Probabilistic Path Planning for UAVs in Forest Fire Monitoring: Enhancing Patrol Efficiency through Risk Assessment

Fire Pub Date : 2024-07-17 DOI:10.3390/fire7070254
Yuqin Wang, Fengsen Gao, Minghui Li
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Abstract

Forest fire is a significant global natural disaster, and unmanned aerial vehicles (UAVs) have gained attention in wildfire prevention for their efficient and flexible monitoring capabilities. Proper UAV patrol path planning can enhance fire-monitoring accuracy and response speed. This paper proposes a probabilistic path planning (PPP) module that plans UAV patrol paths by combining real-time fire occurrence probabilities at different points. Initially, a forest fire risk logistic regression model is established to compute the fire probabilities at different patrol points. Subsequently, a patrol point filter is applied to remove points with low fire probabilities. Finally, combining fire probabilities with distances between patrol points, a dynamic programming (DP) algorithm is employed to generate an optimal UAV patrol route. Compared with conventional approaches, the experimental results demonstrate that the PPP module effectively improves the timeliness of fire monitoring and containment, and the introduction of DP, considering that the fire probabilities and the patrol point filter both contribute positively to the experimental outcomes. Different combinations of patrol point coordinates and their fire probabilities are further studied to summarize the applicability of this method, contributing to UAV applications in forest fire monitoring and prevention.
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无人机在林火监测中的概率路径规划:通过风险评估提高巡逻效率
森林火灾是全球性的重大自然灾害,无人飞行器(UAV)以其高效灵活的监测能力在野火预防领域备受关注。合理的无人机巡逻路径规划可以提高火情监测的准确性和响应速度。本文提出了一种概率路径规划(PPP)模块,通过结合不同点的实时火灾发生概率来规划无人机巡逻路径。首先,建立森林火灾风险逻辑回归模型,计算不同巡逻点的火灾发生概率。随后,应用巡逻点过滤器去除火灾概率低的点。最后,结合火灾概率和巡逻点之间的距离,采用动态编程(DP)算法生成最佳无人机巡逻路线。与传统方法相比,实验结果表明,考虑到火灾概率和巡逻点过滤器对实验结果都有积极的促进作用,PPP 模块有效地提高了火灾监测和遏制的及时性,并引入了 DP。通过进一步研究巡逻点坐标及其火灾概率的不同组合,总结了该方法的适用性,为无人机在林火监测和预防中的应用做出了贡献。
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