Chen Jingwen, Zhao Fang, Zeng Ning, Oda Tomohiro
State Key Laboratory of Hydrology-Water Resources and Hydraulic Engineering, Hohai University, Nanjing, 210098, China.
College of Hydrology and Water Resources, Hohai University, Nanjing, 210098, China.
Carbon Balance Manag. 2020 May 19;15(1):9. doi: 10.1186/s13021-020-00146-3.
Compilation of emission inventories (EIs) for cities is a whole new challenge to assess the subnational climate mitigation effort under the Paris Climate Agreement. Some cities have started compiling EIs, often following a global community protocol. However, EIs are often difficult to systematically examine because of the ways they were compiled (data collection and emission calculation) and reported (sector definition and direct vs consumption). In addition, such EI estimates are not readily applicable to objective evaluation using modeling and observations due to the lack of spatial emission extents. City emission estimates used in the science community are often based on downscaled gridded EIs, while the accuracy of the downscaled emissions at city level is not fully assessed.
This study attempts to assess the utility of the downscaled emissions at city level. We collected EIs from 14 major global cities and compare them to the estimates from a global high-resolution fossil fuel CO emission data product (ODIAC) commonly used in the science research community. We made necessary adjustments to the estimates to make our comparison as reasonable as possible. We found that the two methods produce very close area-wide emission estimates for Shanghai and Delhi (< 10% difference), and reach good consistency in half of the cities examined (< 30% difference). The ODIAC dataset exhibits a much higher emission compared to inventory estimates in Cape Town (+ 148%), Sao Paulo (+ 43%) and Beijing (+ 40%), possibly related to poor correlation between nightlight intensity with human activity, such as the high-emission and low-lighting industrial parks in developing countries. On the other hand, ODIAC shows lower estimates in Manhattan (- 62%), New York City (- 45%), Washington D.C. (- 42%) and Toronto (- 33%), all located in North America, which may be attributable to an underestimation of residential emissions from heating in ODIAC's nightlight-based approach, and an overestimation of emission from ground transportation in registered vehicles statistics of inventory estimates.
The relatively good agreement suggests that the ODIAC data product could potentially be used as a first source for prior estimate of city-level CO emission, which is valuable for atmosphere CO inversion modeling and comparing with satellite CO observations. Our compilation of in-boundary emission estimates for 14 cities contributes towards establishing an accurate inventory in-boundary global city carbon emission dataset, necessary for accountable local climate mitigation policies in the future.
编制城市排放清单是评估《巴黎气候协定》下国家以下层面气候缓解努力的全新挑战。一些城市已开始编制排放清单,通常遵循全球通用协议。然而,由于排放清单的编制方式(数据收集和排放计算)及报告方式(部门定义以及直接排放与消费排放),其往往难以进行系统审查。此外,由于缺乏空间排放范围,此类排放清单估计值不易应用于借助建模和观测进行的客观评估。科学界使用的城市排放估计值通常基于降尺度网格化排放清单,而城市层面降尺度排放的准确性尚未得到充分评估。
本研究试图评估城市层面降尺度排放的效用。我们收集了全球14个主要城市的排放清单,并将其与科学研究界常用的全球高分辨率化石燃料一氧化碳排放数据产品(ODIAC)的估计值进行比较。我们对估计值进行了必要调整,以使我们的比较尽可能合理。我们发现,这两种方法对上海和德里的区域范围排放估计值非常接近(差异<10%),并且在所研究的一半城市中达到了良好的一致性(差异<30%)。与开普敦(+148%)、圣保罗(+43%)和北京(+40%)的清单估计值相比,ODIAC数据集显示出高得多的排放量,这可能与夜光强度与人类活动之间的相关性较差有关,例如发展中国家高排放且低照明的工业园区。另一方面,ODIAC对位于北美地区的曼哈顿(-62%)、纽约市(-45%)、华盛顿特区(-42%)和多伦多(-33%)的估计值较低,这可能归因于ODIAC基于夜光的方法低估了住宅供暖排放,以及清单估计值的注册车辆统计中高估了地面交通排放。
相对较好的一致性表明,ODIAC数据产品有可能用作城市层面一氧化碳排放预先估计的首要来源,这对于大气一氧化碳反演建模以及与卫星一氧化碳观测进行比较很有价值。我们编制的14个城市的边界内排放估计值有助于建立一个准确的全球城市碳排放数据集的边界内清单,这对于未来制定可靠地方气候缓解政策是必要的。