Optimization and Application Research of Wavelet Neural Network

Guihua Li, Teng Huang, Minwei Jiang, Ronghua Yue
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引用次数: 2

Abstract

In allusion to the problems that the conventional wavelet neural network has disadvantages of training slowly, convergence to the local minimum easily and poor approximation performance, two aspects including initial parameters selection and network training methods were selected to be optimized after analyzing its approximation performance. A kind of self-adaptive method to get the number of hidden layer nodes was put forward. And the WNN model based on SCG optimization algorithm was constructed, combining with SCG algorithm and the method of setting the initial parameters based on self-correlation. The model has been used to predict the settlement of high-rise building foundation under complicated geological conditions, and the results showed that the model not only solved the problems of approximation performance very well, but also is better than both of the BP neural network and the conventional WNN based on BP algorithm.
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小波神经网络的优化与应用研究
针对传统小波神经网络存在训练慢、容易收敛到局部极小值、逼近性能差等缺点,在分析其逼近性能后,选择初始参数选择和网络训练方法两个方面进行优化。提出了一种自适应获取隐层节点数的方法。结合SCG算法和基于自相关的初始参数设置方法,构建了基于SCG优化算法的小波神经网络模型。将该模型应用于复杂地质条件下的高层建筑地基沉降预测,结果表明,该模型不仅很好地解决了近似性能问题,而且优于BP神经网络和基于BP算法的传统小波神经网络。
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