The Earth's primary source of energy is the radiant energy generated by the Sun, which is referred to as solar irradiance, or total solar irradiance (TSI) when all of the radiation is measured. A minor change in the solar irradiance can have a significant impact on the Earth's climate and atmosphere. As a result, studying and measuring solar irradiance is crucial in understanding climate changes and solar variability. Several methods have been developed to reconstruct total solar irradiance for long and short periods of time; however, they are physics-based and rely on the availability of data, which does not go beyond 9,000 years. In this paper we propose a new method, called TSInet, to reconstruct total solar irradiance by deep learning for short and long periods of time that span beyond the physical models' data availability. On the data that are available, our method agrees well with the state-of-the-art physics-based reconstruction models. To our knowledge, this is the first time that deep learning has been used to reconstruct total solar irradiance for more than 9,000 years.
翻译:地球的主要能源来源是太阳产生的光亮能量,在测量所有辐射时被称为太阳辐照,或太阳辐照总量(TSI),太阳辐照量的微小变化可能对地球的气候和大气产生重大影响。因此,研究和测量太阳辐照量对于了解气候变化和太阳变异性至关重要。已经开发了多种方法,以长期和短期重建太阳总辐照量;然而,它们是以物理学为基础的,并依赖于数据的可获得性,数据不超过9000年。在本文中,我们提出了一个名为TSInet的新方法,通过深入学习,在超出物理模型数据可用性的短长时期内重建太阳辐照总量。根据现有数据,我们的方法与以物理学为基础的最新重建模型完全一致。据我们所知,这是首次利用深层学习来重建太阳辐照总量超过9000年。