Liu Lang, Wang Yanli, Du Shiyong, Zhang Wenjie, Hou Lujian, Vedal Sverre, Han Bin, Yang Wen, Chen Mindong, Bai Zhipeng
State Key Laboratory of Environmental Criteria and Risk Assessment, Chinese Research Academy of Environmental Sciences, Beijing 100012, China. E-mail:
Environmental Protection Science Research Institute of Ji'nan, Ji'nan 250014, China.
J Environ Sci (China). 2016 Feb;40:145-53. doi: 10.1016/j.jes.2015.10.027. Epub 2016 Jan 11.
To investigate the composition and possible sources of particles, especially during heavy haze pollution, a single particle aerosol mass spectrometer (SPAMS) was deployed to measure the changes of single particle species and sizes during October of 2014, in Beijing. A total of 2,871,431 particles with both positive and negative spectra were collected and characterized in combination with the adaptive resonance theory neural network algorithm (ART-2a). Eight types of particles were classified: dust particles (dust, 8.1%), elemental carbon (EC, 29.0%), organic carbon (OC, 18.0%), EC and OC combined particles (ECOC, 9.5%), Na-K containing particles (NaK, 7.9%), K-containing particles (K, 21.8%), organic nitrogen and potassium containing particles (KCN, 2.3%), and metal-containing particles (metal, 3.6%). Three haze pollution events (P1, P2, P3) and one clean period (clean) were analyzed, based on the mass and number concentration of PM2.5 and the back trajectory results from the hybrid single particle Lagrangian integrated trajectory model (Hysplit-4 model). Results showed that EC, OC and K were the major components of single particles during the three haze pollution periods, which showed clearly increased ratios compared with those in the clean period. Results from the mixing state of secondary species of different types of particles showed that sulfate and nitrate were more readily mixed with carbon-containing particles during haze pollution episodes than in clean periods.
为了研究颗粒物的组成及其可能来源,尤其是在重度雾霾污染期间,于2014年10月在北京部署了一台单颗粒气溶胶质谱仪(SPAMS),以测量单颗粒种类和粒径的变化。结合自适应共振理论神经网络算法(ART-2a),共收集并表征了2871431个具有正负光谱的颗粒。颗粒被分为八类:沙尘颗粒(沙尘,8.1%)、元素碳(EC,29.0%)、有机碳(OC,18.0%)、EC与OC混合颗粒(ECOC,9.5%)、含Na-K颗粒(NaK,7.9%)、含K颗粒(K,21.8%)、含有机氮和钾颗粒(KCN,2.3%)以及含金属颗粒(金属,3.6%)。基于PM2.5的质量浓度和数量浓度以及混合单颗粒拉格朗日积分轨迹模型(Hysplit-4模型)的后向轨迹结果,分析了三次雾霾污染事件(P1、P2、P3)和一个清洁时段(清洁)。结果表明,在三个雾霾污染时段,EC、OC和K是单颗粒的主要成分,与清洁时段相比,其占比明显增加。不同类型颗粒二次物种混合状态的结果表明,与清洁时段相比,雾霾污染事件期间硫酸盐和硝酸盐更易与含碳颗粒混合。