马尔可夫跳变线性系统的高阶矩多传感器融合滤波器设计

Ziheng Zhou, X. Luan, Shuping He, Fei Liu
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引用次数: 2

摘要

为解决状态估计中高阶矩高斯分布(HGD)噪声问题,设计了一种基于传感器数据高阶矩信息的马尔可夫跳变线性系统(MJLSs)融合滤波器。为了获得高阶矩信息,利用累积量生成函数将多传感器MJLS转换为由高阶矩分量组成的单模系统。其次,根据变换后的单模确定性系统,建立基于贝叶斯理论的滤波器设计,以高阶矩信息形式实现状态估计。随后,提出了一种基于熵理论的高阶矩融合技术,利用从各个传感器获取的高阶矩信息获得更准确的状态估计结果。与传统高斯分布获得的一阶和二阶矩信息相比,HGD引入了高阶矩信息,使融合过程更加合理。这样,依靠传感器融合技术,可以获得更精确、更合理的状态估计性能。为了验证所提方法的有效性和优越性,给出了多种融合方法的数值仿真算例。从而验证了所提出的融合滤波器设计的性能。
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High-order moment multi-sensor fusion filter design of Markov jump linear systems
: To solve the problem of high-order moment Gaussian distribution (HGD) noise in state estimation, a fusion filter for Markov jump linear systems (MJLSs) with high-order moment information obtained from sensor data is designed. To obtain high-order moment information, the multi-sensor MJLS is converted to a single-mode system composed of high-order moment components by using a cumulant generating function. Next, a filter design based on Bayesian theory is established to achieve state estimation with a high-order moment information form according to the transformed single-mode deterministic system. Subsequently, a high-order moment fusion technique based on entropy theory is proposed to obtain a more accurate estimation result of the state by using the high-order moment information obtained from various sensors. Comparing the first- and second-order moment information obtained by traditional Gaussian distribution, the HGD introduces higher-order moment information and makes the fusion process more reasonable. In this way, a more precise and reasonable performance of the state estimation is achieved, depending on the sensor fusion technique. To confirm the effectiveness and advantages of the proposed method, a numerical simulation example is provided with various fusion methods. Thus, the performance of the proposed fusion filter design is verified.
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