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Best optimizer selection for predicting bushfire occurrences using deep learning

机译:使用深度学习预测丛林大火事件的最佳优化选择

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摘要

Natural disasters like bushfires pose a catastrophic threat to the Australia and the world's territorial areas. This fire spreads in a wide area within seconds, and therefore, it is complicated and challenging to mitigate. To minimize risk and increase resilience, identifying bushfire occurrences beforehand and takes necessary actions is critically important. This study focuses on using deep learning technology for predicting bushfire occurrences using real weather data in any given location. Real-time and off-line weather data was collected using Weather Underground API, from 2012 to 2017 (N=128,329 The obtained weather data are temperature, dew point, pressure, wind speed, wind direction, humidity, and daily rain. An algorithm was developed to collect this data automatically from any destination. Six different optimizer models were analyzed that use in deep learning technology. Then, the comparison was carried out to identify the best model. Selecting an optimizer for training the neural network, in this case, deep learning is a challenging task. Six best optimizers were chosen to compare and identify the best optimizer to estimate potential fire occurrences in given locations. The six optimizers;Adagrad, Adadelta, RMSprop, Adam, Nadam, andSGDwere compared based on their processing time, prediction accuracy and error. Our findings suggestAdagradoptimizer provides less prediction time which is a critical factor for fast-spreading bushfires. Our work provides a data collection model for disaster prediction, which could be utilized to collect climatic characteristics and topographical characteristics in with larger samples. The developed methodology could be utilized as a natural disaster prediction model for precise predictions with less error and processing time using real-time data. This study provides an enhanced understanding of finding the locations that fire starts or spot fires which are more likely to occur, and lead to identifying of fire starts that are more likely to spread. Graphic abstract
机译:像丛林大火这样的自然灾害对澳大利亚和世界领土地区构成了灾难性的威胁。这种火灾在几秒钟内在广阔的区域中传播,因此,减轻了很复杂和挑战。为了最大限度地减少风险和增加弹性,事先识别丛林火灾事件,需要采取必要的行动是至关重要的。本研究侧重于使用深度学习技术来预测使用任何给定位置的真实天气数据的灌木丛出现。使用天气地下API收集实时和离线天气数据,从2012年到2017年(N = 128,329个获得的天气数据是温度,露点,压力,风速,风向,湿度和日常雨。一种算法开发了从任何目的地自动收集此数据。分析了六种不同的优化器模型,用于深入学习技术。然后,进行比较以识别最佳模型。选择用于训练神经网络的优化器,在这种情况下,深度学习是一个具有挑战性的任务。选择了六个最佳优化器,以比较和识别最佳优化器来估算给定位置的潜在火灾发生。六位优化器;基于他们的处理时间比较了六个优化器; Adagrad,Adadelta,RMSProp,Adam,Nadam,Andsgdwere,预测准确性和错误。我们的调查结果表明Adadagoptimizer提供了更少的预测时间,这是快速扩散丛林大火的关键因素。我们的工作提供了数据收集灾害预测的离子模型,可用于利用较大样品收集气候特征和地形特征。开发方法可以用作自然灾害预测模型,以便使用实时数据的误差和处理时间较少。本研究提供了提高了解发现火灾开始或斑点火灾更有可能发生的地点的理解,并导致识别更容易传播的火灾开始。图形摘要

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