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Approximate linear minimum variance filters for continuous-discrete state space models: convergence and practical adaptive algorithms

机译:连续离散状态空间模型的近似线性最小方差滤波器:收敛与实用自适应算法

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摘要

In this article, approximate linear minimum variance (LMV) filters for continuous-discrete state space models are introduced. The filters are derived from a wide class of recursive approximations to the predictions for the first two conditional moments of the state equation between each pair of consecutive observations. The convergence of the approximate filters to the exact LMV filter is proved when the error between the predictions and their approximations decreases no matter the time distance between observations. As particular instance, the order-beta local linearization filters are presented and expounded in detail. Practical adaptive algorithms are also provided and their performance in simulation is illustrated with various examples. The proposed filters are intended for the recurrent practical situation where a stochastic dynamical system should be identified from a reduced number of partial and noisy observations distant in time.
机译:在本文中,介绍了用于连续离散状态空间模型的近似线性最小方差(LMV)滤波器。 滤波器源自广泛类别的递归近似,对每对连续观察之间的状态方程的前两个条件矩的预测。 当预测和它们的近似之间的误差无论观察之间的时间距离都减小时,证明了近似滤波器到精确的LMV滤波器的收敛。 如特定情况,详细呈现并阐述了订单-Beta本地线性化滤波器。 还提供了实际的自适应算法,并且它们的仿真性能具有各种示例。 所提出的过滤器适用于经常性的实际情况,其中应从时间和嘈杂的观察数遥远的减少数量的局部和嘈杂的观察中识别出随机动力学系统。

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