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Nonlinear system identification using constellation based multiple model adaptive estimators

机译:基于星座的多模型自适应估计器的非线性系统识别

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This paper describes the application of the constellation based multiple model adaptive estimation (CBMMAE) algorithm to the identification and parameter estimation of nonlinear systems. The method was successfully applied to the identification of linear systems both stationary and nonstationary, being able to fine tune its parameters. The method starts by establishing a minimum set of models that are geometrically arranged in the space spanned by the unknown parameters, and adopts a strategy to adaptively update the constellation models in the parameter space in order to find the model resembling the system under identification. By downscaling the models parameters the constellation is shrunk, reducing the uncertainty of the parameters estimation. Simulations are presented to exhibit the application of the framework and the performance of the algorithm to the identification and parameters estimation of nonlinear systems.
机译:本文介绍了基于星座图的多模型自适应估计(CBMMAE)算法在非线性系统识别和参数估计中的应用。该方法已成功应用于线性系统的平稳和非平稳辨识,能够对其参数进行微调。该方法首先建立在几何形状上排列在未知参数跨越的空间中的最小模型集,然后采用一种策略来自适应更新参数空间中的星座模型,以便找到与被识别系统相似的模型。通过缩小模型参数的比例,星座图得以缩小,从而减少了参数估计的不确定性。进行了仿真,以展示该框架的应用以及该算法在非线性系统识别和参数估计中的性能。

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