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Mean-square joint state and parameter estimation for uncertain nonlinear polynomial stochastic systems

机译:不确定非线性多项式随机系统的均方联合状态和参数估计

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This paper presents the mean-square joint state filtering and parameter identification problem for uncertain nonlinear polynomial stochastic systems with unknown parameters in the state equation over nonlinear polynomial observations, where the unknown parameters are considered Wiener processes. The original problem is reduced to the filtering problem for an extended state vector that incorporates parameters as additional states. The obtained mean-square filter for the extended state vector also serves as the mean-square identifier for the unknown parameters. Performance of the designed mean-square state filter and parameter identifier is verified for both, positive and negative, parameter values.
机译:本文通过非线性多项式观测,提出了状态方程中参数未知的不确定非线性多项式随机系统的均方联合状态滤波和参数辨识问题。最初的问题被简化为扩展状态向量的滤波问题,该状态向量将参数作为附加状态。获得的扩展状态向量的均方滤波器还用作未知参数的均方标识符。对正和负参数值都验证了设计的均方状态滤波器和参数标识符的性能。

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