Using Regionalized Air Quality Model Performance and Bayesian Maximum Entropy data fusion to map global surface ozone concentration

IF 4.7 3区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES Elementa-Science of the Anthropocene Pub Date : 2023-01-01 DOI:10.1525/elementa.2022.00025
Jacob S. Becker, Marissa N. DeLang, Kai-Lan Chang, Marc L. Serre, Owen R. Cooper, Hantao Wang, Martin G. Schultz, Sabine Schröder, Xiao Lu, Lin Zhang, Makoto Deushi, Beatrice Josse, Christoph A. Keller, Jean-François Lamarque, Meiyun Lin, Junhua Liu, Virginie Marécal, Sarah A. Strode, Kengo Sudo, Simone Tilmes, Li Zhang, Michael Brauer, J. Jason West
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引用次数: 1

Abstract

Estimates of ground-level ozone concentrations have been improved through data fusion of observations and atmospheric chemistry models. Our previous global ozone estimates for the Global Burden of Disease study corrected for bias uniformly across continents and then corrected near monitoring stations using the Bayesian Maximum Entropy (BME) framework for data fusion. Here, we use the Regionalized Air Quality Model Performance (RAMP) framework to correct model bias over a much larger spatial range than BME can, accounting for the spatial inhomogeneity of bias and nonlinearity as a function of modeled ozone. RAMP bias correction is applied to a composite of 9 global chemistry-climate models, based on the nearest set of monitors. These estimates are then fused with observations using BME, which matches observations at measurement stations, with the influence of observations declining with distance in space and time. We create global ozone maps for each year from 1990 to 2017 at fine spatial resolution. RAMP is shown to create unrealistic discontinuities due to the spatial clustering of ozone monitors, which we overcome by applying a weighting for RAMP based on the number of monitors nearby. Incorporating RAMP before BME has little effect on model performance near stations, but strongly increases R2 by 0.15 at locations farther from stations, shown through a checkerboard cross-validation. Corrections to estimates differ based on location in space and time, confirming heterogeneity. We quantify the likelihood of exceeding selected ozone levels, finding that parts of the Middle East, India, and China are most likely to exceed 55 parts per billion (ppb) in 2017. About 96% of the global population was exposed to ozone levels above the World Health Organization guideline of 60 µg m−3 (30 ppb) in 2017. Our annual fine-resolution ozone estimates may be useful for several applications including epidemiology and assessments of impacts on health, agriculture, and ecosystems.
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利用区域空气质量模型性能和贝叶斯最大熵数据融合绘制全球地表臭氧浓度
通过将观测数据与大气化学模式融合,对地面臭氧浓度的估计得到了改进。我们之前对全球疾病负担研究的全球臭氧估计在各大洲统一校正了偏差,然后使用贝叶斯最大熵(BME)框架进行数据融合,在监测站附近校正。在这里,我们使用区域化空气质量模型性能(RAMP)框架在比BME更大的空间范围内纠正模型偏差,考虑到偏差的空间非均匀性和非线性作为模拟臭氧的函数。基于最近的一组监测仪,将RAMP偏差校正应用于9个全球化学-气候模型的组合。然后将这些估计值与使用BME的观测结果相融合,BME与测量站的观测结果相匹配,观测结果的影响随着空间和时间的距离而下降。我们以精细的空间分辨率绘制了1990年至2017年每年的全球臭氧图。由于臭氧监测仪的空间聚类,RAMP被证明会产生不切实际的不连续,我们通过基于附近监测仪的数量对RAMP应用加权来克服这个问题。在BME之前加入RAMP对模型在站点附近的性能影响不大,但在远离站点的位置上,R2会显著提高0.15,这可以通过棋盘交叉验证得到。根据空间和时间位置的不同,对估计值的修正有所不同,证实了异质性。我们量化了超过选定臭氧水平的可能性,发现中东、印度和中国的部分地区最有可能在2017年超过十亿分之55 (ppb)。2017年,全球约96%的人口暴露于臭氧水平高于世界卫生组织60微克−3 (30 ppb)的指导标准。我们每年对臭氧的精细分辨率估计可用于多种应用,包括流行病学和对健康、农业和生态系统影响的评估。
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来源期刊
Elementa-Science of the Anthropocene
Elementa-Science of the Anthropocene Earth and Planetary Sciences-Atmospheric Science
CiteScore
6.90
自引率
5.10%
发文量
65
审稿时长
16 weeks
期刊介绍: A new open-access scientific journal, Elementa: Science of the Anthropocene publishes original research reporting on new knowledge of the Earth’s physical, chemical, and biological systems; interactions between human and natural systems; and steps that can be taken to mitigate and adapt to global change. Elementa reports on fundamental advancements in research organized initially into six knowledge domains, embracing the concept that basic knowledge can foster sustainable solutions for society. Elementa is published on an open-access, public-good basis—available freely and immediately to the world.
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