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Semi-Supervised Learning for Integration of Aerosol Predictions from Multiple Satellite Instruments

机译:半监督学习,用于整合来自多个卫星仪器的气溶胶预测

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Aerosol Optical Depth (AOD),recognized as one of the most important quantities in understanding and predicting the Earth’s climate,is estimated daily on a global scale by several Earth-observing satellite instruments.Each instrument has different coverage and sensitivity to atmospheric and surface conditions,and,as a result,the quality of AOD estimated by different instruments varies across the globe.We present a method for learning how to aggregate AOD estimations from multiple satellite instruments into a more accurate estimation.The proposed method is semi-supervised,as it is able to learn from a small number of labeled data,where labels come from a few accurate and expensive ground-based instruments,and a large number of unlabeled data.The method uses a latent variable to partition the data,so that in each partition the expert AOD estimations are aggregated in a different,optimal way.We applied the method to combine AOD estimations from 5 instruments aboard 4 satellites,and the results indicate that it can successfully exploit labeled and unlabeled data to produce accurate aggregated AOD estimations.
机译:气溶胶光学深度(AOD)被公认为是了解和预测地球气候的最重要量之一,每天由几颗对地观测卫星仪器在全球范围内进行估算。每种仪器对大气和地面条件的覆盖范围和敏感度都有所不同因此,全球范围内不同仪器估算的AOD的质量各不相同。我们提出了一种方法,用于学习如何将来自多个卫星仪器的AOD估算汇总到更准确的估算中。它能够从少量标记数据中学习,其中标记来自一些精确且昂贵的地面仪器,以及大量未标记数据。该方法使用潜在变量对数据进行分区,因此在每个划分专家的AOD估计值以不同的最佳方式进行汇总。我们应用了该方法,将4颗卫星上5台仪器的AOD估计值与ults表明它可以成功地利用标记和未标记的数据来生成准确的汇总AOD估计值。

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