Oh Donggeun, Han Junghee
Hyundai Autoever, Teheran-Ro 114, Seoul 06176, Korea.
School of Electronics and Information Engineering, Korea Aerospace University, 76 Hanggongdaehang-ro, Goyang-si 10540, Korea.
Sensors (Basel). 2021 Oct 13;21(20):6810. doi: 10.3390/s21206810.
UAVs (Unmanned Aerial Vehicles) have been developed and adopted for various fields including military, IT, agriculture, construction, and so on. In particular, UAVs are being heavily used in the field of disaster relief thanks to the fact that UAVs are becoming smaller and more intelligent. Search for a person in a disaster site can be difficult if the mobile communication network is not available, and if the person is in the GPS shadow area. Recently, the search for survivors using unmanned aerial vehicles has been studied, but there are several problems as the search is mainly using images taken with cameras (including thermal imaging cameras). For example, it is difficult to distinguish a distressed person from a long distance especially in the presence of cover. Considering these challenges, we proposed an autonomous UAV smart search system that can complete their missions without interference in search and tracking of castaways even in disaster areas where communication with base stations is likely to be lost. To achieve this goal, we first make UAVs perform autonomous flight with locating and approaching the distressed people without the help of the ground control server (GCS). Second, to locate a survivor accurately, we developed a genetic-based localization algorithm by detecting changes in the signal strength between distress and drones inside the search system. Specifically, we modeled our target platform with a genetic algorithm and we re-defined the genetic algorithm customized to the disaster site's environment for tracking accuracy. Finally, we verified the proposed search system in several real-world sites and found that it successfully located targets with autonomous flight.
无人机(无人驾驶飞行器)已被开发并应用于包括军事、信息技术、农业、建筑等在内的各个领域。特别是,由于无人机变得越来越小且越来越智能,它们在救灾领域得到了大量应用。如果移动通信网络不可用,或者人员处于GPS信号盲区,在灾难现场搜寻人员可能会很困难。最近,利用无人机搜寻幸存者的研究已经展开,但由于搜寻主要使用相机(包括热成像相机)拍摄的图像,存在几个问题。例如,特别是在有遮蔽物的情况下,很难从远距离分辨出遇险人员。考虑到这些挑战,我们提出了一种自主无人机智能搜索系统,即使在可能与基站失去通信的灾区,该系统也能在不受干扰的情况下完成对遇难者的搜索和追踪任务。为实现这一目标,我们首先让无人机在没有地面控制服务器(GCS)帮助的情况下,自主飞行定位并接近遇险人员。其次,为了准确找到幸存者,我们通过检测搜索系统内遇险者与无人机之间信号强度的变化,开发了一种基于遗传算法的定位算法。具体来说,我们用遗传算法对目标平台进行建模,并针对灾难现场环境重新定义遗传算法以提高跟踪精度。最后,我们在几个实际地点对所提出的搜索系统进行了验证,发现它能够通过自主飞行成功定位目标。