期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
我国PM_(2.5)和臭氧污染前体物排放源清单的现状与质量评估 被引量:9
1
作者 黄志炯 沙青娥 +10 位作者 朱曼妮 徐媛倩 余飞 刘慧琳 周文钦 张晓堂 张雪驰 饶思杰 姜帆 刘俊文 郑君瑜 《科学通报》 EI CAS CSCD 北大核心 2022年第18期1978-1994,共17页
大气污染源排放清单是研究细颗粒物(PM_(2.5))和臭氧污染成因、制定PM_(2.5)和臭氧污染精准协同防控策略的重要基础数据.依托国家科技项目以及各级管理部门的强力推进,近年来我国PM_(2.5)和臭氧污染前体物排放清单研究与编制工作得到了... 大气污染源排放清单是研究细颗粒物(PM_(2.5))和臭氧污染成因、制定PM_(2.5)和臭氧污染精准协同防控策略的重要基础数据.依托国家科技项目以及各级管理部门的强力推进,近年来我国PM_(2.5)和臭氧污染前体物排放清单研究与编制工作得到了迅速发展,积累了相对完善的本土前体物排放因子及PM_(2.5)和VOCs成分谱数据集,建立了较为系统的前体物排放清单表征方法和编制指南;交通、卫星等大数据和多种校验评估方法逐渐得到重视与应用,污染源和污染物种覆盖逐渐精细化,VOCs组分排放清单逐渐受到关注,各种尺度前体物排放清单的时空分辨率、时效性和可靠性有了显著提升,基本满足区域和城市开展PM_(2.5)与臭氧污染防控对排放源清单的需求.尽管如此,我国前体物排放清单依然存在不确定性较大、排放因子和成分谱数据建立缺乏规范化评估、组分清单校验薄弱、排放源清单编制质量评估方法缺失等不足.未来工作需要在排放因子和成分谱数据集规范化、排放清单校验与质量评估方法指南编制、近实时和短临预测排放清单方法学与业务化、不同类型排放清单建立方法与评估等方面继续深入.最后,提出了前体物排放清单编制质量评估方法的思路,为清单使用者评估前体物排放源清单编制质量、进一步规范前体物排放清单编制工作提供借鉴和参考. 展开更多
关键词 PM_(2.5)和臭氧 前体物排放清单 挥发性有机物组分清单 校验与评估 不确定性分析
原文传递
A meteorologically adjusted ensemble Kalman filter approach for inversing daily emissions:A case study in the Pearl River Delta,China 被引量:2
2
作者 Guanglin Jia Zhijiong Huang +11 位作者 Xiao Tang Jiamin Ou Menghua Lu yuanqian xu Zhuangmin Zhong Qing’e Sha Huangjian Wu Chuanzeng Zheng Tao Deng Duohong Chen Min He Junyu Zheng 《Journal of Environmental Sciences》 SCIE EI CAS CSCD 2022年第4期233-248,共16页
The conventional Ensemble Kalman filter(EnKF),which is now widely used to calibrate emission inventories and to improve air quality simulations,is susceptible to simulation errors of meteorological inputs,making accur... The conventional Ensemble Kalman filter(EnKF),which is now widely used to calibrate emission inventories and to improve air quality simulations,is susceptible to simulation errors of meteorological inputs,making accurate updates of high temporal-resolution emission inventories challenging.In this study,we developed a novel meteorologically adjusted inversion method(MAEInv)based on the EnKF to improve daily emission estimations.The new method combines sensitivity analysis and bias correction to alleviate the inversion biases caused by errors of meteorological inputs.For demonstration,we used the MAEInv to inverse daily carbon monoxide(CO)emissions in the Pearl River Delta(PRD)region,China.In the case study,60%of the total CO simulation biases were associated with sensitive meteorological inputs,which would lead to the overestimation of daily variations of posterior emissions.Using the new inversion method,daily variations of emissions shrank dramatically,with the percentage change decreased by 30%.Also,the total amount of posterior CO emissions estimated by the MAEInv decreased by 14%,indicating that posterior CO emissions might be overestimated using the conventional EnKF.Model evaluations using independent observations revealed that daily CO emissions estimated by MAEInv better reproduce the magnitude and temporal patterns of ambient CO concentration,with a higher correlation coefficient(R,+37.0%)and lower normalized mean bias(NMB,-17.9%).Since errors of meteorological inputs are major sources of simulation biases for both low-reactive and reactive pollutants,the MAEInv is also applicable to improve the daily emission inversions of reactive pollutants. 展开更多
关键词 Emission inversion Daily emissions Meteorological adjustment Ensemble Kalman filter
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部