Adaptive Estimation Algorithm for Correcting Low-Cost MEMS-SINS Errors of Unmanned Vehicles under the Conditions of Abnormal Measurements

In this paper, a low-cost small-sized strap-down inertial navigation system (SINS)—Gyrolab GL-VG 109—is studied. When the system is installed on an unmanned vehicle and works in autonomous mode, it is difficult to determine the navigation parameters of the unmanned vehicle. Correcting the SINS infor...

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Main Authors: Lifei Zhang, Proletarsky Andrey Viktorovich, Maria Sergeevna Selezneva, Konstantin Avenirovich Neusypin
Format: Article
Language:English
Published: MDPI AG 2021-01-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/2/623
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spelling doaj-a11f5df9e7234df0b2dbc5118de666bd2021-01-18T00:02:03ZengMDPI AGSensors1424-82202021-01-012162362310.3390/s21020623Adaptive Estimation Algorithm for Correcting Low-Cost MEMS-SINS Errors of Unmanned Vehicles under the Conditions of Abnormal MeasurementsLifei Zhang0Proletarsky Andrey Viktorovich1Maria Sergeevna Selezneva2Konstantin Avenirovich Neusypin3Department of Informatics and Control Systems, Bauman Moscow State Technical University, 101000 Moscow, RussiaDepartment of Informatics and Control Systems, Bauman Moscow State Technical University, 101000 Moscow, RussiaDepartment of Informatics and Control Systems, Bauman Moscow State Technical University, 101000 Moscow, RussiaDepartment of Informatics and Control Systems, Bauman Moscow State Technical University, 101000 Moscow, RussiaIn this paper, a low-cost small-sized strap-down inertial navigation system (SINS)—Gyrolab GL-VG 109—is studied. When the system is installed on an unmanned vehicle and works in autonomous mode, it is difficult to determine the navigation parameters of the unmanned vehicle. Correcting the SINS information from the Global Navigation Satellite System (GNSS) can significantly increase the determination accuracy of the navigation parameters. However, this is only available when the GNSS signals are stable. A new adaptive estimation algorithm that can automatically detect, evaluate, and process the abnormal measurements is proposed in the present work. The determination of the navigation parameters can reach the third accuracy class using the proposed method. The effectiveness of the algorithm is verified by the mathematical simulation and the experimental tests (with a real SINS GL-VG 109), which are conducted in urban environments with a GNSS signal containing 15% and 40% abnormal measurements. The results show that the proposed method can significantly reduce the impact of abnormal measurements and improve the estimation accuracy.https://www.mdpi.com/1424-8220/21/2/623strap-down inertial navigation systemunmanned vehicleestimation algorithmcriterion for detecting abnormal measurementsaccuracy analysis
collection DOAJ
language English
format Article
sources DOAJ
author Lifei Zhang
Proletarsky Andrey Viktorovich
Maria Sergeevna Selezneva
Konstantin Avenirovich Neusypin
spellingShingle Lifei Zhang
Proletarsky Andrey Viktorovich
Maria Sergeevna Selezneva
Konstantin Avenirovich Neusypin
Adaptive Estimation Algorithm for Correcting Low-Cost MEMS-SINS Errors of Unmanned Vehicles under the Conditions of Abnormal Measurements
Sensors
strap-down inertial navigation system
unmanned vehicle
estimation algorithm
criterion for detecting abnormal measurements
accuracy analysis
author_facet Lifei Zhang
Proletarsky Andrey Viktorovich
Maria Sergeevna Selezneva
Konstantin Avenirovich Neusypin
author_sort Lifei Zhang
title Adaptive Estimation Algorithm for Correcting Low-Cost MEMS-SINS Errors of Unmanned Vehicles under the Conditions of Abnormal Measurements
title_short Adaptive Estimation Algorithm for Correcting Low-Cost MEMS-SINS Errors of Unmanned Vehicles under the Conditions of Abnormal Measurements
title_full Adaptive Estimation Algorithm for Correcting Low-Cost MEMS-SINS Errors of Unmanned Vehicles under the Conditions of Abnormal Measurements
title_fullStr Adaptive Estimation Algorithm for Correcting Low-Cost MEMS-SINS Errors of Unmanned Vehicles under the Conditions of Abnormal Measurements
title_full_unstemmed Adaptive Estimation Algorithm for Correcting Low-Cost MEMS-SINS Errors of Unmanned Vehicles under the Conditions of Abnormal Measurements
title_sort adaptive estimation algorithm for correcting low-cost mems-sins errors of unmanned vehicles under the conditions of abnormal measurements
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-01-01
description In this paper, a low-cost small-sized strap-down inertial navigation system (SINS)—Gyrolab GL-VG 109—is studied. When the system is installed on an unmanned vehicle and works in autonomous mode, it is difficult to determine the navigation parameters of the unmanned vehicle. Correcting the SINS information from the Global Navigation Satellite System (GNSS) can significantly increase the determination accuracy of the navigation parameters. However, this is only available when the GNSS signals are stable. A new adaptive estimation algorithm that can automatically detect, evaluate, and process the abnormal measurements is proposed in the present work. The determination of the navigation parameters can reach the third accuracy class using the proposed method. The effectiveness of the algorithm is verified by the mathematical simulation and the experimental tests (with a real SINS GL-VG 109), which are conducted in urban environments with a GNSS signal containing 15% and 40% abnormal measurements. The results show that the proposed method can significantly reduce the impact of abnormal measurements and improve the estimation accuracy.
topic strap-down inertial navigation system
unmanned vehicle
estimation algorithm
criterion for detecting abnormal measurements
accuracy analysis
url https://www.mdpi.com/1424-8220/21/2/623
work_keys_str_mv AT lifeizhang adaptiveestimationalgorithmforcorrectinglowcostmemssinserrorsofunmannedvehiclesundertheconditionsofabnormalmeasurements
AT proletarskyandreyviktorovich adaptiveestimationalgorithmforcorrectinglowcostmemssinserrorsofunmannedvehiclesundertheconditionsofabnormalmeasurements
AT mariasergeevnaselezneva adaptiveestimationalgorithmforcorrectinglowcostmemssinserrorsofunmannedvehiclesundertheconditionsofabnormalmeasurements
AT konstantinavenirovichneusypin adaptiveestimationalgorithmforcorrectinglowcostmemssinserrorsofunmannedvehiclesundertheconditionsofabnormalmeasurements
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