基于深度学习的递归神经网络区域热浪预测

Saqiba Juna, Sanam Narejo, M. M. Jawaid
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引用次数: 0

摘要

热浪的频率和严重程度的增加是全球变暖导致气温升高的结果。由于世界环境的变化,各种可靠的预测模型的性能有所下降。LSTM神经网络,以及其他基于深度学习的递归神经网络算法,被用来开发一个可靠的模型来预测热浪的最高温度。在这项研究中,我们建立了一个基于百分位数的预测最高温度阈值,并使用基于LSTM的预测模型来预测热浪。本研究采用LSTM算法来确定一次强热浪的近似最高温度。结果表明,基于深度学习LSTM模型的百分位方法可以快速有效地解决这一问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regional Heatwave Prediction Using deep learning based Recurrent Neural Network
The increased frequency and severity of heatwaves are a result of global warming’s increasing temperatures. The performance of various reliable prediction models has decreased because of changes in the world environment. LSTM neural networks, among other deep learning-based recurrent neural network algorithms, are used to develop a reliable model for the prediction of heatwave maximum temperature. In this research, we have developed a percentile-based threshold over the predicted maximum temperature to forecast heatwaves using LSTM based predictive model. The LSTM algorithm was applied in this study to determine the approximate maximum temperature for a severe heatwave. The obtained results demonstrate that the proposed percentile approach based on the deep learning LSTM model can solve this issue quickly and effectively.
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