Trajectory Estimation Filtering Algorithm for Underwater Equipment Based on UKF

The underwater equipment carried by the East China Sea seabed observation network is often lost due to human activities. When solving the trajectory of underwater equipment by inertial navigation, the noise caused by the complex ocean environment and sudden motion leads to large calculation errors....

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Main Authors: CHEN Ziyue, JI Fuwu, ZHOU Wei
Format: Article
Language:zho
Published: Editorial Office of Ocean Development and Management 2025-01-01
Series:Haiyang Kaifa yu guanli
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Online Access:http://www.haiyangkaifayuguanli.com/hykfyglen/ch/reader/view_abstract.aspx?file_no=20250106&flag=1
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author CHEN Ziyue
JI Fuwu
ZHOU Wei
author_facet CHEN Ziyue
JI Fuwu
ZHOU Wei
author_sort CHEN Ziyue
collection DOAJ
description The underwater equipment carried by the East China Sea seabed observation network is often lost due to human activities. When solving the trajectory of underwater equipment by inertial navigation, the noise caused by the complex ocean environment and sudden motion leads to large calculation errors. Aiming at the limitation that the classic unscented Kalman filter needs accurate noise model and dynamic model to output better filtering results in the trajectory estimation process, an adaptive filtering algorithm based on Sage-Husa unscented Kalman filter is proposed for solving the trajectory of underwater equipment being towed. Firstly, the implementation process of the classic unscented Kalman filter is explained, and the idea of Sage-Husa adaptive adjustment of noise is introduced; then, on this basis, the prediction residual vector is introduced to reduce the influence of gross error on the filtering result, and a tracking factor is introduced to improve the adaptability of the filter to sudden motion; finally, the effectiveness of the algorithm is verified by simulation experiments and towing experiments. The experimental results show that the adaptive filtering algorithm based on Sage-Husa unscented Kalman filter effectively reduces the divergence error caused by the underwater acoustic environment and sudden motion, and improves the positioning accuracy and positioning stability of underwater equipment when being towed.
format Article
id doaj-art-310a717151b74aaba535ca9b8eca3a5c
institution Kabale University
issn 1005-9857
language zho
publishDate 2025-01-01
publisher Editorial Office of Ocean Development and Management
record_format Article
series Haiyang Kaifa yu guanli
spelling doaj-art-310a717151b74aaba535ca9b8eca3a5c2025-08-20T03:25:55ZzhoEditorial Office of Ocean Development and ManagementHaiyang Kaifa yu guanli1005-98572025-01-0142152601005-9857(2025)01-0052-09Trajectory Estimation Filtering Algorithm for Underwater Equipment Based on UKFCHEN Ziyue0JI Fuwu1ZHOU Wei2School of Ocean and Earth Science, Tongji University, Shanghai 200092, ChinaSchool of Ocean and Earth Science, Tongji University, Shanghai 200092, ChinaSchool of Ocean and Earth Science, Tongji University, Shanghai 200092, ChinaThe underwater equipment carried by the East China Sea seabed observation network is often lost due to human activities. When solving the trajectory of underwater equipment by inertial navigation, the noise caused by the complex ocean environment and sudden motion leads to large calculation errors. Aiming at the limitation that the classic unscented Kalman filter needs accurate noise model and dynamic model to output better filtering results in the trajectory estimation process, an adaptive filtering algorithm based on Sage-Husa unscented Kalman filter is proposed for solving the trajectory of underwater equipment being towed. Firstly, the implementation process of the classic unscented Kalman filter is explained, and the idea of Sage-Husa adaptive adjustment of noise is introduced; then, on this basis, the prediction residual vector is introduced to reduce the influence of gross error on the filtering result, and a tracking factor is introduced to improve the adaptability of the filter to sudden motion; finally, the effectiveness of the algorithm is verified by simulation experiments and towing experiments. The experimental results show that the adaptive filtering algorithm based on Sage-Husa unscented Kalman filter effectively reduces the divergence error caused by the underwater acoustic environment and sudden motion, and improves the positioning accuracy and positioning stability of underwater equipment when being towed.http://www.haiyangkaifayuguanli.com/hykfyglen/ch/reader/view_abstract.aspx?file_no=20250106&flag=1unscented kalman filteradaptive filtering algorithmunderwater equipment towingadvanced algorithm
spellingShingle CHEN Ziyue
JI Fuwu
ZHOU Wei
Trajectory Estimation Filtering Algorithm for Underwater Equipment Based on UKF
Haiyang Kaifa yu guanli
unscented kalman filter
adaptive filtering algorithm
underwater equipment towing
advanced algorithm
title Trajectory Estimation Filtering Algorithm for Underwater Equipment Based on UKF
title_full Trajectory Estimation Filtering Algorithm for Underwater Equipment Based on UKF
title_fullStr Trajectory Estimation Filtering Algorithm for Underwater Equipment Based on UKF
title_full_unstemmed Trajectory Estimation Filtering Algorithm for Underwater Equipment Based on UKF
title_short Trajectory Estimation Filtering Algorithm for Underwater Equipment Based on UKF
title_sort trajectory estimation filtering algorithm for underwater equipment based on ukf
topic unscented kalman filter
adaptive filtering algorithm
underwater equipment towing
advanced algorithm
url http://www.haiyangkaifayuguanli.com/hykfyglen/ch/reader/view_abstract.aspx?file_no=20250106&flag=1
work_keys_str_mv AT chenziyue trajectoryestimationfilteringalgorithmforunderwaterequipmentbasedonukf
AT jifuwu trajectoryestimationfilteringalgorithmforunderwaterequipmentbasedonukf
AT zhouwei trajectoryestimationfilteringalgorithmforunderwaterequipmentbasedonukf