Single-Valued Neutrosophic MCDM Approaches Integrated with MEREC and RAM for the Selection of UAVs in Forest Fire Detection and Management

Mai Mohamed, Amira Salam, Jun Ye, Rui Yong
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Abstract

In recent times, the world has experienced a rise in the frequency of forest fires. These fires cause severe economic damage and pose a significant threat to human lives. Therefore, it is essential to search for solutions that can help combat fires and detect them early. Once a fire reaches a certain level, it becomes challenging to control it. Various systems have been proposed to collect data and detect forest fires, such as satellites and other traditional methods. However, these solutions have been ineffective in terms of cost, coverage of large areas, accuracy, and the safety of human lives. To address these limitations, Unmanned Aerial Vehicles (UAVs) or drones have been used for detecting, combatting, and early warning of forest fires. UAVs are one of the modern technologies that have achieved great progress in monitoring natural disasters and have been widely used in monitoring, detecting, and predicting fires. They can fly without a human pilot on board, which makes them ideal for preserving human life. In addition, they are equipped with firefighting tools and various tools for remote sensing. This is to take high-quality photos or videos of the area to be detected. Different types of UAVs are used to fight fires, and here decision-makers face a problem in choosing between these types. Therefore, this research proposes a new MCDM model integrated with neutrosophic sets for selecting the optimal UAV to combat forest fires; therefore it helps in effectively detecting and fighting the fire. The proposed model integrates a Method based on Removal Effects of Criteria (MEREC) and Root Assessment Method (RAM) with the context of neutrosophic sets that effectively deal with ambiguity for selecting the optimal UAV which use in the detection and combat forest fires.
与 MEREC 和 RAM 相结合的单值中性 MCDM 方法用于林火探测和管理中的无人机选择
近来,全球森林火灾频发。这些火灾造成了严重的经济损失,并对人类生命构成了重大威胁。因此,寻找有助于扑灭火灾并及早发现火灾的解决方案至关重要。一旦火灾达到一定程度,控制火灾就变得十分困难。人们提出了各种收集数据和探测森林火灾的系统,如卫星和其他传统方法。然而,这些解决方案在成本、大面积覆盖率、准确性和人类生命安全等方面效果不佳。为了解决这些局限性,无人驾驶飞行器(UAV)或无人机已被用于森林火灾的探测、扑救和预警。无人飞行器是在监测自然灾害方面取得巨大进步的现代技术之一,已被广泛用于监测、探测和预测火灾。它们可以在无人驾驶的情况下飞行,这使它们成为保护人类生命的理想选择。此外,它们还配备了消防工具和各种遥感工具。这是为了拍摄探测区域的高质量照片或视频。灭火时会用到不同类型的无人机,这就给决策者带来了选择难题。因此,本研究提出了一种集成了中性集的新型 MCDM 模型,用于选择最佳的无人机来扑灭森林火灾,从而帮助有效地探测和扑灭火灾。所提出的模型将基于消除标准影响的方法(MEREC)和根评估方法(RAM)与中性集相结合,有效地处理了模糊性问题,从而选择出用于探测和扑灭森林火灾的最佳无人机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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