Deterministic Learning and Rapid Dynamical Pattern Recognition of Discrete-Time Systems

Tengfei Liu, Cong Wang, D. Hill
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引用次数: 5

Abstract

Recently, a deterministic learning theory was proposed for identification and rapid pattern recognition of uncertain nonlinear dynamical systems. In this paper, we investigate deterministic learning of discrete-time nonlinear systems. For periodic or recurrent dynamical patterns, the persistent excitation (PE) condition can be satisfied by a regression subvector constructed from the neurons near the sequence. With the satisfaction of the PE condition, it is shown that the internal dynamics of an uncertain discrete-time nonlinear system can be accurately learned along the state sequence. Using the learned knowledge, a rapid pattern recognition mechanism can be implemented, in which synchronous errors are taken as the measure of similarity of the dynamical patterns generated from different systems. Compared with the methods based on signal processing, this approach appears to need less time-domain information for recognition and is more effective for high speed applications. Simulation is included to show the effectiveness of the approach.
离散时间系统的确定性学习与快速动态模式识别
近年来,人们提出了一种确定性学习理论,用于不确定非线性动力系统的识别和快速模式识别。本文主要研究离散非线性系统的确定性学习问题。对于周期性或周期性的动态模式,持续激励(PE)条件可以通过由序列附近的神经元构造的回归子向量来满足。在满足PE条件的情况下,证明了不确定离散非线性系统的内部动力学可以沿状态序列精确学习。利用学习到的知识,可以实现一种快速的模式识别机制,该机制将同步误差作为不同系统生成的动态模式相似度的度量。与基于信号处理的方法相比,该方法需要较少的时域信息进行识别,并且在高速应用中更有效。仿真结果表明了该方法的有效性。
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