森林火灾风险预测触发物联网重构行动

Tuan Nguyen-Anh, Quan Le-Trung
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引用次数: 2

摘要

如今,为了适应不断变化的环境条件和应用需求,对物联网节点的需求不断增加,这迅速提高了对现有物联网节点进行重新配置的需求。森林火灾是环境退化的主要原因之一,其检测和预测是一项挑战,这是预测物联网重构的一个案例研究。每种预测算法都有各自的优缺点,这就导致了针对每种具体物联网应用重构行为的预测结果不同。确定哪一组指标对预测是有效的是很重要的。本工作的目的是选择最合适的预测算法来检测森林火灾风险,以触发物联网重构动作。在这项工作中,对各种预测算法进行了比较研究。性能指标基于准确性、精密度、召回率和训练时间。实验结果表明,前馈神经网络的预测精度最高,具有较好的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Forest Fire Risk to Trigger IoTs Reconfiguration Action
Nowadays, the ever-increasing demand for IoT nodes for adapting to changing environment conditions and application requirements rapidly raising the need of reconfiguring already existing IoTs nodes. Forest fires is one of the main causes of environmental degradation and its detection and prediction is a challenge, a case study of predicting IoTs reconfiguration. Each prediction algorithm has its own advantages and disadvantages, which lead to different predictive results for each specific IoT application reconfiguration behavior. It is important to determine which set of metrics are effective for predicting. The objective of this work is to choose the most suitable prediction algorithms for detection of Forest Fire Risk for trigger IoTs reconfiguration actions. In this work, a comparative study between various prediction algorithms is carried out. The performance metric is based on the accuracy, precision, recall, and the training time. The experimental results show that Feedforward Neural Network is the most accurate that gives a good prediction accuracy.
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