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Sliding mode state filtering and parameter estimation for stochastic linear systems

机译:随机线性系统的滑模状态滤波和参数估计

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This paper presents the sliding mode mean-square and mean-module state filtering and parameter identification problems for linear stochastic systems with unknown parameters over linear observations, where unknown parameters are considered Wiener processes. The original problems are reduced to the sliding mode mean-square and mean-module filtering problems for an extended state vector that incorporates parameters as additional states. The obtained sliding mode filters for the extended state vector also serve as the optimal identifiers for the unknown parameters. Performance of the designed sliding mode mean-square and mean-module state filters and parameter identifiers are verified for both, stable and unstable, linear uncertain systems.
机译:本文介绍了线性观察中未知参数的线性随机系统的滑动模式均方和平均模块状态滤波和参数识别问题,其中未知参数被认为是维纳过程。原始问题减少到滑动模式均方和平均模块过滤问题,用于将参数作为附加状态结合在一起。所获得的扩展状态矢量的滑动模式滤波器也用作未知参数的最佳标识符。设计的滑模平均和平均模块状态滤波器和参数标识符的性能对于两者,稳定和不稳定的线性不确定系统验证。

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