Control of Cellular Automata by Moving Agents with Reinforcement Learning
Franco Bagnoli, Bassem Sellami, Amira Mouakher, Samira El Yacoubi
- Year
- 2026
- Access
- Open access
Abstract
In this exploratory paper we introduce the problem of cognitive agents that learn how to modify their environment according to local sensing to reach a global goal. We concentrate on discrete dynamics (cellular automata) on a two-dimensional system. We show that agents may learn how to approximate their goal when the environment is passive, while this task becomes impossible if the environment follows an active dynamics.
Keywords
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