Reconstructing the ozone concentration profile using machine learning methods

D. Vrazhnov
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Abstract

The main greenhouse gases are ozone and the gas components of ozone cycles. Operational determination of ozone concentration profiles is carried out by lidar methods, which limits the number of measurements obtained. Machine learning methods can be used to build predictive models of the data as well as to approximate them. This paper investigates the possibility of generating data to build robust predictive models of ozone concentration profiles based on generative adversarial neural networks (GAN). Several GAN architectures were proposed and the benefits of each one is discussed.
利用机器学习方法重建臭氧浓度曲线
主要的温室气体是臭氧和臭氧循环的气体组分。臭氧浓度分布的操作测定是通过激光雷达方法进行的,这限制了获得的测量次数。机器学习方法可以用来建立数据的预测模型,也可以用来近似它们。本文研究了基于生成对抗神经网络(GAN)生成数据以建立臭氧浓度曲线鲁棒预测模型的可能性。提出了几种GAN结构,并讨论了每种结构的优点。
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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