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Deep Neural Network Based Feature Representation for Weather Forecasting

机译:基于深度神经网络的天气预报特征表示

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This paper concentrated on a new application of Deep Neural Network (DNN) approach. The DNN, also widely known as Deep Learning(DL), has been the most popular topic in research community recently. Through the DNN, the original data set can be represented in a new feature space with machine learning algorithms, and intelligence models may have the chance to obtain a better performance in the "learned" feature space. Scientists have achieved encouraging results by employing DNN in some research fields, including Computer Vision, Speech Recognition, Natural Linguistic Programming and Bioinformation Processing. However, as an approach mainly functioned for learning features, DNN is reasonably believed to be a more universal approach: it may have the potential in other data domains and provide better feature spaces for other type of problems. In this paper, we present some initial investigations on applying DNN to deal with the time series problem in meteorology field. In our research, we apply DNN to process the massive weather data involving millions of atmosphere records provided by The Hong Kong Observatory (HKO). The obtained features are employed to predict the weather change in the next 24 hours. The results show that the DNN is able to provide a better feature space for weather data sets, and DNN is also a potential tool for the feature fusion of time series problems.
机译:本文重点介绍了深度神经网络(DNN)方法的新应用。 DNN,也被广泛称为深度学习(DL),是最近在研究界中最受欢迎的话题。通过DNN,原始数据集可以使用机器学习算法在新的特征空间中表示,并且智能模型可能有机会在“学习的”特征空间中获得更好的性能。通过在计算机视觉,语音识别,自然语言程序设计和生物信息处理等一些研究领域中使用DNN,科学家取得了令人鼓舞的结果。但是,作为一种主要用于学习特征的方法,可以合理地认为DNN是一种更为通用的方法:它可能在其他数据域中具有潜力,并为其他类型的问题提供了更好的特征空间。在本文中,我们对使用DNN处理气象领域中的时间序列问题进行了一些初步研究。在我们的研究中,我们使用DNN处理由香港天文台(HKO)提供的涉及数百万条大气记录的海量气象数据。获得的特征用于预测未来24小时的天气变化。结果表明,DNN能够为天气数据集提供更好的特征空间,并且DNN也是时间序列问题的特征融合的潜在工具。

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