探索先进的深度学习技术以实现可靠的天气预报

Ankit Kumar, Pragya Siddhi, K. Singh, Teekam Singh, D. P. Yadav, Tanupriya Choudhury
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引用次数: 0

摘要

天气预报一直是一个越来越可靠的领域,当涉及到预测和所追求的模型。而在过去的几年里,传统的方法包括传统的概率主导的依赖模型,这些传统方法的可靠性一直处于争议线,强调了改进和使用现代技术的必要性。虽然在过去的几年里,我们已经熟悉了将大量数据用于最佳用途的方法,但它只是拓宽了视野,为我们探索各种重要领域提供了空间,在这些领域,可靠性确实是必要的,可以非常利用先进技术的帮助来更加果断。物质化的深度学习技术与有关天气预报领域的大量可用观测数据相结合,吸引了足够多的研究人员来遍历大量天气数据集中隐藏的分层模式。这项研究是为了探讨各种深度学习技术,包括讨论一些先进的和最近不为人知的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Advanced Deep Learning Techniques for Reliable Weather Forecasting
Weather forecasting has always been a domain where more and more reliability is looked up to when it comes to prediction and the models pursued. While in the past years, traditional methods included conventional probability-dominated dependency models, the reliability of these traditional methods was always in a contentious line which emphasized the necessity to improve and use modern technology. While in the past few years, we became familiar with the ways that can put the huge amount of data to an optimum utility, it only widened the horizons which makes room for us to explore various important domains where reliability is indeed a necessity, that could very much use the help of advanced technology to be more decisive. The materializing deep learning techniques tied up to the humongous availability of observed data concerning the field of weather prediction have enticed enough researchers to traverse the concealed hierarchical pattern in the voluminous weather datasets. The study was done to inquire into various deep learning techniques including discussing some of the advanced and recently under-the-light methods.
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