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An Improved UKF for IMU State Estimation Based on Modulation LSTM Neural Network

Jinxin Luo, Kunyang Wu, Yitian Wang, Tianhao Wang, Guanyu Zhang, Yang Liu

2024IEEE Transactions on Intelligent Transportation Systems24 citationsDOI

Abstract

Due to the divergence of accuracy caused by inertial measurement unit (IMU) cumulative error, it is difficult for a single IMU equipment to realize vehicle positioning. Therefore, this paper proposes an IMU pose state estimation algorithm based on modulation long short-term memory-unscented Kalman filter (ML-UKF) algorithm. First, the algorithm improves the memory mode of LSTM network by using Modulation LSTM neural network and establishes IMU state model and observation model. Then, in order to adapt to the application of deep learning algorithm in UKF, an equal spacing sigma sampling method is proposed. Finally, the effect of IMU pose state estimation is verified by experiments. Results show that the root mean square error of the ML-UKF algorithm is decreases by 65.43% relative to the state of the art, further verifying the effectiveness of the proposed algorithm.

Topics & Concepts

Inertial measurement unitComputer scienceArtificial neural networkArtificial intelligenceEstimationState (computer science)EngineeringAlgorithmSystems engineeringFault Detection and Control SystemsAdvanced Sensor and Control Systems
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