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Exact Bayesian and particle filtering of stochastic hybrid systems

机译:随机混合系统的精确贝叶斯和粒子滤波

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摘要

The standard way of applying particle filtering to stochastic hybrid systems is to make use of hybrid particles, where each particle consists of two components, one assuming Euclidean values, and the other assuming discrete mode values. This paper develops a novel particle filter (PF) for a discrete-time stochastic hybrid system. The novelty lies in the use of the exact Bayesian equations for the conditional mode probabilities given the observations. Therefore particles are needed for the Euclidean valued state component only. The novel particle filter is referred to as the interacting multiple model (IMM) particle filter (IMMPF) because it incorporates a filter step which is of the same form as the interaction step of the IMM algorithm. Through Monte Carlo simulations, it is shown that the IMMPF has significant advantage over the standard PF, in particular for situations where conditional switching rate or conditional mode probabilities have small values
机译:将粒子滤波应用于随机混合系统的标准方法是利用混合粒子,其中每个粒子都由两个分量组成,一个分量假定为欧几里得值,另一个假定离散模式值。本文为离散时间随机混合系统开发了一种新型的粒子滤波器(PF)。新颖之处在于,给定观测值,将精确的贝叶斯方程用于条件模式概率。因此,仅对于欧几里得值状态分量需要粒子。新颖的粒子过滤器被称为交互多模型(IMM)粒子过滤器(IMMPF),因为它包含了与IMM算法的交互步骤具有相同形式的过滤步骤。通过蒙特卡洛模拟,表明IMMPF相对于标准PF具有明显的优势,特别是在条件转换率或条件模式概率值较小的情况下

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