A Multi Feature Fusion Aided Positioning for INS/Beidou with Combination of BP Neural Network and Differential Evolution Kalman Filter

Zhibin Zang, Peiguang Wang, Yongxin Zhang, Sheng Ma, Xiangdong Chen, Jie Dong, Jianjun Chen
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Abstract

Inertial navigation system (INS) is a pure autonomous navigation system, which can provide continuous real-time position, speed, and attitude information. The INS has the characteristics of short-term high accuracy and strong anti-interference ability, but the position error will accumulate with the extension of time. In order to further improve the accuracy of the traceless Kalman filter (KF) in Beidou/inertial conduction,.a Back Propagation (BP) neural network aided approach is developed in combination with improved differential evolution algorithm (DE). Specifically, we designed a new BP network that fuse multi features of signals. the INS and Beidou fusion data are collected as samples to train the BP neural network. Then, the improved DE algorithm is employed to optimize KF, attaining superior fusion efficiency. Simulation results demonstrate that the stability and accuracy of position have been significantly improved compared with the original combinatorial positioning model.
基于BP神经网络和差分进化卡尔曼滤波的INS/北斗多特征融合辅助定位
惯性导航系统(INS)是一种纯自主导航系统,能够提供连续的实时位置、速度和姿态信息。该系统具有短期高精度、抗干扰能力强的特点,但其位置误差会随着时间的延长而累积。为了进一步提高北斗/惯性传导中无迹卡尔曼滤波(KF)的精度,结合改进的差分进化算法(DE),提出了一种BP神经网络辅助算法。具体来说,我们设计了一种新的BP网络,它融合了信号的多种特征。以INS和北斗融合数据为样本,训练BP神经网络。然后,采用改进的DE算法对KF进行优化,获得了较好的融合效率。仿真结果表明,与原组合定位模型相比,该组合定位模型的定位稳定性和定位精度均有显著提高。
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