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Stochastic sampling algorithms for state estimation of jump Markov linear systems

机译:跳跃马尔可夫线性系统状态估计的随机抽样算法

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摘要

Jump Markov linear systems are linear systems whose parameters evolve with time according to a finite-state Markov chain. Given a set of observations, our aim is to estimate the states of the finite-state Markov chain and the continuous (in space) states of the linear system. The computational cost in computing conditional mean or maximum a posteriori (MAP) state estimates of the Markov chain or the state of the jump Markov linear system grows exponentially in the number of observations. We present three globally convergent algorithms based on stochastic sampling methods for state estimation of jump Markov linear systems. The cost per iteration is linear in the data length. The first proposed algorithm is a data augmentation (DA) scheme that yields conditional mean state estimates. The second proposed scheme is a stochastic annealing (SA) version of DA that computes the joint MAP sequence estimate of the finite and continuous states. Finally, a Metropolis-Hastings DA scheme based on SA is designed to yield the MAP estimate of the finite-state Markov chain. Convergence results of the three above-mentioned stochastic algorithms are obtained. Computer simulations are carried out to evaluate the performances of the proposed algorithms. The problem of estimating a sparse signal developing from a neutron sensor based on a set of noisy data from a neutron sensor and the problem of narrow-band interference suppression in spread spectrum code-division multiple-access (CDMA) systems are considered.
机译:跳跃马尔可夫线性系统是线性系统,其参数根据有限状态马尔可夫链随时间演化。给定一组观察结果,我们的目的是估计有限状态马尔可夫链的状态和线性系统的连续(空间)状态。计算马尔可夫链的条件均值或最大后验(MAP)状态估计或跳跃马尔可夫线性系统的状态的计算成本随着观察次数的增加而呈指数增长。我们提出了基于随机采样方法的三种全局收敛算法,用于跳跃马尔可夫线性系统的状态估计。每次迭代的成本在数据长度上是线性的。首先提出的算法是一种数据增强(DA)方案,可产生条件均值状态估计。第二个提议的方案是DA的随机退火(SA)版本,它计算有限状态和连续状态的联合MAP序列估计。最后,设计了基于SA的Metropolis-Hastings DA方案,以产生有限状态马尔可夫链的MAP估计。得到了上述三种随机算法的收敛结果。进行计算机仿真以评估所提出算法的性能。考虑了基于来自中子传感器的一组噪声数据来估计从中子传感器产生的稀疏信号的问题以及扩频码分多址(CDMA)系统中的窄带干扰抑制的问题。

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