Machine learning for gap-filling in greenhouse gas emissions databases

IF 4.9 3区 环境科学与生态学 Q2 ENGINEERING, ENVIRONMENTAL Journal of Industrial Ecology Pub Date : 2024-07-10 DOI:10.1111/jiec.13507
Luke Cullen, Andrea Marinoni, Jonathan Cullen
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Abstract

Greenhouse gas (GHG) emissions datasets are often incomplete due to inconsistent reporting and poor transparency. Filling the gaps in these datasets allows for more accurate targeting of strategies aiming to accelerate the reduction of GHG emissions. This study evaluates the potential of machine learning methods to automate the completion of GHG datasets. We use three datasets of increasing complexity with 18 different gap-filling methods and provide a guide to which methods are useful in which circumstances. If few dataset features are available, or the gap consists only of a missing time step in a record, then simple interpolation is often the most accurate method and complex models should be avoided. However, if more features are available and the gap involves non-reporting emitters, then machine learning methods can be more accurate than simple extrapolation. Furthermore, the secondary output of feature importance from complex models allows for data collection prioritization to accelerate the improvement of datasets. Graph-based methods are particularly scalable due to the ease of updating predictions given new data and incorporating multimodal data sources. This study can serve as a guide to the community upon which to base ever more integrated frameworks for automated detailed GHG emissions estimations, and implementation guidance is available at https://hackmd.io/@luke-scot/ML-for-GHG-database-completion and https://doi.org/10.5281/zenodo.10463104. This article met the requirements for a gold-gold JIE data openness badge described at http://jie.click/badges.

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机器学习填补温室气体排放数据库空白
由于报告不一致和透明度差,温室气体(GHG)排放数据集往往不完整。填补这些数据集的空白可以更准确地确定旨在加速减少温室气体排放的战略目标。本研究评估了机器学习方法自动完成温室气体数据集的潜力。我们使用了三个复杂度不断增加的数据集和 18 种不同的填补空白方法,并为哪些方法在哪些情况下有用提供了指导。如果可用的数据集特征很少,或者缺口仅仅是记录中缺少了一个时间步,那么简单的内插法通常是最准确的方法,应避免使用复杂的模型。但是,如果可用的特征较多,并且缺口涉及未报告的发射器,那么机器学习方法可能比简单的外推法更准确。此外,复杂模型对特征重要性的二次输出可以确定数据收集的优先次序,从而加快数据集的改进。基于图形的方法尤其具有可扩展性,因为它易于根据新数据更新预测结果并纳入多模态数据源。这项研究可以作为社区的指南,在此基础上为自动详细温室气体排放估算建立更多的集成框架,实施指南可在 https://hackmd.io/@luke-scot/ML-for-GHG-database-completion 和 https://doi.org/10.5281/zenodo.10463104 上获取。本文符合 http://jie.click/badges 所描述的 JIE 数据开放金牌徽章的要求。
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来源期刊
Journal of Industrial Ecology
Journal of Industrial Ecology 环境科学-环境科学
CiteScore
11.60
自引率
8.50%
发文量
117
审稿时长
12-24 weeks
期刊介绍: The Journal of Industrial Ecology addresses a series of related topics: material and energy flows studies (''industrial metabolism'') technological change dematerialization and decarbonization life cycle planning, design and assessment design for the environment extended producer responsibility (''product stewardship'') eco-industrial parks (''industrial symbiosis'') product-oriented environmental policy eco-efficiency Journal of Industrial Ecology is open to and encourages submissions that are interdisciplinary in approach. In addition to more formal academic papers, the journal seeks to provide a forum for continuing exchange of information and opinions through contributions from scholars, environmental managers, policymakers, advocates and others involved in environmental science, management and policy.
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