Modular Reinforcement Learning For Cooperative Swarms

📅 2026-05-06
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📝 Abstract
A cooperative robot swarm is a collective of computationally-limited robots that share a common goal. Each robot can only interact with a small subset of its peers, without knowing how this affects the collective utility. Recent advances in distributed multi-agent reinforcement learning have demonstrated that it is possible for robots to learn how to interact effectively with others, in a manner that is aligned with the common goal, despite each robot learning independently of others. However, this requires each robot to represent a potentially combinatorial number of interaction states, challenging the memory capabilities of the robots. This paper proposes an alternative approach for representing spatial interaction states for multi-robot reinforcement learning in swarms. A modular (decomposed) representation is used, where each feature of the state is handled by a separate learning procedure, and the results aggregated. We demonstrate the efficacy of the approach in numerous experiments with simulated robot swarms carrying out foraging.
Problem

Research questions and friction points this paper is trying to address.

cooperative swarms
multi-agent reinforcement learning
state representation
memory constraints
combinatorial explosion
Innovation

Methods, ideas, or system contributions that make the work stand out.

Modular Reinforcement Learning
Cooperative Swarms
Spatial Interaction States
Multi-Agent Reinforcement Learning
State Decomposition
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