Confidence partitioning sampling filtering

IF 1.9 4区 工程技术 Q2 Engineering
Xingzi Qiang, Rui Xue, Yanbo Zhu
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引用次数: 0

Abstract

The confidence partitioning sampling filter (CPSF) method proposed in this paper is a novel approach for solving the generic nonlinear filtering problem. First, the confidence probability space (CPS) is defined, which restricts the state transition in a bounded and closed state space in the recursive Bayesian filtering. In the posterior CPS, the weighted grid samples, represented the posterior PDF, are obtained by using the partitioning sampling technique (PST). Each weighted grid sample is treated as an impulse function. The approximate expression of the posterior PDF, as key for the PST implementation, is obtained by using the properties of the impulse function in the integral operation. By executing the selection of the CPS and the PST step repeatedly, the CPSF framework is formed to achieve the approximation of the recursive Bayesian filtering. Second, the difficulty of the CPSF framework implementation lies in obtaining the real posterior CPS. Therefore, the space intersection (SI) method is suggested to obtain the approximate posterior CPS. On this basis, the SI_CPSF algorithm, as an executable algorithm, is formed to solve the generic nonlinear filtering problem. Third, the approximate error between the CPSF framework and the recursive Bayesian filter is analyzed theoretically. The consistency of the CPSF framework to the recursive Bayesian filter is proved. Finally, the performances of the SI_CPSF algorithm, including robustness, accuracy and efficiency, are evaluated using four representative simulation experiments. The simulation results showed that SI_CSPF requires far less samples than particle filter (PF) under the same accuracy. Its computation is on average one order of magnitude less than that of the PF. The robustness of the proposed algorithm is also evaluated in the simulations.

Abstract Image

置信度分区抽样过滤
本文提出的置信分区采样滤波(CPSF)方法是解决一般非线性滤波问题的一种新方法。首先,定义了置信概率空间(CPS),它将递归贝叶斯滤波中的状态转换限制在一个有界的封闭状态空间中。在后验 CPS 中,通过使用分区采样技术(PST)获得代表后验 PDF 的加权网格样本。每个加权网格样本都被视为一个脉冲函数。作为 PST 实现的关键,后验 PDF 的近似表达式是通过使用积分运算中脉冲函数的特性获得的。通过反复执行 CPS 和 PST 步骤的选择,形成了 CPSF 框架,实现了递归贝叶斯滤波的近似。其次,CPSF 框架实现的难点在于获取真实的后验 CPS。因此,建议采用空间交集(SI)方法来获取近似的后验 CPS。在此基础上,形成了 SI_CPSF 算法,作为一种可执行算法,用于解决通用非线性滤波问题。第三,从理论上分析了 CPSF 框架与递归贝叶斯滤波器之间的近似误差。证明了 CPSF 框架与递归贝叶斯滤波器的一致性。最后,利用四个有代表性的仿真实验评估了 SI_CPSF 算法的性能,包括鲁棒性、准确性和效率。仿真结果表明,在精度相同的情况下,SI_CSPF 所需的样本量远远少于粒子滤波器(PF)。其计算量平均比粒子滤波器少一个数量级。仿真还评估了所提算法的鲁棒性。
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来源期刊
EURASIP Journal on Advances in Signal Processing
EURASIP Journal on Advances in Signal Processing 工程技术-工程:电子与电气
CiteScore
3.50
自引率
10.50%
发文量
109
审稿时长
2.6 months
期刊介绍: The aim of the EURASIP Journal on Advances in Signal Processing is to highlight the theoretical and practical aspects of signal processing in new and emerging technologies. The journal is directed as much at the practicing engineer as at the academic researcher. Authors of articles with novel contributions to the theory and/or practice of signal processing are welcome to submit their articles for consideration.
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