神经网络在埃塞俄比亚降雨模式模拟中的应用

IF 0.7 Q3 STATISTICS & PROBABILITY Statistical Theory and Related Fields Pub Date : 2022-10-31 DOI:10.1080/24754269.2022.2136266
Gemechu Abdisa Atomsa, Yingchun Zhou
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引用次数: 0

摘要

在本文中,我们构建了可以捕捉埃塞俄比亚降雨模式的人工神经网络模型。这些数据是从埃塞俄比亚各地的147个台站收集的。基于本地和全球数据集模式,已经创建了七个均匀的雨量站。使用Back-of-Word算法提取数据集的模式。聚类采用K-means算法。使用空间平均值对均匀化区域的每个数据进行插值。两个时间序列模型,ARMA和Facebook的Prophet,已经被拟合为每个空间平均值的基线模型。由于空间平均数据集失去了其强大的季节模式,因此两者在泛化方面都表现较弱。另一方面,与基线模型相比,所提出的长短期记忆(LSTM)是最适合的模型。LSTM的超参数已经被调整以获得最佳参数。此外,基线模型的RMSE被用作调整所使用的LSTM的基准。
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Application of neural network to model rainfall pattern of Ethiopia
In this paper, we have constructed Artificial Neural Network models which could capture rainfall pattern of Ethiopia. The data was collected from 147 stations across Ethiopia. Seven homogenized rainfall stations have been created based on both local and global patterns of datasets. Back-of-Word algorithm was used for extracting patterns of the datasets. K-means algorithm was used for clustering purpose. Each of the data of homogenized regions was interpolated using a spatial average. Two time series models, ARMA and Facebook's Prophet, have been fitted for each of spatial averages as baseline models. Both have been shown to perform weak for generalization purpose as spatially averaged datasets lose their strong seasonal pattern. On the other hand, the proposed Long Short Term Memory (LSTM) was found to be the best fitted model in comparison to the baseline models. The hyperparameters of the LSTM have been tuned to get optimal parameters. Besides, the RMSE of the baseline model was used as a benchmark for tuning the LSTM used.
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来源期刊
CiteScore
0.90
自引率
20.00%
发文量
21
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