论文标题
网络无人机进行工业紧急事件
Networked Drones for Industrial Emergency Events
论文作者
论文摘要
来自工业事故和灾难的气体排放不受控制,导致生命和财产损失巨大。这样的极端事件需要对现场进行快速可靠的调查,以进行有效的救援策略计划。为了实现这些目标,可以部署一个无人驾驶飞机网络,该网络调查受影响地区并确定安全和危险区域。尽管在文献中对基于无人机的单一基于无人机的系统进行了充分研究,但是针对此类应用程序的部署进行了研究,该应用程序更加稳健和容忍度仍然处于起步阶段。该项目的目的是设计一个可以在紧急情况下部署的系统,以便在给定区域中快速调查和确定安全且危险的区域,该区域包含有毒羽流,而无需对羽状位置进行任何假设。我们专注于端到端解决方案,并制定了两相策略,该策略不仅可以保证羽流的检测/采集,而且可以通过高空间分辨率进行表征。为了确保通过一定的空间分辨率覆盖该地区,我们设置了车辆路由问题。为了克服有限范围的传感器和无人机资源所施加的局限性,我们使用高斯核外推估计浓度图。最后,我们评估了模拟中建议的框架。我们的结果表明,这种两阶段策略不仅提供了更好的错误性能,而且在任务时间方面也更有效。此外,2阶段随机搜索与2相均匀覆盖范围之间的比较表明,后者对单个无人机系统更好,而对于多个无人机,前者以低计算成本提供了合理的性能。
Uncontrolled emissions of gases from industrial accidents and disasters result in huge loss of life and property. Such extreme events require a quick and reliable survey of the site for effective rescue strategy planning. To achieve these goals, a network of unmanned aerial vehicles can be deployed that survey the affected region and identify safe and danger zones. Although single UAV-based systems for gas sensing applications are well-studied in literature, research on the deployment of a UAV network for such applications, which is more robust and fault tolerant, is still in infancy. The objective of this project is to design a system that can be deployed in emergency situations to provide a quick survey and identification of safe and dangerous zones in a given region that contains a toxic plume without making any assumptions about plume location. We focus on an end-to-end solution and formulate a two-phase strategy that can not only guarantee detection/acquisition of plume but also its characterization with high spatial resolution. To guarantee coverage of the region with a certain spatial resolution, we set up a vehicle routing problem. To overcome the limitations imposed by limited range of sensors and drone resources, we estimate the concentration map by using Gaussian kernel extrapolation. Finally, we evaluate the suggested framework in simulations. Our results suggest that this two-phase strategy not only gives better error performance but is also more efficient in terms of mission time. Moreover, the comparison between 2-phase random search and 2-phase uniform coverage suggest that the latter is better for single drone systems whereas for multiple drones the former gives reasonable performance at low computational cost.