Fault detection method of integrated navigation based on LVQ neural network

Xiaojing Du, Changte Sun, Huaijian Li, Rongjing Xu
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Abstract

In the present study, a GPS/CNS/SINS federated filter model is proposed firstly to improve the low accuracy of fault detection in multi-sensor integrated navigation system. On this basis, an LVQ neural network assisted integrated navigation fault detection method is developed for LVQ (Learning Vector Quantization) networks with few design parameters, simple network structure and non-normalized input vectors during usage. The optimal number of neurons in the competitive layer is determined by K-CV (Cross Validation) verification method, and LVQ neural network is used to identify and classify the soft and hard faults added at different times. The simulation results indicate that compared with traditional neural network, LVQ neural network achieves higher detection accuracy (93%) with lower CPU usage. Thus, it is convinced that the study has great engineering significance and practical value.
基于LVQ神经网络的组合导航故障检测方法
针对多传感器组合导航系统故障检测精度低的问题,首先提出了GPS/CNS/SINS联合滤波模型。在此基础上,针对使用过程中设计参数少、网络结构简单、输入向量非归一化的LVQ (Learning Vector Quantization)网络,提出了一种LVQ神经网络辅助集成导航故障检测方法。通过K-CV (Cross Validation)验证方法确定竞争层的最优神经元数,并利用LVQ神经网络对不同时间添加的软、硬故障进行识别和分类。仿真结果表明,与传统神经网络相比,LVQ神经网络在CPU占用率较低的情况下实现了更高的检测准确率(93%)。因此,相信本研究具有重大的工程意义和实用价值。
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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