Model Predictive Based Unscented Kalman Filter for Hypersonic Vehicle Navigation with INS/GNSS Integration

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Abstract

The INS/GNSS integration is the commonly used technique for hypersonic vehicle navigation. However, owing to the complicated flight dynamics with high maneuverability and large flight envelope, the dynamic model of INS/GNSS integration inevitably exists errors which degrades the navigation performance of a hypersonic vehicle seriously. In this paper, a new model predictive based unscented Kalman filter (MP-UKF) is proposed to address this problem. The MP-UKF employs the concept of model predictive filter for the establishment of a dynamic model error estimator, and it subsequently compensate the model error estimation to UKF for nonlinear state estimation. Since the MP-UKF could predict the dynamic model error persistently and correct the filtering procedure of UKF online, it improves the UKF adaptiveness and is promising for the performance enhancement of INS/GNSS integration for hypersonic vehicle navigation. Simulation results and comparison analysis have been conducted to demonstrate the effectiveness of the proposed method.

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APA

Hu, G., Ni, L., Gao, B., Zhu, X., Wang, W., & Zhong, Y. (2020). Model Predictive Based Unscented Kalman Filter for Hypersonic Vehicle Navigation with INS/GNSS Integration. IEEE Access, 8, 4814–4823. https://doi.org/10.1109/ACCESS.2019.2962832

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