Version 2 2021-05-05, 13:22Version 2 2021-05-05, 13:22
Version 1 2020-11-26, 16:53Version 1 2020-11-26, 16:53
journal contribution
posted on 2021-05-05, 13:22authored byJ Liao, Y Wang, JN Yin, LL Bi, S Zhang, Huiyu Zhou, DQ Zhu
In this article, an integrated global positioning system (GPS), inertial navigation system (INS), and visual navigation system (VNS) navigation method based on an adaptive federal Kalman filter (KF) is presented to improve positioning accuracy for a rice transplanter operating in a paddy field. The proposed method used GPS/VNS to aid the INS and reduce the influence of the accumulated error of the INS on navigation accuracy. An adaptive federal KF algorithm was designed to fuse navigation information from different sensors. The information distribution factor of each local filter was obtained adaptively on the basis of its own error covariance matrix. Computer simulation and transplanter tests were conducted to verify the proposed method. Results showed that the proposed method provided accurate and reliable navigation information outputs and achieved better navigation performance compared with single GPS navigation and an integrated method based on a conventional federal KF.
History
Citation
Transactions of the ASABE. 64(2): 389-399. (doi: 10.13031/trans.13682) @2021
Author affiliation
School of Engineering
Version
AM (Accepted Manuscript)
Published in
Transactions of the ASABE
Volume
64
Issue
2
Pagination
389-399
Publisher
American Society of Agricultural and Biological Engineers