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首页> 外文期刊>Neural Computing & Applications >A comprehensive survey on functional link neural networks and an adaptive PSO–BP learning for CFLNN
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A comprehensive survey on functional link neural networks and an adaptive PSO–BP learning for CFLNN

机译:功能链接神经网络的综合调查和CFLNN的自适应PSO-BP学习

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摘要

Functional link neural network (FLNN) is a class of higher order neural networks (HONs) and have gained extensive popularity in recent years. FLNN have been successfully used in many applications such as system identification, channel equalization, short-term electric-load forecasting, and some of the tasks of data mining. The goals of this paper are to: (1) provide readers who are novice to this area with a basis of understanding FLNN and a comprehensive survey, while offering specialists an updated picture of the depth and breadth of the theory and applications; (2) present a new hybrid learning scheme for Chebyshev functional link neural network (CFLNN); and (3) suggest possible remedies and guidelines for practical applications in data mining. We then validate the proposed learning scheme for CFLNN in classification by an extensive simulation study. Comprehensive performance comparisons with a number of existing methods are presented.
机译:功能链接神经网络(FLNN)是一类高阶神经网络(HON),并且近年来获得了广泛的普及。 FLNN已成功用于许多应用中,例如系统识别,通道均衡,短期电力负荷预测以及一些数据挖掘任务。本文的目的是:(1)为新手读者提供了解FLNN和全面调查的基础,同时为专家提供有关理论和应用的深度和广度的最新图片; (2)提出了一种新的Chebyshev功能链接神经网络(CFLNN)的混合学习方案; (3)为数据挖掘的实际应用提出可能的补救措施和指南。然后,我们通过广泛的模拟研究验证了分类中CFLNN的建议学习方案。提出了与许多现有方法的综合性能比较。

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