Correction Algorithm for the Navigation System of an Autonomous Unmanned Underwater Vehicle

More accurate navigation systems are always required for autonomous unmanned underwater vehicles (AUUV)s under various circumstances. In this paper, a measuring complex of a heavy unmanned underwater vehicle (UUV) was investigated. The measuring complex consists of an inertial navigation platform sy...

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Main Authors: Danhe Chen, K. A. Neusypin, M. S. Selezneva
Format: Article
Language:English
Published: MDPI AG 2020-04-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/8/2365
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spelling doaj-caabce2c9fb64027a51a479e740166742020-11-25T03:10:14ZengMDPI AGSensors1424-82202020-04-01202365236510.3390/s20082365Correction Algorithm for the Navigation System of an Autonomous Unmanned Underwater VehicleDanhe Chen0K. A. Neusypin1M. S. Selezneva2Nanjing University of Science and Technology, Nanjing 210094, P. R. ChinaMoscow Bauman State Technical University, 105005 Moscow, RussiaMoscow Bauman State Technical University, 105005 Moscow, RussiaMore accurate navigation systems are always required for autonomous unmanned underwater vehicles (AUUV)s under various circumstances. In this paper, a measuring complex of a heavy unmanned underwater vehicle (UUV) was investigated. The measuring complex consists of an inertial navigation platform system, a Doppler lag (DL) and an estimation algorithm. During a relatively long-term voyage of an UUV without surfacing and correction from buoys and stationary stations, errors of the measuring complex will increase over time. The increase in errors is caused by an increase in the deviation angles of the gyro platform relative to the accompanying trihedron of the selected coordinate system. To reduce these angles, correction is used in the structure of the inertial navigation system (INS) using a linear regulator. To increase accuracy, it is proposed to take into account the nonlinear features of INS errors; an adaptive nonlinear Kalman filter and a nonlinear controller were used in the correction scheme. Considering that, a modified nonlinear Kalman filter and a regulator in the measuring complex are proposed to improve the accuracy of the measurement information, and modification of the nonlinear Kalman filter was performed through a genetic algorithm, in which the regulator was developed by the State Dependent Coefficient (SDC) method of the formulated model. Modeling combined with a semi-natural experiment with a real inertial navigation system for the UUV demonstrated the efficiency and effectiveness of the proposed algorithms.https://www.mdpi.com/1424-8220/20/8/2365unmanned underwater vehicleinertial navigation systemmeasuring complexnonlinear Kalman filterSDC methodsemi-natural experiment
collection DOAJ
language English
format Article
sources DOAJ
author Danhe Chen
K. A. Neusypin
M. S. Selezneva
spellingShingle Danhe Chen
K. A. Neusypin
M. S. Selezneva
Correction Algorithm for the Navigation System of an Autonomous Unmanned Underwater Vehicle
Sensors
unmanned underwater vehicle
inertial navigation system
measuring complex
nonlinear Kalman filter
SDC method
semi-natural experiment
author_facet Danhe Chen
K. A. Neusypin
M. S. Selezneva
author_sort Danhe Chen
title Correction Algorithm for the Navigation System of an Autonomous Unmanned Underwater Vehicle
title_short Correction Algorithm for the Navigation System of an Autonomous Unmanned Underwater Vehicle
title_full Correction Algorithm for the Navigation System of an Autonomous Unmanned Underwater Vehicle
title_fullStr Correction Algorithm for the Navigation System of an Autonomous Unmanned Underwater Vehicle
title_full_unstemmed Correction Algorithm for the Navigation System of an Autonomous Unmanned Underwater Vehicle
title_sort correction algorithm for the navigation system of an autonomous unmanned underwater vehicle
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-04-01
description More accurate navigation systems are always required for autonomous unmanned underwater vehicles (AUUV)s under various circumstances. In this paper, a measuring complex of a heavy unmanned underwater vehicle (UUV) was investigated. The measuring complex consists of an inertial navigation platform system, a Doppler lag (DL) and an estimation algorithm. During a relatively long-term voyage of an UUV without surfacing and correction from buoys and stationary stations, errors of the measuring complex will increase over time. The increase in errors is caused by an increase in the deviation angles of the gyro platform relative to the accompanying trihedron of the selected coordinate system. To reduce these angles, correction is used in the structure of the inertial navigation system (INS) using a linear regulator. To increase accuracy, it is proposed to take into account the nonlinear features of INS errors; an adaptive nonlinear Kalman filter and a nonlinear controller were used in the correction scheme. Considering that, a modified nonlinear Kalman filter and a regulator in the measuring complex are proposed to improve the accuracy of the measurement information, and modification of the nonlinear Kalman filter was performed through a genetic algorithm, in which the regulator was developed by the State Dependent Coefficient (SDC) method of the formulated model. Modeling combined with a semi-natural experiment with a real inertial navigation system for the UUV demonstrated the efficiency and effectiveness of the proposed algorithms.
topic unmanned underwater vehicle
inertial navigation system
measuring complex
nonlinear Kalman filter
SDC method
semi-natural experiment
url https://www.mdpi.com/1424-8220/20/8/2365
work_keys_str_mv AT danhechen correctionalgorithmforthenavigationsystemofanautonomousunmannedunderwatervehicle
AT kaneusypin correctionalgorithmforthenavigationsystemofanautonomousunmannedunderwatervehicle
AT msselezneva correctionalgorithmforthenavigationsystemofanautonomousunmannedunderwatervehicle
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