A deep learning filter for the intraseasonal variability of the tropics

C. Stan, Rama Sesha Sridhar Mantripragada
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引用次数: 0

Abstract

This paper presents a novel application of convolutional neural network (CNN) models for filtering the intraseasonal variability of the tropical atmosphere. In this deep learning filter, two convolutional layers are applied sequentially in a supervised machine learning framework to extract the intraseasonal signal from the total daily anomalies. The CNN-based filter can be tailored for each field similarly to fast Fourier transform filtering methods. When applied to two different fields (zonal wind stress and outgoing longwave radiation), the index of agreement between the filtered signal obtained using the CNN-based filter and a conventional weight-based filter is between 95 – 99%. The advantage of the CNN-based filter over the conventional filters is its applicability to time series with the length comparable to the period of the signal being extracted.
热带季节内变化的深度学习过滤器
本文提出了卷积神经网络(CNN)模型在热带大气季节内变率滤波中的新应用。在这个深度学习滤波器中,在监督机器学习框架中依次应用两个卷积层,从总日异常中提取季节内信号。基于cnn的滤波器可以针对每个字段进行定制,类似于快速傅立叶变换滤波方法。当应用于两个不同的场(纬向风应力和向外长波辐射)时,使用基于cnn的滤波器获得的滤波信号与传统的基于权重的滤波器的一致性指数在95 - 99%之间。与传统滤波器相比,基于cnn的滤波器的优点是它适用于长度与被提取信号周期相当的时间序列。
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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