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Quantifying methane emissions from Queensland's coal seam gas producing Surat Basin using inventory data and a regional Bayesian inversion

机译:量化昆士兰煤层气生产苏拉特盆地的甲烷排放,利用库存数据和区域贝叶斯反演

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Methane (CH4) is a potent greenhouse gas and a key precursor of tropospheric ozone, itself a powerful greenhouse gas and air pollutant. Methane emissions across Queensland's Surat Basin, Australia, result from a mix of activities, including the production and processing of coal seam gas (CSG). We measured methane concentrations over 1.5?years from two monitoring stations established 80?km apart on either side of the main CSG belt located within a study area of 350?km?×?350?km. Using an inverse modelling approach coupled with a bottom-up inventory, we quantify methane emissions from this area. The inventory suggests that the total emission is 173.2?×?106?kg?CH4?yr?1, with grazing cattle contributing about half of that, cattle feedlots ~?25?%, and CSG processing ~?8?%. Using the inventory emissions in a forward regional transport model indicates that the above sources are significant contributors to methane at both monitors. However, the model underestimates approximately the highest 15?% of the observed methane concentrations, suggesting underestimated or missing emissions. An efficient regional Bayesian inverse model is developed, incorporating an hourly source–receptor relationship based on a backward-in-time configuration of the forward regional transport model, a posterior sampling scheme, and the hourly methane observations and a derived methane background. The inferred emissions obtained from one of the inverse model setups that uses a Gaussian prior whose averages are identical to the gridded bottom-up inventory emissions across the domain with an uncertainty of 3?% of the averages best describes the observed methane. Having only two stations is not adequate at sampling distant source areas of the study domain, and this necessitates a small prior uncertainty. This inverse setup yields a total emission of (165.8?±?8.5)?×?106?kg?CH4?yr?1, slightly smaller than the inventory total. However, in a subdomain covering the CSG development areas, the inferred emissions are (63.6?±?4.7)?×?106?kg?CH4?yr?1, 33?% larger than those from the inventory. We also infer seasonal variation of methane emissions and examine its correlation with climatological rainfall in the area.
机译:甲烷(CH4)是一种有效的温室气体和对流层臭氧的关键前兆,本身是强大的温室气体和空气污染物。昆士兰州苏拉特盆地,澳大利亚的甲烷排放,是一系列活动,包括生产和加工煤层气(CSG)。我们测得甲烷浓度超过1.5?几年从两个监测站建立在80 km的主要CSG皮带中,位于350 km的研究区内,在350 km?×350 km。使用与自下而上的库存相结合的反向建模方法,我们量化来自该地区的甲烷排放量。库存表明,总排放量是173.2?×106?kg?ch4?你?1,用牧牛贡献约一半,牛饲料~~~%,csg加工〜?8?%。使用正向区域传输模型中的库存排放表明上述来源是两种监测器中甲烷的重要贡献者。然而,模型低估了观察到的甲烷浓度的最高的15?%,表明低估或缺失排放。开发了一种有效的区域贝叶斯逆模型,基于前进区域传输模型,后部采样方案和每小时甲烷观察和衍生的甲烷背景的后续时间配置,包括每小时源 - 受体关系。从使用高斯之前的逆模型设置之一获得的推断的排放与其平均值相同的域中的网格上的网格库存排放量3?%的平均值的不确定性最能描述所观察到的甲烷。只有两个站点在研究域的远处源区域上不足,这需要较小的先前不确定性。该逆设置产生了(165.8?±8.5)的总排放?×106?kg?ch4?1,略小于库存总量。然而,在覆盖CSG开发区域的子域中,推断排放(63.6?±4.7)?×106?kg?x 4·1,33μm比来自库存的那些大。我们还推断出甲烷排放的季节性变化,并在该地区的气候降雨中检测其相关性。

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