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ONLINE IDENTIFICATION OF UNCERTAIN FRACTIONAL-ORDER NONLINEAR SYSTEMS USING A REINFORCED DIFFERENTIAL EVOLUTION OPTIMIZER

机译:增强的微分进化优化器对不确定分数阶非线性系统进行在线辨识

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摘要

Parameter identification as known as a significant issue is investigated in this paper. The research focus on online identifying unknown parameters of uncertain fractional-order chaotic and hyperchaotic systems, which shows great potential in recent applications. Up to now, most of the existing online i-dentification methods only focus on integer-order systems, thus, it's necessary to expand these fundamental results to uncertain fractional-order nonlinear dynamic systems and adopt an effective optimizer to deal with the model uncertainties. Motivated by this consideration, this research introduces an efficient optimizer to offline and online parameter identification of the fractional-order chaotic and hyperchaotic systems through non-Lyapunov way. For problem formulation, a multi-dimensional optimization problem is converted into from the problem of parameter identification, where both systematic parameters and fractional derivative orders are considered as independent unknown parameters to be estimated. The experimental results illustrate that SHADE is significantly superior to the other compared approaches. In this case, online identification is conducted via SHADE, the simulation results further indicate that success-history based adaptive differential evolution (SHADE) algorithm is capable of detecting and determining the variations of parameters in uncertain fractional-order chaotic and hyperchaotic systems, and also is supposed to be a successful and potentially promising method for handling the online identification problems with high efficien-cy and effectiveness.
机译:本文研究了称为重要问题的参数识别。研究集中于在线识别不确定分数阶混沌和超混沌系统的未知参数,这在最近的应用中显示出巨大的潜力。到目前为止,大多数现有的在线i识别方法仅关注整数阶系统,因此,有必要将这些基本结果扩展到不确定的分数阶非线性动力系统,并采用有效的优化器来处理模型的不确定性。基于这种考虑,本研究通过非李雅普诺夫方法为分数阶混沌和超混沌系统的离线和在线参数识别引入了一种有效的优化器。对于问题表述,将多维优化问题从参数识别问题转换为系统参数和分数导数阶数均被视为要估计的独立未知参数的问题。实验结果表明,SHADE明显优于其他比较方法。在这种情况下,通过SHADE进行在线识别,仿真结果进一步表明,基于成功历史的自适应微分进化(SHADE)算法能够检测和确定不确定分数阶混沌和超混沌系统中的参数变化,并且被认为是一种高效高效地处理在线身份识别问题的成功方法,并有望成为有希望的方法。

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