Optimal Arrangement Strategy of Unmanned Aerial Vehicle Fire Monitoring Based on Comprehensive Evaluation Model-Take the Impact of the Australian Fire Season on the State of Victoria

Rongxia Huang, Jingwei Zhu Zhu, Xiaowei Li, Ketai Yu, Guoqing Cui

Abstract


The fires seasons in Australia have disastrous impacts on Victoria. In order to enable the commanding center to obtain the information of the fires front-line in time so that conduct the front-line firefighters safely and effectively is one of the core tasks. Based on the evaluation model, this paper determines the optimal number and combination of the two UAVs, adapts to the occurrence of extreme fire in the future, and provides fire information for the command center in time. We decide the best solution for 38 SSA drones and 14 radio-repeater drones.


Keywords


Comprehensive Evaluation Model; Bush Fires in Australia; Working Drones

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References


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DOI: https://doi.org/10.18686/pes.v3i2.1401

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