首页> 外文会议>Fuzzy Systems, 2003. FUZZ '03. The 12th IEEE International Conference on >Modelling of river discharges using neural networks derived from support vector regression
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Modelling of river discharges using neural networks derived from support vector regression

机译:使用从支持向量回归中得出的神经网络对河流流量进行建模

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Neural networks are often used to model complex and nonlinear systems, as they can approximate nonlinear systems with arbitrary accuracy and can be trained from data. Amongst the neural networks, Associative Memory Networks (AMNs) are often used, since they are less computation intensive, and yet good generalization results can be obtained. However, this can only be achieved if the structure of the AMNs is suitably chosen. An approach to choose the structure of the AMNs is to use the Support Vectors (SVs) obtained from the Support Vector Machines. The SVs are obtained from a constrained optimization for a given data set and an error bound. For convenience, this class of AMNs is referred to as the Support Vector Neural Networks (SVNNs). In this paper, the modelling of river discharges with rainfall as input using the SVNN is presented, from which the nonlinear dynamic relationship between rainfall and river discharges is obtained. The prediction of river discharges from the SVNN can give early warning of severe river discharges when there are heavy rainfalls.
机译:神经网络通常用于建模复杂的非线性系统,因为它们可以以任意精度近似非线性系统,并且可以从数据中进行训练。在神经网络中,经常使用联想存储网络(Associative Memory Networks,AMN),因为它们的计算强度较小,但仍可获得良好的泛化结果。然而,这只能当AMNS的结构适当选择来实现。选择AMN的结构的一种方法是使用从支持向量机获得的支持向量(SV)。 SV是从针对给定数据集和错误界限的约束优化中获得的。为了方便起见,此类AMN称为支持向量神经网络(SVNN)。本文利用SVNN对以降雨为输入的河流流量进行建模,得到了降雨与河流流量之间的非线性动态关系。 SVNN对河流流量的预测可以在出现强降雨时对严重的河流流量提供预警。

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