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Online designed of Echo State Network based on Particle Swarm Optimization for system identification

机译:基于粒子群优化的系统识别,在线设计了回声状态网络

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Complexities with existing algorithms have thus far limited supervised training techniques for Recurrent Neural Networks (RNNs) from widespread use. Echo State Network (ESN) presents a novel approach to train RNNs. Certain properties make ESN online learning unsuitable. This paper proposes a modified version of ESN structure for complex nonlinear system online prediction. The Particle Swarm Optimization (PSO) is adopted to online train the output weights of ESN, as against computing it, which greatly improve the modeling accuracy, avoid derivative calculations, and expand the scope of application. The nonlinear system, static function SinC and Mackey-Glass chaos mapping are used to verify the effectiveness of the proposed ESN+PSO approach.
机译:因此,具有现有算法的复杂性远远有限监督培训技术,用于来自广泛使用的经常性神经网络(RNN)。 Echo State Network(ESN)提出了一种培训RNN的新方法。某些属性使ESN在线学习不合适。本文提出了复杂非线性系统在线预测的ESN结构的修改版本。在线列车中采用粒子群优化(PSO)ESN的输出权重,因为计算它,这大大提高了建模精度,避免了衍生计算,并扩大了应用范围。非线性系统,静态功能SINC和Mackey-Glass混沌映射用于验证所提出的ESN + PSO方法的有效性。

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