Applying Gaussian Process Machine Learning and Modern Probabilistic Programming to Satellite Data to Infer CO2 Emissions

IF 11.3 1区 环境科学与生态学 Q1 ENGINEERING, ENVIRONMENTAL 环境科学与技术 Pub Date : 2025-02-24 DOI:10.1021/acs.est.4c09395
Seongeun Jeong, Sofia D. Hamilton, Matthew S. Johnson, Dien Wu, Alexander J. Turner, Marc L. Fischer
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Abstract

Satellite data provides essential insights into the spatiotemporal distribution of CO2 concentrations. However, many atmospheric inverse models fail to adequately incorporate the spatial and temporal correlations inherent in satellite observations and often lack rigorous methods for estimating parameters like spatial length scales. We introduce an inference model that processes the spatiotemporal covariance in satellite data and estimates hyperparameters such as covariance length scales. Our approach uses the Gaussian process (GP) machine learning (ML) and modern probabilistic programming languages (PPLs) to perform atmospheric inversions of emissions from satellite data. We develop a GP ML inversion system based on modern PPLs and the GEOS-Chem chemical transport model, simulating atmospheric CO2 concentrations corresponding to the Orbiting Carbon Observatory-2/3 (OCO-2/3) data for July 2020. In our supervised learning framework, we treat the GEOS-Chem simulated data set as the target, with predictors derived by scaling the target with sector-specific factors hidden from the GP machine. Our results show that the GP model, combined with GPU-enabled PPLs, effectively retrieves true emission scaling factors and infers noise levels concealed within the data. This suggests that our method could be applied over larger areas with more complex covariance structures, enabling comprehensive analysis of the spatiotemporal patterns observed in OCO-2/3 and similar satellite data sets.

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应用高斯过程机器学习和现代概率规划对卫星数据进行CO2排放推断
卫星数据为了解二氧化碳浓度的时空分布提供了重要信息。然而,许多大气反演模型未能充分纳入卫星观测数据固有的时空相关性,而且往往缺乏严格的方法来估算空间长度尺度等参数。我们引入了一种推理模型,该模型可以处理卫星数据中的时空协方差,并估算协方差长度尺度等超参数。我们的方法使用高斯过程(GP)机器学习(ML)和现代概率编程语言(PPL)对卫星数据中的排放进行大气反演。我们开发了一个基于现代 PPL 和 GEOS-Chem 化学传输模型的 GP ML 反演系统,模拟了 2020 年 7 月轨道碳观测站-2/3(OCO-2/3)数据对应的大气二氧化碳浓度。在我们的监督学习框架中,我们将 GEOS-Chem 模拟数据集视为目标,并利用 GP 机器中隐藏的特定部门因子对目标进行缩放,从而得出预测因子。我们的结果表明,GP 模型与 GPU 支持的 PPL 相结合,能有效检索真实的排放缩放因子,并推断出隐藏在数据中的噪声水平。这表明我们的方法可以应用于具有更复杂协方差结构的更大区域,从而能够全面分析在 OCO-2/3 和类似卫星数据集中观察到的时空模式。
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来源期刊
环境科学与技术
环境科学与技术 环境科学-工程:环境
CiteScore
17.50
自引率
9.60%
发文量
12359
审稿时长
2.8 months
期刊介绍: Environmental Science & Technology (ES&T) is a co-sponsored academic and technical magazine by the Hubei Provincial Environmental Protection Bureau and the Hubei Provincial Academy of Environmental Sciences. Environmental Science & Technology (ES&T) holds the status of Chinese core journals, scientific papers source journals of China, Chinese Science Citation Database source journals, and Chinese Academic Journal Comprehensive Evaluation Database source journals. This publication focuses on the academic field of environmental protection, featuring articles related to environmental protection and technical advancements.
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