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Integrated Noise and Safety Management in UAM via A Unified Reinforcement Learning Framework

Published: August 22, 2025 | arXiv ID: 2508.16440v1

By: Surya Murthy , Zhenyu Gao , John-Paul Clarke and more

Potential Business Impact:

Makes flying cars quiet and safe.

Business Areas:
Drone Management Hardware, Software

Urban Air Mobility (UAM) envisions the widespread use of small aerial vehicles to transform transportation in dense urban environments. However, UAM faces critical operational challenges, particularly the balance between minimizing noise exposure and maintaining safe separation in low-altitude urban airspace, two objectives that are often addressed separately. We propose a reinforcement learning (RL)-based air traffic management system that integrates both noise and safety considerations within a unified, decentralized framework. Under this scalable air traffic coordination solution, agents operate in a structured, multi-layered airspace and learn altitude adjustment policies to jointly manage noise impact and separation constraints. The system demonstrates strong performance across both objectives and reveals tradeoffs among separation, noise exposure, and energy efficiency under high traffic density. The findings highlight the potential of RL and multi-objective coordination strategies in enhancing the safety, quietness, and efficiency of UAM operations.

Page Count
14 pages

Category
Computer Science:
Multiagent Systems