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A rank correlation coefficient based particle filter to estimate parameters in non-linear models

机译:基于秩相关系数的粒子滤波器估计非线性模型中的参数

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摘要

Particle filtering algorithm has found an increasingly wide utilization in many fields at present, especially in non-linear and non-Gaussian situations. Because of the particle degeneracy limitation, various resampling methods have been researched. The estimation process of particle filtering algorithm is a series of weighted calculation processes, which can be regarded as weighted data fusion. This article proposed an improved particle filtering algorithm combining with different rank correlation coefficients to overcome the shortcomings of degeneracy. By simulating iteration operation in MATLAB, it discovers that the proposed algorithm provides better accuracy in comparison with particle filtering, Gaussian sum particle filter, and Gaussian mixture sigma-point particle filter in Gaussian mixture noise. A practical seven-dimensional harmonic model is also implemented in the simulation. After comparing the performances of different algorithms, we found that the proposed method had more accuracy than the widely used extended Kalman filtering algorithm.
机译:目前,粒子滤波算法已在许多领域得到越来越广泛的应用,尤其是在非线性和非高斯情况下。由于粒子简并性的限制,已经研究了各种重采样方法。粒子滤波算法的估计过程是一系列加权计算过程,可以看作是加权数据融合。本文提出了一种改进的粒子滤波算法,结合了不同的秩相关系数,克服了退化的缺点。通过在MATLAB中模拟迭代操作,发现与高斯混合噪声中的粒子滤波,高斯和粒子滤波和高斯混合西格玛点粒子滤波相比,该算法具有更高的精度。仿真中还实现了实用的七维谐波模型。通过比较不同算法的性能,我们发现该方法比广泛使用的扩展卡尔曼滤波算法具有更高的准确性。

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