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Multi-Agent Simulation for Coordinated Aerial Surveillance using Digital Twin and SITL Framework

Agus Budiyono, Ivan Ivan, Vishnu K Kaliappan

Abstract


The increasing complexity of aerial surveillance tasks in urban and industrial environments demands scalable, coordinated, and resilient multi-UAV systems. This paper presents a Digital Twin–Software-in-the-Loop (DT–SITL) framework for learning-based cooperative aerial surveillance, enabling systematic development and validation of multi-drone tracking behaviors prior to physical deployment. Within the proposed framework, each UAV is represented by a synchronized Digital Twin instance and controlled by a shared Proximal Policy Optimization (PPO) policy, allowing decentralized execution while preserving coordinated system-level behavior. The framework integrates UAV dynamics, target motion modeling, structured observation construction, and reward-driven multi-agent learning into a unified DT–SITL execution loop. Simulation results involving three UAVs tracking a dynamically maneuvering target demonstrate stable policy convergence, bounded tracking error, and emergent cooperative behaviors such as spatial distribution and persistent engagement. System-level analysis shows that the DT–SITL approach enables safe experimentation, repeatable evaluation, and scalable coordination analysis, establishing a practical foundation for future autonomous multi-UAV surveillance systems and their transition toward real-world deployment.

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References


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