Finite Impulse Response Filtering Algorithm with Adaptive Horizon Size Selection and Its Applications

B. Skorohod
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Abstract

It is known, that unlike the Kalman filter (KF) finite impulse response (FIR) filters allow to avoid the divergence and unsatisfactory object tracking connected with temporary perturbations and abrupt object changes. The main challenge is to provide the appropriate choice of a sliding window size for them. In this paper, the new finite impulse response (FIR) filtering algorithm with the adaptive horizon size selection is proposed. The algorithm uses the receding horizon optimal (RHOFIR) filter which receives estimates, an abrupt change detector and an adaptive recurrent mechanism for choosing the window size. Monotonicity and asymptotic properties of the estimation error covariance matrix and the RHOFIR filter gain are established. These results form a solid foundation for justifying the principal possibility to tune the filter gain using them and the developed adaptation mechanism. The proposed algorithm (the ARHOFIR filter) allows reducing the impact of disturbances by varying adaptively the sliding window size. The possibility of this follows from the fact that the window size affects the filter characteristics in different ways. The ARHOFIR filter chooses a large horizon size in the absence of abrupt disturbances and a little during the time intervals of their action. Due to this, it has better transient characteristics compared to the KF and RHOFIR filter at intervals where there is temporary uncertainty and may provide the same accuracy of estimates as the KF in their absence. By simulation, it is shown that the ARHOFIR filter is more robust than the KF and RHOFIR filter for the temporarily uncertain systems.
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具有自适应视界大小选择的有限脉冲响应滤波算法及其应用
众所周知,与卡尔曼滤波器(KF)不同,有限脉冲响应(FIR)滤波器允许避免与临时扰动和突然目标变化相关的发散和不满意的目标跟踪。主要的挑战是为它们提供适当的滑动窗口大小选择。本文提出了一种新的具有自适应视界大小选择的有限脉冲响应滤波算法。该算法使用接收估计的后退地平线最优(RHOFIR)滤波器、突变检测器和自适应循环机制来选择窗口大小。建立了估计误差协方差矩阵和RHOFIR滤波器增益的单调性和渐近性。这些结果为证明使用它们和已开发的自适应机制来调整滤波器增益的主要可能性奠定了坚实的基础。提出的算法(ARHOFIR滤波器)允许通过自适应地改变滑动窗口大小来减少干扰的影响。这种可能性源于窗口大小以不同方式影响滤波器特性的事实。ARHOFIR滤波器在没有突发扰动时选择较大的视界尺寸,而在其作用的时间间隔内选择较小的视界尺寸。因此,与KF和RHOFIR滤波器相比,它在存在暂时不确定性的时间间隔内具有更好的瞬态特性,并且在没有不确定性的情况下可以提供与KF相同的估计精度。仿真结果表明,对于暂不确定系统,ARHOFIR滤波器比KF和RHOFIR滤波器具有更强的鲁棒性。
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6.30
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