Predictive Fault Tolerance for Autonomous Robot Swarms

09/17/2023
by   James O'Keeffe, et al.
0

Active fault tolerance is essential for robot swarms to retain long-term autonomy. Previous work on swarm fault tolerance focuses on reacting to electro-mechanical faults that are spontaneously injected into robot sensors and actuators. Resolving faults once they have manifested as failures is an inefficient approach, and there are some safety-critical scenarios in which any kind of robot failure is unacceptable. We propose a predictive approach to fault tolerance, based on the principle of preemptive maintenance, in which potential faults are autonomously detected and resolved before they manifest as failures. Our approach is shown to improve swarm performance and prevent robot failure in the cases tested.

READ FULL TEXT
research
11/30/2018

Adversarial Examples as an Input-Fault Tolerance Problem

We analyze the adversarial examples problem in terms of a model's fault ...
research
10/06/2020

WoLFRaM: Enhancing Wear-Leveling and Fault Tolerance in Resistive Memories using Programmable Address Decoders

Resistive memories have limited lifetime caused by limited write enduran...
research
03/29/2019

Automatic Failure Explanation in CPS Models

Debugging Cyber-Physical System (CPS) models can be extremely complex. I...
research
01/21/2010

Fault Tolerance in Real Time Multiprocessors - Embedded Systems

All real time tasks which are termed as critical tasks by nature have to...
research
07/17/2011

A Temporal Neuro-Fuzzy Monitoring System to Manufacturing Systems

Fault diagnosis and failure prognosis are essential techniques in improv...
research
03/24/2022

Evaluation of IoT Self-healing Mechanisms using Fault-Injection in Message Brokers

The widespread use of Internet-of-Things (IoT) across different applicat...
research
07/10/2020

Self-healing Dilemmas in Distributed Systems: Fault-correction vs. Fault-tolerance

Large-scale decentralized systems of autonomous agents interacting via a...

Please sign up or login with your details

Forgot password? Click here to reset