Natural and human-made disasters can cause severe devastation and claim thousands of lives worldwide. Therefore, developing efficient methods for disaster response and management is a critical task for relief teams. One of the most essential components of effective response is the rapid collection of information about affected areas, damages, and victims. More data translates into better coordination, faster rescue operations, and ultimately, more lives saved. However, in some disasters, such as earthquakes, the communication infrastructure is often partially or completely destroyed, making it extremely difficult for victims to send distress signals and for rescue teams to locate and assist them in time. Unmanned Aerial Vehicles (UAVs) have emerged as valuable tools in such scenarios. In particular, a fleet of UAVs can be dispatched from a mobile station to the affected area to facilitate data collection and establish temporary communication networks. Nevertheless, real-world deployment of UAVs faces several challenges, with adverse weather conditions--especially wind--being among the most significant. To address this, we develop a novel mathematical framework to determine the optimal location of a mobile UAV station while explicitly accounting for the heterogeneity of the UAVs and the effect of wind. In particular, we generalize the Sylvester problem to introduce the Sylvester-Fermat-Torricelli (SFT) problem, which captures complex factors such as wind influence, UAV heterogeneity, and back-and-forth motion within a unified framework. The proposed framework enhances the practicality of UAV-based disaster response planning by accounting for real-world factors such as wind and UAV heterogeneity. Experimental results demonstrate that it can reduce wasted operational time by up to 84%, making post-disaster missions significantly more efficient and effective.
翻译:自然与人为灾害在全球范围内可能造成严重破坏并夺去数千生命。因此,为救援团队开发高效的灾害响应与管理方法是一项关键任务。有效响应的核心要素之一是快速收集受灾区域、损毁状况及受灾人员的信息。更多数据意味着更优的协调、更快的救援行动,并最终挽救更多生命。然而,在地震等灾害中,通信基础设施常遭到部分或完全破坏,使得受灾人员极难发送求救信号,救援团队也难以及时定位并实施援助。无人机在此类场景中已成为重要工具。具体而言,可从移动基站派遣无人机编队前往受灾区域,以促进数据收集并建立临时通信网络。然而,无人机的实际部署面临诸多挑战,其中恶劣天气条件——特别是风——是最重要的影响因素之一。为此,我们开发了一种新颖的数学框架,用于确定移动无人机基站的最优位置,同时显式考虑无人机的异构性及风场效应。具体而言,我们将西尔维斯特问题推广至西尔维斯特-费马-托里切利问题,该框架在一个统一体系内捕捉了风场影响、无人机异构性及往返运动等复杂因素。所提出的框架通过纳入风场和无人机异构性等现实因素,增强了基于无人机的灾害响应规划的实际可行性。实验结果表明,该框架最高可减少84%的无效作业时间,从而显著提升灾后任务的执行效率与效果。