Rainfall Forecasting with Variational Autoencoders and LSTMs

Eron Neill, Gülüstan Dogan
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Abstract

In this paper we present a case study using a novel machine learning system for rainfall forecasting in a localized area over Colombia, South America. We explore a new forecasting approach inspired by established techniques used in computer vision and generative modeling to create a predictive model for precipitation maps. Using an ensemble made of a Variational Autoencoder and a stacked LSTM we were able to create a system which learns the spatial and temporal features of weather patterns in an integrated way, but also allows them to be measured and studied independently. Such a system introduces practical benefits in applications such as detection of rare weather patterns or analysis of anomalous events in addition to its regular forecasting capabilities.
用变分自编码器和lstm进行降雨预报
在本文中,我们提出了一个案例研究,使用一种新的机器学习系统来预测南美洲哥伦比亚局部地区的降雨。我们探索了一种新的预测方法,灵感来自于计算机视觉和生成建模中使用的成熟技术,以创建降水图的预测模型。使用由变分自编码器和堆叠LSTM组成的集成,我们能够创建一个系统,该系统以综合的方式学习天气模式的时空特征,但也允许它们被单独测量和研究。这种系统除了具有常规的预报能力外,还在诸如检测罕见天气模式或分析异常事件等应用中带来了实际的好处。
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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