CompDrone:迈向基于综合计算模型和社会化无人机的野火监测

Md. Tahmid Rashid, Yang Zhang, D. Zhang, Dong Wang
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引用次数: 14

摘要

森林火灾每年在世界范围内造成不可逆转的损失。因此,监测野火的传播是减轻森林火灾的一项重要任务。虽然基于计算模型的野火预测方法在监测野火行为方面提供了合理的准确性,但由于缺乏持续可用的实时气象数据,它们往往受到限制。相比之下,社交媒体驱动的无人机传感(SDS)正在成为一种新的传感范式,它可以从在线社交媒体馈送中检测森林火灾的早期迹象,并驱动无人机进行可靠的传感。然而,由于偏远地区社交媒体数据的稀缺和无人机飞行时间的限制,SDS解决方案在大规模森林火灾中往往表现不佳。在本文中,我们提出了CompDrone,这是一个野火监测框架,利用计算野火建模和SDS的共同优势进行可靠的野火监测。将计算建模和SDS整合在一起存在两个关键挑战:1)森林火灾区域社会信号的可用性有限;ii)预测无人机应该被派往的火区。为了解决上述挑战,CompDrone框架利用了来自元胞自动机、约束优化和博弈论的技术。使用真实野火数据集的评估结果表明,CompDrone在有效预测野火传播方面优于最先进的方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CompDrone: Towards Integrated Computational Model and Social Drone Based Wildfire Monitoring
Forest fires cause irreversible damages worldwide every year. Monitoring wildfire propagation is thus a vital task in mitigating forest fires. While computational model-based wildfire prediction methods provide reasonable accuracy in monitoring wildfire behavior, they are often limited due to the lack of constant availability of real-time meteorological data. In contrast, social-media-driven drone sensing (SDS) is emerging as a new sensing paradigm that detects the early signs of forest fires from online social media feeds and drives the drones for reliable sensing. However, due to the scarcity of social media data in remote regions and limited flight times of drones, SDS solutions often underperform in large-scale forest fires. In this paper, we present CompDrone, a wildfire monitoring framework that exploits the collective strengths of computational wildfire modeling and SDS for reliable wildfire monitoring. Two critical challenges exist to integrate computational modeling and SDS together: i) limited availability of social signals in the regions of a forest fire; and ii) predicting the regions of fire where the drones should be dispatched to. To solve the above challenges, the CompDrone framework leverages techniques from cellular automata, constrained optimization, and game theory. The evaluation results using a real-world wildfire dataset show that CompDrone outperforms the state-of-the-art schemes in effectively predicting wildfire propagation.
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