Calendar15 September 2024

Publication: A Data-Driven Method to Identify Fault Mitigation Strategies in Robot Swarms Publication: A Data-Driven Method to Identify Fault Mitigation Strategies in Robot Swarms

As robot swarms are increasingly deployed in the real-world, making them safe will be critical to improving adoption and trust. A robot swarm is composed of many individual robots each susceptible to failure at any given time, which may decrease the performance of the swarm as a whole. The ability to mitigate critical faults is therefore necessary. The difficulty with designing an effective mitigation strategy lies in the complexity of the swarm as a system, where individual interactions give rise to emergent behaviour.

In this work, EMERGE partners from the University of Bristol present a data-driven method to identify effective local actions available to faulty robots in the swarm. The authors make the assumption that robots are able to self-detect faults and that pre-coded actions are indeed available. An effective action should mitigate any negative impact of faults on overall swarm performance. They consider two intralogistics scenarios where the swarm must retrieve and deliver boxes. The first concerns single robot transport (one robot per box) and the second, collective transport (four robots per box). Their method is able to identify effective actions for particular fault types. They also consider the impact of actions across ratios of fault in the swarm. Interestingly, faults do not always benefit from mitigations, with mitigations causing overall lower system performance for certain fault types.

Read the paper in the link below.