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R2D-RL: A RoboCup 2D Soccer Environment for Multi-Agent Reinforcement Learning

Haobin Qin, Baofeng Zhang, Hidehisa Akiyama, Keisuke Fujii

Year
2026
Access
Open access

Abstract

Robot soccer is a challenging testbed for multi-agent reinforcement learning because it combines partial observability, cooperative and adversarial interaction, sparse rewards, and long-horizon tactical behavior. RoboCup 2D Soccer Simulation (RCSS2D) provides a mature robot-soccer platform, but its competition-oriented server-client architecture is difficult to use directly with modern Python-based MARL workflows. We introduce R2D-RL, a reinforcement learning environment that connects RCSS2D and HELIOS-based player clients to a Python MARL interface through shared-memory communication and cycle-level synchronization. R2D-RL supports full-field and scenario-based training with configurable opponents, Base discrete and Hybrid parameterized action spaces, action masks, expected possession value (EPV)-based reward shaping, and parallel execution. We provide front-goal scenarios and an 11-vs-11 full-field benchmark, together with baseline results.

Keywords

RoboCupmulti-agent reinforcement learningsoccer simulationshared-memory communicationreward shaping

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