基于在线EM算法的混沌动力系统离散映射逼近

W. Yoshida, S. Ishii, M. Sato
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引用次数: 0

摘要

讨论了用归一化高斯网络(NGnet)重建混沌动力学。为了学习混沌动力学的离散映射,采用在线期望最大化算法对NGnet进行训练。我们还研究了我们的方法对两种噪声过程的鲁棒性:系统噪声和观测噪声。结果表明,即使在各种噪声条件下,经过训练的NGnet也能再现混沌吸引子。训练后的NGnet也显示出良好的预测性能。当仅观察到部分动态变量时,训练NGnet学习延迟坐标空间中的离散映射。结果表明,该方法在两种噪声下都能学习到混沌动力学。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Approximating discrete mapping of chaotic dynamical system based on on-line EM algorithm
Discusses the reconstruction of chaotic dynamics by using a normalized Gaussian network (NGnet). The NGnet is trained by an online expectation maximization (EM) algorithm in order to learn the discrete mapping of the chaotic dynamics. We also investigate the robustness of our approach to two kinds of noise processes: system noise and observation noise. It is shown that a trained NGnet is able to reproduce a chaotic attractor, even under various noise conditions. The trained NGnet also shows good prediction performance. When only part of the dynamical variables are observed, the NGnet is trained to learn the discrete mapping in the delay coordinate space. It is shown that the chaotic dynamics is able to be learned with this method under the two kinds of noise.
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