An Improved Weight Adaptive Gaussian Sum Algorithm Based on Sparse-Grid Quadrature Filter for Non-Gaussian Models

IF 2.2 4区 计算机科学 Q2 AUTOMATION & CONTROL SYSTEMS
Chen Qian, Enze Zhang, Yang Gao, Qingwei Chen
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Abstract

Nonlinear filtering algorithm is the key technology for dealing with complex systems in sensor data processing. To improve the filtering accuracy of the nonlinear filtering algorithm in the non-Gaussian case, an improved version of the Gaussian sum algorithm, the Gaussian sum adaptive sparse grid quadrature filter (GSASQF), is proposed. The proposed algorithm overcomes the challenges by introducing the Gaussian sum principle, which converts the non-Gaussian state and noise in the system into the form of weighted sum of Gaussian components. Based on the Bayesian filtering framework, a three-level sparse grid sampling rule is introduced, with the sparse grid orthogonal filtering algorithm serving as the sub-filter. By determining the sampling point parameters, the filtering process for each combination of Gaussian components is implemented, thereby ensuring the filtering accuracy of each group. In addition, in combination with the ideal of data-driven, the weight of each Gaussian component combination is adaptively updated inversely by the values of the sensor measurement, which improves the global filtering accuracy of nonlinear system under non-Gaussian noise. The combination of these three improvements enables high-precision filtering of non-Gaussian non-linear systems. Theoretical analysis and simulation confirm that the proposed GSASQF algorithm provides advantages in filtering accuracy for nonlinear non-Gaussian filtering problems.

Abstract Image

基于稀疏网格正交滤波的非高斯模型改进权值自适应高斯和算法
非线性滤波算法是传感器数据处理中处理复杂系统的关键技术。为了提高非线性滤波算法在非高斯情况下的滤波精度,提出了高斯和算法的改进版本——高斯和自适应稀疏网格正交滤波(GSASQF)。该算法通过引入高斯和原理,将系统中的非高斯状态和噪声转换为高斯分量的加权和形式,克服了这一挑战。在贝叶斯滤波框架的基础上,引入了一种三级稀疏网格采样规则,并以稀疏网格正交滤波算法作为子滤波器。通过确定采样点参数,实现对每组高斯分量组合的滤波过程,从而保证每组高斯分量的滤波精度。此外,结合数据驱动的理想,利用传感器测量值自适应逆更新各高斯分量组合的权重,提高了非线性系统在非高斯噪声下的全局滤波精度。这三种改进的结合使非高斯非线性系统的高精度滤波成为可能。理论分析和仿真验证了GSASQF算法对非线性非高斯滤波问题在滤波精度上的优势。
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来源期刊
IET Control Theory and Applications
IET Control Theory and Applications 工程技术-工程:电子与电气
CiteScore
5.70
自引率
7.70%
发文量
167
审稿时长
5.1 months
期刊介绍: IET Control Theory & Applications is devoted to control systems in the broadest sense, covering new theoretical results and the applications of new and established control methods. Among the topics of interest are system modelling, identification and simulation, the analysis and design of control systems (including computer-aided design), and practical implementation. The scope encompasses technological, economic, physiological (biomedical) and other systems, including man-machine interfaces. Most of the papers published deal with original work from industrial and government laboratories and universities, but subject reviews and tutorial expositions of current methods are welcomed. Correspondence discussing published papers is also welcomed. Applications papers need not necessarily involve new theory. Papers which describe new realisations of established methods, or control techniques applied in a novel situation, or practical studies which compare various designs, would be of interest. Of particular value are theoretical papers which discuss the applicability of new work or applications which engender new theoretical applications.
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