IEEE Access (Jan 2024)

A Reinforcement Learning Approach to Military Simulations in Command: Modern Operations

  • Adonisz Dimitriu,
  • Tamas V. Michaletzky,
  • Viktor Remeli,
  • Viktor R. Tihanyi

DOI
https://doi.org/10.1109/ACCESS.2024.3406148
Journal volume & issue
Vol. 12
pp. 77501 – 77513

Abstract

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This paper presents a Reinforcement Learning (RL) framework for Command: Modern Operations (CMO), an advanced Real Time Strategy (RTS) game that simulates military operations. CMO challenges players to navigate tactical, operational, and strategic decision-making, involving the management of multiple units, effective resource allocation, and concurrent action assignment. The primary objective of this research is automating and enhancing military decision-making, utilizing the capabilities of RL. To achieve this goal, a parameterized Proximal Policy Optimization (PPO) agent with a unique architecture has been developed, specifically designed to address the unique challenges presented by CMO. By adapting and extending methodologies from achievements in the domain, such as AlphaStar and OpenAI Five, the agent showcases the potential of RL in military simulations. Our model can handle a wide range of scenarios presented in CMO, marking a significant step towards the integration of Artificial Intelligence (AI) with military studies and practices. This research establishes the groundwork for future explorations in applying AI to defense and strategic analysis.

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