Inversing NOx emissions based on an optimization model that combines a source-receptor relationship correction matrix and monitoring data: A case study in Linyi, China

IF 4.2 2区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
Mengzhen Li , Jianlei Lang , Ying Zhou , Zeya Shen , Dongsheng Chen , Jia Li , Shuiyuan Cheng
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引用次数: 0

Abstract

Inversion based on observational data and the source-receptor relationship (SRR) simulated by an air quality model is an effective means to estimate NOx emissions. However, the SRR bias induced by the inherent uncertainty of the simulated model leads to potential errors in the inversed emissions, but this is seldom considered in NOx inversion. In this study, we constructed an inversion model based on the SRR correction (IMSC) by introducing a correction matrix, combined with joint regularization scheme and genetic algorithm. We innovated the dynamic acquisition method of center-restricted parameters for the correction matrix, combined this with other parts of the IMSC, attaining the multi-month and multi-region pollutant emission inversion. Hypothetical examples demonstrated that the IMSC effectively corrected the SRR and accurately estimated the NOx emissions. The IMSC was used to estimate Linyi county-level NOx emissions for January, April, July and October (typical months) during 2020 and 2021. An inversion model without SRR correction (IMWSC) was developed for comparison with the IMSC. Results showed that the IMSC more accurately, robustly, and reasonably estimated NOx emissions. Compared to the IMWSC, the IMSC improved the mean correlation between NOx emissions and NO2 observational concentrations by 25.0%, enhancing the correlation between NOx emissions and NO2 column concentrations by 111.3%. The similar NOx emission change ratios (σaverage = 5.1%) between the typical months in 2021 and 2020 among the different counties indicated a more robust performance of the IMSC than the IMWSC (σaverage = 55.2%). In addition, the NOx emissions inversed by the IMSC also showed better consistency with social activity levels (i.e., electricity consumption). The typical monthly Linyi's county-level NOx emission characterization was also studied. NOx emissions were lower in April, July, and October 2021 than the same period in 2020 due to COVID-19 and pollution controls. This study provides strategies for swiftly and accurately estimating pollutant emissions.

Abstract Image

基于结合源-受体关系修正矩阵和监测数据的优化模型,反演氮氧化物排放:中国临沂案例研究
基于观测数据和空气质量模型模拟的源-受体关系(SRR)进行反演是估算氮氧化物排放量的有效方法。然而,模拟模型固有的不确定性所引起的 SRR 偏差会导致反演排放的潜在误差,但这在氮氧化物反演中很少被考虑。在本研究中,我们通过引入修正矩阵,结合联合正则化方案和遗传算法,构建了基于 SRR 修正的反演模型(IMSC)。我们创新了修正矩阵中心限制参数的动态获取方法,并将其与 IMSC 的其他部分相结合,实现了多月、多区域污染物排放反演。假设实例表明,IMSC 有效修正了 SRR,并准确估算了氮氧化物排放量。利用 IMSC 估算了 2020 年和 2021 年 1 月、4 月、7 月和 10 月(典型月份)临邑县的氮氧化物排放量。为了与 IMSC 进行比较,还开发了不带 SRR 修正的反演模型(IMWSC)。结果表明,IMSC 更准确、稳健、合理地估计了氮氧化物排放量。与 IMWSC 相比,IMSC 将氮氧化物排放与二氧化氮观测浓度之间的平均相关性提高了 25.0%,将氮氧化物排放与二氧化氮柱浓度之间的相关性提高了 111.3%。在 2021 年和 2020 年的典型月份中,各县的氮氧化物排放量变化比(σ平均值 = 5.1%)相似,这表明综合监测中心比综合监测中心(σ平均值 = 55.2%)的性能更稳定。此外,IMSC 所逆转的氮氧化物排放量与社会活动水平(即用电量)也表现出更好的一致性。我们还研究了临沂县级氮氧化物典型月度排放特征。由于 COVID-19 和污染控制,2021 年 4 月、7 月和 10 月的氮氧化物排放量低于 2020 年同期。这项研究为快速准确地估算污染物排放量提供了策略。
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来源期刊
Atmospheric Environment
Atmospheric Environment 环境科学-环境科学
CiteScore
9.40
自引率
8.00%
发文量
458
审稿时长
53 days
期刊介绍: Atmospheric Environment has an open access mirror journal Atmospheric Environment: X, sharing the same aims and scope, editorial team, submission system and rigorous peer review. Atmospheric Environment is the international journal for scientists in different disciplines related to atmospheric composition and its impacts. The journal publishes scientific articles with atmospheric relevance of emissions and depositions of gaseous and particulate compounds, chemical processes and physical effects in the atmosphere, as well as impacts of the changing atmospheric composition on human health, air quality, climate change, and ecosystems.
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