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An iterative learning approach to identify fractional order KiBaM model

机译:一种识别分数阶KiBaM模型的迭代学习方法

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This paper discusses the parameter and differentiation order identification of continuous fractional order KiBaM models in ARX U+0028 autoregressive model with exogenous inputs U+0029 and OE U+0028 output error model U+0029 forms. The least squares method is applied to the identification of nonlinear and linear parameters, in which the Gr U+00FC nwald-Letnikov definition and short memory principle are applied to compute the fractional order derivatives. An adaptive P-type order learning law is proposed to estimate the differentiation order iteratively and accurately. Particularly, a unique estimation result and a fast convergence speed can be arrived by using the small gain strategy, which is unidirectional and has certain advantages than some state-of-art methods. The proposed strategy can be successfully applied to the nonlinear systems with quasi-linear characteristics. The numerical simulations are shown to validate the concepts.
机译:本文讨论了具有外生输入U + 0029和OE U + 0028输出误差模型U + 0029形式的ARX U + 0028自回归模型中连续分数阶KiBaM模型的参数和微分阶辨识。最小二乘方法用于非线性和线性参数的识别,其中,使用Gr U + 00FC nwald-Letnikov定义和短存储原理来计算分数阶导数。提出了一种自适应P型有序学习定律,可以迭代,准确地估计微分阶数。特别是,通过使用小增益策略可以达到唯一的估计结果和快速的收敛速度,该策略是单向的,并且比某些现有技术方法具有某些优势。所提出的策略可以成功地应用于具有准线性特征的非线性系统。显示了数值模拟以验证概念。

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