首页> 外文期刊>Journal of applied mathematics >Multi-Innovation Stochastic Gradient Identification Algorithm for Hammerstein Controlled Autoregressive Autoregressive Systems Based on the Key Term Separation Principle and on the Model Decomposition
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Multi-Innovation Stochastic Gradient Identification Algorithm for Hammerstein Controlled Autoregressive Autoregressive Systems Based on the Key Term Separation Principle and on the Model Decomposition

机译:基于关键项分离原理和模型分解的Hammerstein控制自回归自回归系统的多创新随机梯度识别算法

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An input nonlinear system is decomposed into two subsystems, one including the parameters of the system model and the other including the parameters of the noise model, and a multi-innovation stochastic gradient algorithm is presented for Hammerstein controlled autoregressive autoregressive (H-CARAR) systems based on the key term separation principle and on the model decomposition, in order to improve the convergencespeed of the stochastic gradient algorithm. The key term separation principle can simplify the identification model of the input nonlinear system, and the decomposition technique can enhance computational efficiencies of identification algorithms. The simulation results show that the proposed algorithm is effective for estimating the parameters of IN-CARAR systems.
机译:将输入非线性系统分解为两个子系统,一个包含系统模型的参数,另一个包含噪声模型的参数,并针对Hammerstein控制的自回归自回归(H-CARAR)系统提出了一种多创新随机梯度算法。基于关键词分离原理和模型分解,以提高随机梯度算法的收敛速度。关键词分离原理可以简化输入非线性系统的辨识模型,分解技术可以提高辨识算法的计算效率。仿真结果表明,该算法对于估计IN-CARAR系统的参数是有效的。

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