Methane is a strong greenhouse gas, with a higher radiative forcing per unit mass and shorter atmospheric lifetime than carbon dioxide. The remote sensing of methane in regions of industrial activity is a key step toward the accurate monitoring of emissions that drive climate change. Whilst the TROPOspheric Monitoring Instrument (TROPOMI) on board the Sentinal-5P satellite is capable of providing daily global measurement of methane columns, data are often compromised by cloud cover. Here, we develop a statistical model which uses nitrogen dioxide concentration data from TROPOMI to efficiently predict values of methane columns, expanding the average daily spatial coverage of observations of the Permian basin from 16% to 88% in the year 2019. The addition of predicted methane abundances at locations where direct observations are not available will support inversion methods for estimating methane emission rates at shorter timescales than is currently possible.
翻译:甲烷是一种很强的温室气体,每单位质量的辐射力较高,大气寿命比二氧化碳短。工业活动地区的甲烷遥感是准确监测导致气候变化的排放量的关键一步。尽管哨兵5P卫星上的TROPOSPerpheric监测工具(TROPOMI)能够提供日常的甲烷柱的全球测量,但数据往往受到云层覆盖的影响。在这里,我们开发了一个统计模型,利用TROPOMI的二氧化碳浓度数据有效预测甲烷柱值,将2019年Permian盆地观测的平均每日空间覆盖面从16%扩大到88%。在没有直接观测的地点增加预测的甲烷丰度将支持在比目前可能更短的时间范围内估算甲烷排放率的改变方法。