Enno Tiemann, Shanyu Zhou, Alexander Kläser, Konrad Heidler, Rochelle Schneider, Xiao Xiang Zhu
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The architecture and\ndata used in such ML models will be discussed separately for methane plume\nsegmentation and emission rate estimation. Traditionally, experts rely on\nlabor-intensive manually adjusted methods for methane detection. However, ML\napproaches offer greater scalability. Our analysis reveals that ML models\noutperform traditional methods, particularly those based on convolutional\nneural networks (CNN), which are based on the U-net and transformer\narchitectures. These ML models extract valuable information from\nmethane-sensitive spectral data, enabling a more accurate detection. Challenges\narise when comparing these methods due to variations in data, sensor\nspecifications, and evaluation metrics. To address this, we discuss existing\ndatasets and metrics, providing an overview of available resources and\nidentifying open research problems. 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引用次数: 0
摘要
甲烷($CH_4$)是一种强效的人为温室气体,在 20 年内对全球变暖的贡献是二氧化碳($CO_2$)的 86 倍,它也是一种空气污染物。鉴于甲烷的高辐射强迫潜力和相对较短的大气寿命(9 年/pm$1 年),甲烷对气候变化具有重要影响,因此,减少甲烷排放对有效减缓气候变化至关重要。这项工作扩展了短波红外(SWIR)波段甲烷点源探测传感器的现有信息。它回顾了最先进的传统方法和机器学习(ML)方法。将分别讨论甲烷羽流细分和排放率估算中使用的 ML 模型的架构和数据。传统上,专家们依靠劳动密集型的人工调整方法来检测甲烷。然而,ML 方法具有更大的可扩展性。我们的分析表明,ML 模型优于传统方法,特别是那些基于卷积神经网络(CNN)的方法,后者是基于 U 型网和变压器架构。这些 ML 模型能从甲烷敏感光谱数据中提取有价值的信息,从而实现更准确的检测。由于数据、传感器规格和评估指标的不同,在比较这些方法时会遇到挑战。为了解决这个问题,我们讨论了现有的数据集和指标,概述了可用资源,并指出了有待解决的研究问题。最后,我们探讨了 ML 未来的潜在发展,强调了模型可比性、大型数据集创建和欧盟即将推出的甲烷战略等方面的方法。
Machine Learning for Methane Detection and Quantification from Space - A survey
Methane ($CH_4$) is a potent anthropogenic greenhouse gas, contributing 86
times more to global warming than Carbon Dioxide ($CO_2$) over 20 years, and it
also acts as an air pollutant. Given its high radiative forcing potential and
relatively short atmospheric lifetime (9$\pm$1 years), methane has important
implications for climate change, therefore, cutting methane emissions is
crucial for effective climate change mitigation. This work expands existing
information on operational methane point source detection sensors in the
Short-Wave Infrared (SWIR) bands. It reviews the state-of-the-art for
traditional as well as Machine Learning (ML) approaches. The architecture and
data used in such ML models will be discussed separately for methane plume
segmentation and emission rate estimation. Traditionally, experts rely on
labor-intensive manually adjusted methods for methane detection. However, ML
approaches offer greater scalability. Our analysis reveals that ML models
outperform traditional methods, particularly those based on convolutional
neural networks (CNN), which are based on the U-net and transformer
architectures. These ML models extract valuable information from
methane-sensitive spectral data, enabling a more accurate detection. Challenges
arise when comparing these methods due to variations in data, sensor
specifications, and evaluation metrics. To address this, we discuss existing
datasets and metrics, providing an overview of available resources and
identifying open research problems. Finally, we explore potential future
advances in ML, emphasizing approaches for model comparability, large dataset
creation, and the European Union's forthcoming methane strategy.