Facilitating autonomous systems with AI-based fault tolerance and computational resource economy

Date

2020-05-11

Supervisor/s

Journal Title

Journal ISSN

Volume Title

Publisher

MDPI

Department

Type

Article

ISSN

0013-5070

Format

Citation

Deliparaschos KM, Michail K, Zolotas AC. (2020) Facilitating autonomous systems with AI-based fault tolerance and computational resource economy. Electronics, Volume 9, Issue 5, May 2020, Article number 788

Abstract

Proposed is the facilitation of fault-tolerant capability in autonomous systems with particular consideration of low computational complexity and system interface devices (sensor/actuator) performance. Traditionally model-based fault-tolerant/detection units for multiple sensor faults in automation require a bank of estimators, normally Kalman-based ones. An AI-based control framework enabling low computational power fault tolerance is presented. Contrary to the bank-of-estimators approach, the proposed framework exhibits a single unit for multiple actuator/sensor fault detection. The efficacy of the proposed scheme is shown via rigorous analysis for several sensor fault scenarios for an electro-magnetic suspension testbed.

Description

Software Description

Software Language

Github

Keywords

artificial intelligence, neural networks, Maglev, reconfigurable control, fault tolerance

DOI

Rights

Attribution 4.0 International

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