series with significance in hydrology, such as ranges, are obtained and compared with the sample values, along with other statistical features.<>
神经网络的估计性能
为了检验神经网络作为工程值估计器的能力,提出了一种从降水数据中推导水流的网络。验证测试显示出良好的性能,因此增加了对这些方法的信心。给出了调整后的月均方误差,并与确定性方法的月均方误差进行了比较,因为这些是估计问题的另一种选择。人工神经网络(ANN)的一个可能的警告是,它们非常难以解释。在这种情况下,通过使用选定的输入进行模拟,提供了对学习到的表示的解释,显示了合理的结果,并提供了对正在建模的水文过程的一些见解。这是处理黑盒模型的一般可能性。当估计某些系统的行为时,知道定性表示是否也是忠实的是很有趣的。在所提出的例子中,获得了在水文学中具有重要意义的流量序列的特殊性质,如范围,并与样本值以及其他统计特征进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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