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Fog-assisted IoT-enabled scalable network infrastructure for wildfire surveillance

机译:对野火监控的雾辅助IOT可扩展网络基础设施

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Forest fires frequently termed as wildfires are fiercely destructive disasters causing enormous ecological and economic damage, as well as the loss of human lives. Global predictions for increased incidence and destructiveness of forest fires due to warming climate, drought conditions, urbanization and arson highlight the importance of an effective forest fire mitigation and management approach. Internet of Things (IoT) is well suited to ubiquitously assess the time-critical parameters for effective and reliable prediction of forest fires. This paper presents a novel Fog-assisted IoT-enabled framework for early prediction and forecasting of wildfires. The framework includes proposals for efficient energy utilization of the resource-constrained sensors responsible for wildfire monitoring by adapting the sampling rate of Wildfire Causing Attributes (WCAs) at Fog Layer. Moreover, the time enriched sampled data is further analyzed at Cloud Layer for predicting and forecasting the susceptibility of a forest block to wildfire outbreak. In addition, the forest area (in hectares) that could possibly be burnt in the event of wildfire outbreak is also predicted. Experimentation and performance analysis of the proposed system reveal that high values of accuracy, sensitivity, specificity, and precision averaging to 95.45%, 96.08%, 94.63%, and 95.64% respectively are registered for wildfire susceptibility prediction. Furthermore, Mean Absolute Error (MAE), Mean Square Error (MSE) and Root Mean Square Error (RMSE) values averaging to 0.25, 0.25 and 0.5 respectively are registered for wildfire susceptibility forecasting. Lastly, the efficacy of the proposed framework can also be derived from the real-time alert generation in the event of high wildfire susceptibility level.
机译:由于野火经常被称为野火的森林火灾是激烈的破坏性灾害,导致巨大的生态和经济损失,以及人类生命的丧失。由于温暖的气候,干旱条件,城市化和纵火,森林火灾发病率和破坏性增加的全球预测突出了有效森林防火和管理方法的重要性。事物互联网(物联网)非常适合于普遍存在评估森林火灾的有效和可靠预测的时间关键参数。本文提出了一种新颖的雾辅助IOT的IOT,可用于野火的早期预测和预测。该框架包括通过调整野火的采样率导致雾层的野火的采样率来高效能量利用负责野火监测的资源受限传感器的建议。此外,在云层进一步分析了富集的采样数据,以预测和预测森林块对野火爆发的敏感性。此外,还预测了在野火爆发发生的森林区域(公顷),可能被烧毁。所提出的系统的实验和性能分析显示,对于野火易感预测,分别对野火敏感性预测分别的预算,敏感度,特异性,精度平均值高达95.45%,96.08%,95.64%。此外,平均平均为0.25,0.25和0.5分别的平均绝对误差(MAE),平均误差(MSE)和均方根误差(RMSE)值分别用于野火易感预测。最后,在高野火敏感性水平的情况下,所提出的框架的功效也可以从实时警报生成中得出。

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