Neural network assisted Kalman filter for INS/UWB integrated seamless quadrotor localization

Due to some harsh indoor environments, the signal of the ultra wide band (UWB) may be lost, which makes the data fusion filter can not work. For overcoming this problem, the neural network (NN) assisted Kalman filter (KF) for fusing the UWB and the inertial navigation system (INS) data seamlessly is...

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Main Authors: Shuhui Bi, Liyao Ma, Tao Shen, Yuan Xu, Fukun Li
Format: Article
Language:English
Published: PeerJ Inc. 2021-07-01
Series:PeerJ Computer Science
Subjects:
Online Access:https://peerj.com/articles/cs-630.pdf
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spelling doaj-799296a0c1d543c68df6955a8fe678692021-07-16T15:05:15ZengPeerJ Inc.PeerJ Computer Science2376-59922021-07-017e63010.7717/peerj-cs.630Neural network assisted Kalman filter for INS/UWB integrated seamless quadrotor localizationShuhui BiLiyao MaTao ShenYuan XuFukun LiDue to some harsh indoor environments, the signal of the ultra wide band (UWB) may be lost, which makes the data fusion filter can not work. For overcoming this problem, the neural network (NN) assisted Kalman filter (KF) for fusing the UWB and the inertial navigation system (INS) data seamlessly is present in this work. In this approach, when the UWB data is available, both the UWB and the INS are able to provide the position information of the quadrotor, and thus, the KF is used to provide the localization information by the fusion of position difference between the INS and the UWB, meanwhile, the KF can provide the estimation of the INS position error, which is able to assist the NN to build the mapping between the state vector and the measurement vector off-line. The NN can estimate the KF’s measurement when the UWB data is unavailable. For confirming the effectiveness of the proposed method, one real test has been done. The test’s results demonstrate that the proposed NN assisted KF is effective to the fusion of INS and UWB data seamlessly, which shows obvious improvement of localization accuracy. Compared with the LS-SVM assisted KF, the proposed NN assisted KF is able to reduce the localization error by about 54.34%.https://peerj.com/articles/cs-630.pdfNeural network assisted Kalman filterINS/UWBQuadrotorLocalization
collection DOAJ
language English
format Article
sources DOAJ
author Shuhui Bi
Liyao Ma
Tao Shen
Yuan Xu
Fukun Li
spellingShingle Shuhui Bi
Liyao Ma
Tao Shen
Yuan Xu
Fukun Li
Neural network assisted Kalman filter for INS/UWB integrated seamless quadrotor localization
PeerJ Computer Science
Neural network assisted Kalman filter
INS/UWB
Quadrotor
Localization
author_facet Shuhui Bi
Liyao Ma
Tao Shen
Yuan Xu
Fukun Li
author_sort Shuhui Bi
title Neural network assisted Kalman filter for INS/UWB integrated seamless quadrotor localization
title_short Neural network assisted Kalman filter for INS/UWB integrated seamless quadrotor localization
title_full Neural network assisted Kalman filter for INS/UWB integrated seamless quadrotor localization
title_fullStr Neural network assisted Kalman filter for INS/UWB integrated seamless quadrotor localization
title_full_unstemmed Neural network assisted Kalman filter for INS/UWB integrated seamless quadrotor localization
title_sort neural network assisted kalman filter for ins/uwb integrated seamless quadrotor localization
publisher PeerJ Inc.
series PeerJ Computer Science
issn 2376-5992
publishDate 2021-07-01
description Due to some harsh indoor environments, the signal of the ultra wide band (UWB) may be lost, which makes the data fusion filter can not work. For overcoming this problem, the neural network (NN) assisted Kalman filter (KF) for fusing the UWB and the inertial navigation system (INS) data seamlessly is present in this work. In this approach, when the UWB data is available, both the UWB and the INS are able to provide the position information of the quadrotor, and thus, the KF is used to provide the localization information by the fusion of position difference between the INS and the UWB, meanwhile, the KF can provide the estimation of the INS position error, which is able to assist the NN to build the mapping between the state vector and the measurement vector off-line. The NN can estimate the KF’s measurement when the UWB data is unavailable. For confirming the effectiveness of the proposed method, one real test has been done. The test’s results demonstrate that the proposed NN assisted KF is effective to the fusion of INS and UWB data seamlessly, which shows obvious improvement of localization accuracy. Compared with the LS-SVM assisted KF, the proposed NN assisted KF is able to reduce the localization error by about 54.34%.
topic Neural network assisted Kalman filter
INS/UWB
Quadrotor
Localization
url https://peerj.com/articles/cs-630.pdf
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AT taoshen neuralnetworkassistedkalmanfilterforinsuwbintegratedseamlessquadrotorlocalization
AT yuanxu neuralnetworkassistedkalmanfilterforinsuwbintegratedseamlessquadrotorlocalization
AT fukunli neuralnetworkassistedkalmanfilterforinsuwbintegratedseamlessquadrotorlocalization
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