NEApr 11, 2013

Generic Behaviour Similarity Measures for Evolutionary Swarm Robotics

arXiv:1304.3393v155 citations
Originality Incremental advance
AI Analysis

This reduces the burden and bias for experimenters in evolutionary swarm robotics, though it is incremental as it builds on existing novelty search methods.

The paper tackles the problem of needing hand-crafted, domain-dependent behavior similarity measures for novelty search in swarm robotics, proposing two generic measures that match the performance of domain-specific ones in aggregation and resource sharing tasks.

Novelty search has shown to be a promising approach for the evolution of controllers for swarm robotics. In existing studies, however, the experimenter had to craft a domain dependent behaviour similarity measure to use novelty search in swarm robotics applications. The reliance on hand-crafted similarity measures places an additional burden to the experimenter and introduces a bias in the evolutionary process. In this paper, we propose and compare two task-independent, generic behaviour similarity measures: combined state count and sampled average state. The proposed measures use the values of sensors and effectors recorded for each individual robot of the swarm. The characterisation of the group-level behaviour is then obtained by combining the sensor-effector values from all the robots. We evaluate the proposed measures in an aggregation task and in a resource sharing task. We show that the generic measures match the performance of domain dependent measures in terms of solution quality. Our results indicate that the proposed generic measures operate as effective behaviour similarity measures, and that it is possible to leverage the benefits of novelty search without having to craft domain specific similarity measures.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes