Autonomous Drone for Dynamic Smoke Plume Tracking
Autonomous Drone for Dynamic Smoke Plume Tracking
This paper presents a novel autonomous drone-based smoke plume tracking system capable of navigating and tracking plumes in highly unsteady atmospheric conditions. The system integrates advanced hardware and software and a comprehensive simulation environment to ensure robust performance in controlled and real-world settings. The quadrotor, equipped with a high-resolution imaging system and an advanced onboard computing unit, performs precise maneuvers while accurately detecting and tracking dynamic smoke plumes under fluctuating conditions. Our software implements a two-phase flight operation, i.e., descending into the smoke plume upon detection and continuously monitoring the smoke movement during in-plume tracking. Leveraging Proportional Integral-Derivative (PID) control and a Proximal Policy Optimization based Deep Reinforcement Learning (DRL) controller enables adaptation to plume dynamics. Unreal Engine simulation evaluates performance under various smoke-wind scenarios, from steady flow to complex, unsteady fluctuations, showing that while the PID controller performs adequately in simpler scenarios, the DRL-based controller excels in more challenging environments. Field tests corroborate these findings. This system opens new possibilities for drone-based monitoring in areas like wildfire management and air quality assessment. The successful integration of DRL for real-time decision-making advances autonomous drone control for dynamic environments.
Srijan Kumar Pal、Shashank Sharma、Nikil Krishnakumar、Jiarong Hong
航空航天技术自动化技术、自动化技术设备环境污染、环境污染防治
Srijan Kumar Pal,Shashank Sharma,Nikil Krishnakumar,Jiarong Hong.Autonomous Drone for Dynamic Smoke Plume Tracking[EB/OL].(2025-04-17)[2025-06-17].https://arxiv.org/abs/2504.12664.点此复制
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