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宋丽君

博士生导师
硕士生导师
教师姓名:宋丽君
教师拼音名称:songlijun
所在单位:信息与控制工程学院
学历:研究生(博士后)
性别:女
学位:博士学位
职称:副教授
在职信息:在职
毕业院校:西工业大学
学科:控制科学与工程    
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论文成果
Application of Federated Kalman Filter with neural networks in the velocity and attitude matching of Transfer Alignment
发布时间:2024-08-09    点击次数:

所属单位:信息与控制工程学院

发表刊物:Complexity

摘要:The centralized Kalman filter is always applicated in the velocity and attitude matching of Transfer Alignment (TA). But the centralized Kalman has many disadvantages, such as large amount of calculation, poor real-time performance and low reliability. In the paper, the federal Kalman Filter (FKF) based on neural networks are used in the velocity and attitude matching of TA, the Kalman filter is adjusted by the neural networks in the two sub-filters, the federal filter is used to fuse the information of the two sub-filters, and the global suboptimal state estimation is obtained. The result of simulation shows that the federal Kalman filter based on neural networks is better to estimate the initial attitude misalignment angle of Inertial Navigation System (INS) when the system dynamic model and noise statistics characteristics of Inertial Navigation System are unclear, and the estimation error is smaller and the accuracy is higher.

第一作者:李喆,何波,段中兴,宋丽君

论文类型:期刊论文

卷号:Article ID 3039061

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发表时间:2018-04-18