Using an Intelligent UAV Swarm in Natural Disaster Environments

J. Asbach, Souma Chowdhury, K. Lewis
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引用次数: 4

Abstract

Due to their volatile behavior, natural disasters are challenging problems as they often cannot be accurately predicted. An efficient method to gather updated information of the status of a disaster, such as the location of any trapped survivors, is extremely important to properly conduct rescue operations. To accomplish this, an algorithm is presented to control a swarm of UAVs (Unmanned Aerial Vehicles) and optimize the value of the information gathered. For this application, the UAVs are autonomously navigated with a decentralized control method. With sensor technology embedded, this swarm collects information from the environment as it operates. By using the swarm’s location history, areas of the environment that have gone the longest without exploration can be prioritized, ensuring a thorough search. Measures are also developed to prevent redundant or inefficient exploration, which would reduce the value of the gathered information. A case study of a flood scenario is examined and simulated. Through this approach, the value of the proposed swarm algorithm can be tested by tracking the number of survivors found as well as the rate at which they are discovered.
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智能无人机群在自然灾害环境中的应用
由于自然灾害的变化无常,自然灾害往往无法准确预测,因此是一个具有挑战性的问题。一种有效的方法来收集灾难状态的最新信息,例如任何被困幸存者的位置,对于正确开展救援行动至关重要。为了实现这一目标,提出了一种控制无人机群并优化收集信息价值的算法。对于这种应用,无人机采用分散控制方法自主导航。由于内置了传感器技术,这种蜂群在运行时可以从环境中收集信息。通过使用蜂群的位置历史,可以对环境中最长时间没有探索的区域进行优先排序,确保彻底搜索。还制定了措施,以防止多余或低效的勘探,因为这会降低所收集信息的价值。一个洪水情景的案例研究进行了审查和模拟。通过这种方法,可以通过跟踪发现的幸存者数量和发现的速度来测试所提出的群算法的价值。
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