一种无偏同伦粒子滤波器及其在INS/GPS组合导航中的应用

Xuemei Wang, Wenbo Ni
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引用次数: 3

摘要

松耦合惯导/GPS组合导航系统是一个非线性动态系统。粒子滤波器(PF)是处理非线性和非高斯问题的一种特殊工具。然而,典型的自举粒子滤波器不能很好地解决重要函数与似然函数之间的不匹配问题,在一定程度上在INS/GPS组合导航系统的应用中是无效的。同伦粒子滤波器利用相应的同伦变换来代替bp滤波器中的权值更新和粒子重采样,获得了显著的滤波效果。然而,高通量滤波器对粒子的扩散非常敏感,其精度随着GPS观测时间间隔的增加而降低。因此,我们提出了一种基于偏置校正的HPF (BCHPF)。BCHPF首先根据当前观测值估计相应的状态偏差,然后对预测粒子的偏差进行校正,再进行同伦变换。仿真和实际实验均表明,所提出的BCHPF能有效地解决BCHPF中重要性函数与似然函数不匹配的问题,并能很好地补偿INSs的累积误差。与HPF相比,它具有更好的鲁棒性和更高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An unbiased homotopy particle filter and its application to the INS/GPS integrated navigation system
A loosely coupled INS/GPS integrated navigation system is a nonlinear dynamic system. A particle filter (PF) is a particular tool for the nonlinear and non-Gaussian problems. However typical bootstrap particle filters (BPFs) cannot solve the mismatch between the importance function and the likelihood function very well so that they are invalid to some extent in the application of the INS/GPS integrated navigation systems. The homotopy particle filters (HPFs) use the corresponding homotopy transformation to replace the weights updating and the particles resampling in the BPF and then obtain significant effects. However the HPF is sensitive to the spread of the particles and its accuracy decreases with the increase of the GPS observation time intervals. Therefore we proposed a bias-correction-based HPF (BCHPF). The BCHPF firstly estimates the corresponding state bias errors according to the current observation and then corrects the bias errors of the predicted particles before implementing the homotopy transformation. Simulations and practical experiments both show that the proposed BCHPF can effectively solve the mismatch between the importance function and the likelihood function in the BPF and compensate the accumulated errors of the INSs very well. Compared with the HPF it achieves better robustness and higher accuracy.
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