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Modeling Total Solar Irradiance Variations Using Automated Classification Software on Mount Wilson Data

机译:使用Mount Wilson数据上的自动分类软件对总太阳辐照度变化进行建模

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We present the results using the AutoClass analysis application available at NASA/Ames Intelligent Systems Div. (2002) which is a Bayesian, finite mixture model classification system developed by Cheeseman and Stutz (1996). We apply this system to Mount Wilson Solar Observatory (MWO) intensity and magnetogram images and classify individual pixels on the solar surface to calculate daily indices that are then correlated with total solar irradiance (TSI) to yield a set of regression coefficients. This approach allows us to model the TSI with a correlation of better than 0.96 for the period 1996 to 2007. These regression coefficients applied to classified pixels on the observed solar surface allow the construction of images of the Sun as it would be seen by TSI measuring instruments like the Solar Bolometric Imager recently flown by Foukal et al. (Astrophys. J. 611, L57, 2004). As a consequence of the very high correlation we achieve in reproducing the TSI record, our approach holds out the possibility of creating an on-going, accurate, independent estimate of TSI variations from ground-based observations which could be used to compare, and identify the sources of disagreement among, TSI observations from the various satellite instruments and to fill in gaps in the satellite record. Further, our spatially-resolved images should assist in characterizing the particular solar surface regions associated with TSI variations. Also, since the particular set of MWO data on which this analysis is based is available on a daily basis back to at least 1985, and on an intermittent basis before then, it will be possible to estimate the TSI emission due to identified solar surface features at several solar minima to constrain the role surface magnetic effects have on long-term trends in solar energy output. Keywords Solar irradiance
机译:我们使用NASA / Ames智能系统部提供的AutoClass分析应用程序显示结果。 (2002)是由Cheeseman和Stutz(1996)开发的贝叶斯有限混合模型分类系统。我们将此系统应用于威尔逊山天文台(MWO)强度和磁图图像,并对太阳表面上的各个像素进行分类,以计算每日指数,然后将其与总太阳辐照度(TSI)相关以产生一组回归系数。这种方法使我们可以对1996年至2007年期间的TSI进行建模,相关性优于0.96。这些回归系数应用于观测到的太阳表面上的分类像素,从而可以构造TSI测量所看到的太阳图像。 Foukal等人最近使用的仪器,例如太阳太阳测温仪。 (Astrophys.J.611,L57,2004)。由于我们在复制TSI记录时实现了很高的相关性,因此我们的方法支持从地面观测结果中创建持续,准确,独立的TSI变异估计的可能性,可用于比较和识别各种卫星仪器的TSI观测结果之间存在分歧的原因,并填补了卫星记录中的空白。此外,我们的空间分辨图像应有助于表征与TSI变化相关的特定太阳表面区域。同样,由于该分析所基于的特定的MWO数据集每天至少可以追溯到1985年,并且在此之前可以断断续续地获得,因此由于确定的太阳表面特征,有可能估算TSI排放在几个太阳极小值处,以限制表面磁效应对太阳能输出的长期趋势的作用。关键词太阳辐照度

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