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Adaptive identifier for uncertain complex-valued discrete-time nonlinear systems based on recurrent neural networks

机译:基于递归神经网络的不确定复数值离散时间非线性系统的自适应标识符

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摘要

Recently, the study of dynamic systems and signals in the frequency domain motivates the emergence of new tools. In particular, electrophysiological and communications signals in the complex domain can be analyzed but hardly, they can be modeled. This problem promotes an attractive field of researching in system theory. As a consequence, adaptive algorithms like neural networks are interesting tools to deal with the identification problem of this kind of systems. In this study, a new learning process for recurrent neural network applied on complex-valued discrete-time nonlinear systems is proposed. The Lyapunov stability framework is applied to obtain the corresponding learning laws by means of the so-called Lyapunov control functions. The region where the identification error converges is defined by the power of uncertainties and perturbations that affects the nonlinear discrete-time complex system. This zone is obtained as an alternative result of the same Lyapunov analysis. An off-line training algorithm is derived in order to reduce the size of the convergence zone. The training is executed using a set of some off-line measurements coming from the uncertain system. Numerical results are developed to prove the efficiency of the methodology proposed in this study. A first example is oriented to identify the dynamics of a nonlinear discrete time complex-valued system and the second one to model the dynamics of an electrophysiological signal separated in magnitude and phase.
机译:最近,对频域中的动态系统和信号的研究推动了新工具的出现。特别是,可以分析复杂域中的电生理和通信信号,但很难对其进行建模。这个问题促进了系统理论研究的一个有吸引力的领域。结果,像神经网络这样的自适应算法是解决这类系统识别问题的有趣工具。在这项研究中,提出了一种新的递归神经网络学习方法,该方法适用于复数值离散时间非线性系统。利用李雅普诺夫稳定性框架,通过所谓的李雅普诺夫控制函数获得相应的学习规律。识别误差收敛的区域由影响非线性离散时间复杂系统的不确定性和扰动的能力定义。该区域是同一Lyapunov分析的替代结果。为了减小收敛区域的大小,导出了离线训练算法。使用来自不确定系统的一些离线测量值来执行训练。数值结果证明了本研究方法的有效性。第一个示例旨在识别非线性离散时间复值系统的动力学,第二个示例对在幅度和相位上分离的电生理信号的动力学建模。

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