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Optimal finite-horizon sensor selection for Boolean Kalman Filter

机译:Boolean Kalman滤波器的最佳有限范围传感器选择

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Partially-observed Boolean dynamical systems (POBDS) are large and complex dynamical systems capable of being monitored through various sensors. However, time, storage, and economical constraints may impede the use of all sensors for estimation purposes. Thus, developing a procedure for selecting a subset of sensors is essential. The optimal minimum mean-square error (MMSE) POBDS state estimator is the Boolean Kalman Filter (BKF) and Smoother (BKS). Naturally, the performance of these estimators strongly depends on the choice of sensors. Given a finite subsets of sensors, for a POBDS with a finite observation space, we introduce the optimal procedure to select the best subset which leads to the smallest expected mean-square error (MSE) of the BKF over a finite horizon. The performance of the proposed sensor selection methodology is demonstrated by numerical experiments with a p53-MDM2 negative-feedback loop gene regulatory network observed through Bernoulli noise.
机译:部分观察到的布尔动力系统(POBDS)是具有能够通过各种传感器监测的大而复杂的动态系统。然而,时间,储存和经济限制可能妨碍所有传感器的使用以用于估计目的。因此,开发用于选择传感器子集的过程是必不可少的。最佳的最低均方误差(MMSE)POBDS状态估计器是布尔卡尔曼滤波器(BKF)和更顺畅(BKS)。当然,这些估算器的性能强烈取决于传感器的选择。考虑到有限的传感器子集,对于具有有限观测空间的POBD,我们介绍了最佳过程,以选择最佳子集,这导致BKF的最小预期平均误差(MSE)在有限范围内。通过伯努利噪声观察到的P53-MDM2负反馈环基因调节网络的数值实验证明了所提出的传感器选择方法的性能。

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