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ON STABILITY OF A CLASS OF FILTERS FOR NONLINEAR STOCHASTIC SYSTEMS

机译:关于非线性随机系统一类过滤器的稳定性

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This article develops a comprehensive framework for stability analysis of a broad class of commonly used continuous- and discrete-time filters for stochastic dynamic systems with nonlinear state dynamics and linear measurements under certain strong assumptions. The class of filters encompasses the extended and unscented Kalman filters and most other Gaussian assumed density filters and their numerical integration approximations. The stability results are in the form of time-uniform mean square bounds and exponential concentration inequalities for the filtering error. In contrast to existing results, it is not always necessary for the model to be exponentially stable or fully observed. We review three classes of models that can be rigorously shown to satisfy the stringent assumptions of the stability theorems. Numerical experiments using synthetic data validate the derived error bounds.
机译:本文为一类具有非线性状态动态系统的广泛使用连续和离散 - 和离散时间过滤器的稳定性分析,为具有非线性状态动态和线性测量的线性测量的稳定性分析奠定了框架。 筛选器的类包括扩展和无名的卡尔曼滤波器以及大多数其他高斯假定的密度过滤器及其数值积分近似。 稳定性结果是时间均匀均匀平方界和过滤误差的指数浓度不等式的形式。 与现有结果相比,模型并不总是需要衡量稳定或完全观察到的。 我们审查了三类模型,可以严格显示,以满足稳定定理的严格假设。 使用合成数据的数值实验验证派生错误界限。

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