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Department of Electrical Engineering and Computer Science
Dynamic Systems and Control Laboratory
1. Journal Articles
Online Fault Detection for Four Wheeled Skid Steered UGV Using Neural Network
An, Youngwoo
;
Eun, Yongsoon
Department of Electrical Engineering and Computer Science
Dynamic Systems and Control Laboratory
1. Journal Articles
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Title
Online Fault Detection for Four Wheeled Skid Steered UGV Using Neural Network
Issued Date
2022-11
Citation
An, Youngwoo. (2022-11). Online Fault Detection for Four Wheeled Skid Steered UGV Using Neural Network. Actuators, 11(11). doi: 10.3390/act11110307
Type
Article
Author Keywords
actuator fault detection
;
deep learning
;
four wheel unmanned ground vehicle
;
neural network
Keywords
SYSTEM
ISSN
2076-0825
Abstract
This paper proposes a neural network-based actuator fault detection scheme for four-wheeled skid-steered unmanned ground vehicles (UGV). The neural network approach is first validated on vehicle dynamics simulations. Then, it is tailored for the experimental setup. Experiments involve a motion tracking system, Husarion Rosbot 2.0 UGV with associated network control systems. For experimental work, the disturbance is intentionally induced by augmenting wheels with a bump. Network size optimization is also carried out so that computing resource is saved without degrading detecting accuracy too much. The resulting network exhibit fault detection and isolation accuracy over 97% of the test data. A scenario is experimentally illustrated where a fault occurs, is detected, and tracking control is modified to continue operation in the presence of an actuator fault. © 2022 by the authors.
URI
http://hdl.handle.net/20.500.11750/17441
DOI
10.3390/act11110307
Publisher
MDPI
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Eun, Yongsoon
은용순
Department of Electrical Engineering and Computer Science
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