Performance-Specified Moving-Horizon State Estimation With Minimum Risk

Elahe Aghapour, J. Farrell
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引用次数: 4

Abstract

This paper is concerned with the estimation of the state of a linear dynamic system when the measurements may contain outliers. The most common method for outlier detection utilizes the traditional Neyman-Pearson (NP) Kalman filter approach which ignores all residuals greater than a designer specified threshold. When measurements with outliers are used (i.e., missed detections), the estimated state becomes incorrect and the computed state error covariance is too small, yielding an over confidence in the estimator in the incorrect state estimate. When valid measurements are ignored, information is lost, but this is only critical if it causes the performance specification to be violated. In signal rich applications, with a large number of sensor measurements, a smaller subset of measurements than is accepted by the NP approach, could be able to achieve the specified level of performance with lower risk of including an outlier in the set of utilized measurements. In the moving-horizon approach used herein, the number of measurements available for state estimation is affected by both the number of measurements per time step and the number of time steps over which measurements are retained. This moving horizon, performance-specified, risk-averse state estimation approach will be formulated in an optimization setting that selects measurements from within the window, to achieve a specified level of performance while minimizing the incurred risk. Simulation results are included, which demonstrate the application of the technique and its enhanced performance and robustness to outliers relative to traditional methods.
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具有最小风险的性能指定移动视界状态估计
本文研究了当测量值可能包含异常值时线性动态系统的状态估计问题。最常见的异常值检测方法是利用传统的内曼-皮尔逊(NP)卡尔曼滤波方法,该方法忽略所有大于设计人员指定阈值的残差。当使用带有异常值的测量(即,未检测到)时,估计的状态变得不正确,并且计算的状态误差协方差太小,从而在不正确的状态估计中产生对估计器的过度置信度。当有效的度量被忽略时,信息就会丢失,但是只有当它导致违反性能规范时,信息才会丢失。在信号丰富的应用中,有大量的传感器测量,比NP方法所接受的测量更小的测量子集,可以达到指定的性能水平,并且在所利用的测量集中包含异常值的风险更低。在本文使用的移动视界方法中,可用于状态估计的测量数受到每个时间步长的测量数和保留测量值的时间步长的影响。这种移动视界、性能指定、规避风险的状态估计方法将在优化设置中制定,从窗口内选择测量,以达到指定的性能水平,同时将产生的风险降至最低。仿真结果证明了该方法的应用,以及相对于传统方法提高的性能和对异常值的鲁棒性。
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