Interval state estimation for bounded noise and its applications

Wang Jianhong, R. Ramírez-Mendoza, Zhang Yunfeng
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Abstract

Consider the problem of state estimation in identification and control theory, the traditional Kalman filter method and its modified forms can estimate the unknown state only on the condition of probabilistic distribution on external noise, such as white noise or colored noise. To relax this strict condition on external noise, interval state estimation is proposed to achieve the goal in case of the unknown but bounded noise, due to external noise with unknown but bounded property is more realistic then white noise. Given one state space form with bounded noises and bounded initial state, two intervals are constructed to include the state estimation and output prediction respectively through our own derivations. One easy way to determine the terminate state estimation is to choose the center of midpoint of the constructed interval. The equivalent property between interval state estimation and our previous zonotope state estimation is also described.
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有界噪声的区间状态估计及其应用
考虑到辨识与控制理论中的状态估计问题,传统的卡尔曼滤波方法及其改进形式只能在外部噪声(如白噪声或彩色噪声)的概率分布条件下估计未知状态。为了放宽这种对外部噪声的严格要求,在存在未知但有界噪声的情况下,由于具有未知但有界性质的外部噪声比白噪声更真实,因此提出了区间状态估计来实现这一目标。给定一种具有有界噪声和有界初始状态的状态空间形式,通过我们自己的推导,分别构造了包含状态估计和输出预测的两个区间。确定终止状态估计的一种简便方法是选择构造区间的中点中心。本文还描述了区间状态估计与分区状态估计的等价性。
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