A Deep Learning-Based Weather Forecast System for Data Volume and Recency Analysis

Jarrett Booz, Wei Yu, Guobin Xu, D. Griffith, N. Golmie
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引用次数: 18

Abstract

Accurate weather forecast is important to our daily life and have both economic and environment impact. Through physical atmospheric models, a short period time weather can be accurately forecasted. To provide weather forecast, machines learning techniques can be used for understanding and analyzing weather patterns. In this paper, we propose a deep learning-based weather forecast system and conduct data volume and recency analysis by utilizing a real-world weather data set as a case study to demonstrate the learning ability of deep learning model. By using the Python Keras library and Pandas library1, we implement the proposed system. Based on the system, we find out not only the relationship between the prediction accuracy and data volume, but also the relationship between the prediction accuracy and data recency. Through extensive evaluations, our results show that according to the weather data we have been using, more data is beneficial to increasing the accuracy of a trained model. The recency of the data does not have a consistently significant impact on the accuracy of the trained model.1Certain commercial equipment, instruments, or materials are identified in this paper in order to specify the experimental procedure adequately. Such identification is not intended to imply recommendation or endorsement by the National Institute of Standards and Technology, nor is it intended to imply that the materials or equipment identified are necessarily the best available for the purpose.
基于深度学习的天气预报系统的数据量与近期分析
准确的天气预报对我们的日常生活很重要,对经济和环境都有影响。通过物理大气模式,可以准确预报短时间内的天气。为了提供天气预报,机器学习技术可以用于理解和分析天气模式。本文提出了一种基于深度学习的天气预报系统,并以实际天气数据集为例进行了数据量和近时性分析,验证了深度学习模型的学习能力。通过使用Python的Keras库和Pandas库1,我们实现了提出的系统。在该系统的基础上,我们不仅找到了预测精度与数据量之间的关系,还找到了预测精度与数据近时性之间的关系。通过广泛的评估,我们的结果表明,根据我们一直使用的天气数据,更多的数据有利于提高训练模型的准确性。数据的近时性对训练模型的准确性没有一致的显著影响。为了充分说明实验程序,本文对某些商业设备、仪器或材料进行了识别。这种识别并不意味着国家标准与技术研究所的推荐或认可,也不意味着所识别的材料或设备一定是用于该目的的最佳材料或设备。
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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