NEFeb 14, 2019

Engineered Self-Organization for Resilient Robot Self-Assembly with Minimal Surprise

arXiv:1902.05485v32 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of resilient self-assembly in robot swarms for researchers in robotics and AI, but it is incremental as it builds on existing minimal surprise approaches in simulation.

The paper tackled the challenge of automatically generating controllers for complex tasks in collective robotic systems by evolving prediction networks to create world models that minimize surprise, leading to emergent self-assembly behaviors. They demonstrated resilient self-assembly in simulation, with patterns reassembling after damage, though specific numerical results were not provided.

In collective robotic systems, the automatic generation of controllers for complex tasks is still a challenging problem. Open-ended evolution of complex robot behaviors can be a possible solution whereby an intrinsic driver for pattern formation and self-organization may prove to be important. We implement such a driver in collective robot systems by evolving prediction networks as world models in pair with action-selection networks. Fitness is given for good predictions which causes a bias towards easily predictable environments and behaviors in the form of emergent patterns, that is, environments of minimal surprise. There is no task-dependent bias or any other explicit predetermination for the different qualities of the emerging patterns. A careful configuration of actions, sensor models, and the environment is required to stimulate the emergence of complex behaviors. We study self-assembly to increase the scenario's complexity for our minimal surprise approach and, at the same time, limit the complexity of our simulations to a grid world to manage the feasibility of this approach. We investigate the impact of different swarm densities and the shape of the environment on the emergent patterns. Furthermore, we study how evolution can be biased towards the emergence of desired patterns. We analyze the resilience of the resulting self-assembly behaviors by causing damages to the assembled pattern and observe the self-organized reassembly of the structure. In summary, we evolved swarm behaviors for resilient self-assembly and successfully engineered self-organization in simulation. In future work, we plan to transfer our approach to a swarm of real robots.

Foundations

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

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