粒子滤波在FDI导向变化检测和有界参数估计中的应用

P. Cofré, A. Cipriano
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引用次数: 0

摘要

在其原始公式中,状态估计方案(如卡尔曼滤波器)不允许在其物理边界上合并先验信息。这导致产生物理上不可能的估计的一定概率。此外,传统方案中的高斯假设在估计误差和估计速度之间产生了权衡。本文提出了一种基于粒子滤波的求解方法,该方法选择有界先验参数分布。结果表明,与扩展卡尔曼滤波相比,具有硬边界和自适应估计方差的Beta分布可以克服这两个缺点,从而在不增加估计误差的情况下实现更低的故障检测时延。
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An application of particle filter for FDI oriented change detection and bounded parameter estimation
In their original formulations, state estimation schemes such as Kalman Filter, do not allow the incorporation of prior information on their physical bounds. This results in a certain probability of generating estimates that are physically impossible. Also, the Gaussian assumption in conventional schemes produces a trade-off between estimation error and estimation speed. This paper presents a solution based on a particle filter for which a bounded a priori parameter distribution is chosen. It is shown that a Beta distribution with hard bounds and adaptive estimation variance can overcome both drawbacks, thus achieving a lower fault detection time delay without increasing the estimation error, compared with the Extended Kalman Filter.
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