Grey Particle Filter (GPF) for Self-Estimating Depth of Maneuvering Autonomous Underwater Vehicle (AUV)

Ting Li, Dexin Zhao, Zhiping Huang, Shaojing Su
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Abstract

This paper presents a grey particle filter (GPF) that incorporates the grey prediction algorithm into the particle filter (PF). The GPF self-estimates the depth of maneuvering autonomous underwater vehicle (AUV) using the data measured by the depth sensor equipped in the AUV under the condition that the prior maneuvering information is unknown and the measurement noise is time-varying. The principle of the GPF is that the particles are sampled by grey prediction algorithm and the likelihood probabilities of the grey particles are calculated by wavelet transform in real time, which only uses the historical measurement without establishing prior dynamic models. Therefore, the GPF can effectively alleviate the sample degeneracy problem which is common in the multiple model particle filter (MMFP). The performance of the MMPF and GPF are both evaluated through the experimental data. The results show that GPF has the better estimation accuracy than the MMPF.
灰色粒子滤波(GPF)在机动自主水下航行器(AUV)深度自估计中的应用
提出了一种将灰色预测算法融入到粒子滤波器中的灰色粒子滤波器。在先验机动信息未知和测量噪声时变的情况下,GPF利用水下航行器上安装的深度传感器测量到的数据对水下航行器的深度进行自估计。GPF的原理是通过灰色预测算法对粒子进行采样,通过小波变换实时计算灰色粒子的似然概率,仅利用历史测量值,不建立先验动态模型。因此,GPF可以有效地缓解多模型粒子滤波(MMFP)中常见的样本退化问题。通过实验数据对MMPF和GPF的性能进行了评价。结果表明,GPF比MMPF具有更好的估计精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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