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Online Fault Detection for Four Wheeled Skid Steered UGV Using Neural Network

Title
Online Fault Detection for Four Wheeled Skid Steered UGV Using Neural Network
Author(s)
An, YoungwooEun, Yongsoon
Issued Date
2022-11
Citation
Actuators, v.11, no.11
Type
Article
Author Keywords
actuator fault detectiondeep learningfour wheel unmanned ground vehicleneural 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
Related Researcher
  • 은용순 Eun, Yongsoon
  • Research Interests Resilient control systems; Control systems with nonlinear sensors and actuators; Quasi-linear control systems; Intelligent transportation systems; Networked control systems
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Appears in Collections:
Department of Electrical Engineering and Computer Science DSC Lab(Dynamic Systems and Control Laboratory) 1. Journal Articles

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