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首页> 外文期刊>IEEE Transactions on Information Theory >Optimality of CUSUM Rule Approximations in Change-Point Detection Problems: Application to Nonlinear State–Space Systems
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Optimality of CUSUM Rule Approximations in Change-Point Detection Problems: Application to Nonlinear State–Space Systems

机译:变更点检测问题中CUSUM规则逼近的最优性:在非线性状态空间系统中的应用

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The well-known cumulative sum (CUSUM) sequential rule for abrupt model change detection in stochastic dynamic systems relies on the knowledge of the probability density functions of the system output variables conditional on their past values and on the system functioning mode at each time step. This paper shows how to build an asymptotically optimal detection rule under the common average run length (ARL) constraint when these densities are not available but can be consistently estimated. This is the case for nonlinear state-space systems observed through output variables: for such systems, a new class of particle filters based on convolution kernels allows to get consistent estimates of the conditional densities, leading to an optimal CUSUM-like filter detection rule (FDR).
机译:随机动态系统中突变模型更改检测的众所周知的累积总和(CUSUM)顺序规则取决于对系统输出变量的概率密度函数的了解,该函数取决于变量的过去值以及每个时间步长的系统功能模式。本文展示了当这些密度不可用但可以一致地估计时,如何在公共平均游程长度(ARL)约束下建立渐近最优检测规则。通过输出变量观察到的非线性状态空间系统就是这种情况:对于此类系统,基于卷积核的新型粒子滤波器可以对条件密度进行一致的估计,从而产生类似于CUSUM的最优滤波器检测规则( FDR)。

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