基于空间卷积神经网络和循环神经网络的降雨预测

Nadia Dwi Puji Lestari, Esmeralda Contessa Djamal
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引用次数: 2

摘要

降雨受气温、湿度、降雨量、风速和南方涛动指数(SOI)等气候因素的影响。小气候允许局地降雨,因此有必要考虑一些观测站的气候变量。本研究涉及三个站点的多变量进行空间分析。每个变量以时间序列记录。因此,本文提出了利用时空分析预测周降雨量的方法。利用邻近的三个BMKG气象站(Tangerang地球物理站、Budiarto气象站和South Tangerang地球物理站)12年(2010-2021)的气候变量获取空间信息。提出了二维卷积神经网络(CNN)和递归神经网络(RNN)方法从气候数据中提取时空特征。结果表明,与1D CNN模型相比,该模型的最佳准确率为87.80%,平均准确率为80.21%。该研究表明,空间特征对于提高精度至关重要,因为周围天气变量相互影响,并且在建模中需要存在相关性。此外,本研究还将所提出的模型与3D CNN方法进行了比较。由于3D CNN提取过于依赖于空间特征的提取,缺乏优化的时间信息,2D CNN- rnn模型的准确率比3D CNN高出12.46%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rainfall Prediction using Spatial Convolutional Neural Networks and Recurrent Neural Networks
Rainfall is influenced by climate factors such as air temperature, humidity, rainfall, wind speed, and the Southern Oscillation Index (SOI). Microclimate allows local rain to occur, so it is necessary to consider climatic variables from some observation stations. This research involved multi variables of three stations for spatial analysis. Each variable is recorded in time series. So, this paper proposed spatial and temporal analysis in predicting weekly rainfall. Spatial information was obtained from climate variables of three adjacent Meteorological, Climatology, and Geophysics Agency (BMKG) stations: Tangerang Geophysics Station, Budiarto Meteorology Station, and South Tangerang Geophysics station, for twelve years (2010-2021). The 2D Convolutional Neural Network (CNN) and Recurrent Neural Network (RNN) methods were proposed to extract spatial-temporal features from climate data. As a result, the proposed model had the best accuracy of 87.80% compared to the 1D CNN model, with an average accuracy of 80.21%. This study shows that spatial features are essential to increase accuracy because the surrounding weather variables influence each other, and there needs to be a correlation in modeling. In addition, this research also compares the proposed model with the 3D CNN method. As a result, the accuracy of the 2D CNN-RNN model outperformed the 3D CNN by 12.46% higher because 3D CNN extraction was too dependent on the extraction of spatial features and lacked optimizing temporal information.
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