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Efficient multi-scale Gaussian process regression for massive remote sensing data with satGP v0.1.2

机译:具有SATGP v0.1.2的大量遥感数据的高效多尺度高斯进程回归

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Satellite remote sensing provides a global view to processes on Earth that has unique benefits compared to making measurements on the ground, such as global coverage and enormous data volume. The typical downsides are spatial and temporal gaps and potentially low data quality. Meaningful statistical inference from such data requires overcoming these problems and developing efficient and robust computational tools. We design and implement a computationally efficient multi-scale Gaussian process (GP) software package, satGP, geared towards remote sensing applications. The software is able to handle problems of enormous sizes and to compute marginals and sample from the random field conditioning on at least hundreds of millions of observations. This is achieved by optimizing the computation by, e.g.,?randomization and splitting the problem into parallel local subproblems which aggressively discard uninformative data. We describe the mean function of the Gaussian process by approximating marginals of a Markov random field (MRF). Variability around the mean is modeled with a multi-scale covariance kernel, which consists of Matérn, exponential, and periodic components. We also demonstrate how winds can be used to inform covariances locally. The covariance kernel parameters are learned by calculating an approximate marginal maximum likelihood estimate, and the validity of both the multi-scale approach and the method used to learn the kernel parameters is verified in synthetic experiments. We apply these techniques to a moderate size ozone data set produced by an atmospheric chemistry model and to the very large number of observations retrieved from the Orbiting Carbon Observatory?2 (OCO-2) satellite. The satGP software is released under an open-source license.
机译:卫星遥感为地球上的过程提供了全球视图,与在地面上进行测量相比,具有独特的益处,例如全球覆盖范围和巨大的数据量。典型的缺点是空间和时间间隙,并且可能低数据质量。来自此类数据的有意义的统计推断需要克服这些问题和开发有效和强大的计算工具。我们设计并实施计算有效的多尺度高斯过程(GP)软件包,SatGP,用于遥感应用。该软件能够处理巨大尺寸的问题,并从至少数亿观测到至少数百万天的随机场调节来计算边缘和样本。这是通过优化计算的,例如,?随机化和将问题分成并行丢弃未顺势数据的并行本地子问题。通过近似马尔可夫随机场(MRF)的边缘来描述高斯过程的平均功能。均值的可变性是用多尺度协方差内核建模的,该内核由Matérn,指数和周期性组件组成。我们还展示了风如何用来在当地通知Coveriarce。通过计算近似边际最大似然估计来学习协方差内核参数,并且在合成实验中验证了多尺度方法和用于学习内核参数的方法的有效性。我们将这些技术应用于由大气化学模型产生的适度大小的臭氧数据集,并从轨道碳观测台2(OCO-2)卫星检出的大量观察。 SatGP软件在开源许可证下发布。

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