Ha Il-Kyu
Department of Computer Engineering, Kyungil University, Gyeongsan 38428, Republic of Korea.
Sensors (Basel). 2025 May 20;25(10):3216. doi: 10.3390/s25103216.
Drones are widely used in urban air pollution monitoring. Although studies have focused on single-drone applications, collaborative applications for air pollution detection are relatively underexplored. This paper presents a 3D cube-based adaptive cooperative search algorithm that allows two drones to collaborate to explore air pollution. The search space is divided into cubic regions, and each drone explores the upper or lower halves of the cubes and collects data from their vertices. The vertex with the highest measurement is selected by comparing the collected data, and an adjacent cube-shaped search area is generated for exploration. The search continues iteratively until any vertex measurement reaches a predefined threshold. An improved algorithm is also proposed to address the divergence and oscillation that occur during the search. In simulations, the proposed method consumed 21 times less CPU time and required 23 times less search distance compared to linear search. Additionally, the cooperative search method using multiple drones was more efficient than single-drone exploration in terms of the same parameters. Specifically, compared to single-drone exploration, the collaborative drone search reduced CPU time by a factor of 2.6 and search distance by approximately a factor of 2. In experiments in real-world scenarios, multiple drones equipped with the proposed algorithm successfully detected cubes containing air pollution above the threshold level. The findings serve as an important reference for research on drone-assisted target exploration, including air pollution detection.
无人机广泛应用于城市空气污染监测。尽管已有研究聚焦于单架无人机的应用,但空气污染检测的协同应用相对较少被探索。本文提出了一种基于三维立方体的自适应协同搜索算法,该算法允许两架无人机协同探索空气污染情况。搜索空间被划分为立方体区域,每架无人机探索立方体的上半部分或下半部分,并从其顶点收集数据。通过比较收集到的数据,选择测量值最高的顶点,并生成一个相邻的立方体形状的搜索区域进行探索。搜索迭代进行,直到任何顶点测量值达到预定义阈值。还提出了一种改进算法来解决搜索过程中出现的发散和振荡问题。在模拟中,与线性搜索相比,所提方法消耗的CPU时间减少了21倍,所需搜索距离减少了23倍。此外,在相同参数下,使用多架无人机的协同搜索方法比单架无人机探索更高效。具体而言,与单架无人机探索相比,协同无人机搜索将CPU时间减少了2.6倍,搜索距离减少了约2倍。在实际场景实验中,配备所提算法的多架无人机成功检测到了包含高于阈值水平空气污染的立方体。这些发现为包括空气污染检测在内的无人机辅助目标探索研究提供了重要参考。