CCPortal
DOI10.5194/acp-20-12853-2020
Using machine learning to derive cloud condensation nuclei number concentrations from commonly available measurements
Arjunan Nair A.; Yu F.
发表日期2020
ISSN1680-7316
起始页码12853
结束页码12869
卷号20期号:21
英文摘要Cloud condensation nuclei (CCN) number concentrations are an important aspect of aerosol-cloud interactions and the subsequent climate effects; however, their measurements are very limited. We use a machine learning tool, random decision forests, to develop a random forest regression model (RFRM) to derive CCN at 0.4% supersaturation ([CCN0.4]) from commonly available measurements. The RFRM is trained on the long-Term simulations in a global size-resolved particle microphysics model. Using atmospheric state and composition variables as predictors, through associations of their variabilities, the RFRM is able to learn the underlying dependence of [CCN0.4] on these predictors, which are as follows: eight fractions of PM2:5 (NH4, SO4, NO3, secondary organic aerosol (SOA), black carbon (BC), primary organic carbon (POC), dust, and salt), seven gaseous species (NOx , NH3, O3, SO2, OH, isoprene, and monoterpene), and four meteorological variables (temperature (T), relative humidity (RH), precipitation, and solar radiation). The RFRM is highly robust: it has a median mean fractional bias (MFB) of 4:4% with 96:33% of the derived [CCN0.4] within a good agreement range of-60% MFB C60% and strong correlation of Kendall's coefficient 0:88. The RFRM demonstrates its robustness over 4 orders of magnitude of [CCN0.4] over varying spatial (such as continental to oceanic, clean to polluted, and nearsurface to upper troposphere) and temporal (from the hourly to the decadal) scales. At the Atmospheric Radiation Measurement Southern Great Plains observatory (ARM SGP) in Lamont, Oklahoma, United States, long-Term measurements for PM2:5 speciation (NH4, SO4, NO3, and organic carbon (OC)), NOx , O3, SO2, T, and RH, as well as [CCN0.4] are available. We modify, optimize, and retrain the developed RFRM to make predictions from 19 to 9 of these available predictors. This retrained RFRM (RFRM-ShortVars) shows a reduction in performance due to the unavailability and sparsity of measurements (predictors); it captures the [CCN0.4] variability and magnitude at SGP with 67:02% of the derived values in the good agreement range. This work shows the potential of using the more commonly available measurements of PM2:5 speciation to alleviate the sparsity of CCN number concentrations' measurements. © 2020 Copernicus GmbH. All rights reserved.
语种英语
scopus关键词cloud condensation nucleus; concentration (composition); machine learning; measurement method; speciation (chemistry); supersaturation
来源期刊ATMOSPHERIC CHEMISTRY AND PHYSICS
文献类型期刊论文
条目标识符http://gcip.llas.ac.cn/handle/2XKMVOVA/247415
作者单位Atmospheric Sciences Research Center, State University of New York, Albany, NY 12203, United States
推荐引用方式
GB/T 7714
Arjunan Nair A.,Yu F.. Using machine learning to derive cloud condensation nuclei number concentrations from commonly available measurements[J],2020,20(21).
APA Arjunan Nair A.,&Yu F..(2020).Using machine learning to derive cloud condensation nuclei number concentrations from commonly available measurements.ATMOSPHERIC CHEMISTRY AND PHYSICS,20(21).
MLA Arjunan Nair A.,et al."Using machine learning to derive cloud condensation nuclei number concentrations from commonly available measurements".ATMOSPHERIC CHEMISTRY AND PHYSICS 20.21(2020).
条目包含的文件
条目无相关文件。
个性服务
推荐该条目
保存到收藏夹
导出为Endnote文件
谷歌学术
谷歌学术中相似的文章
[Arjunan Nair A.]的文章
[Yu F.]的文章
百度学术
百度学术中相似的文章
[Arjunan Nair A.]的文章
[Yu F.]的文章
必应学术
必应学术中相似的文章
[Arjunan Nair A.]的文章
[Yu F.]的文章
相关权益政策
暂无数据
收藏/分享

除非特别说明,本系统中所有内容都受版权保护,并保留所有权利。