Pomeranian Academy, Biology and Environmental Protection Institute, Environmental Chemistry Research Unit, 22a Arciszewskiego Str., 76-200 Słupsk, Poland.
Environ Pollut. 2010 Oct;158(10):3201-8. doi: 10.1016/j.envpol.2010.07.003. Epub 2010 Aug 7.
The present study deals with the application of N-way factor analysis for modeling and interpretation of a three-dimensional environmental data set acquired from monitoring of particulate matter (PM) collected at four different sampling locations in Lower Austria region (Central Europe). In the study the Tucker3 algorithm for N-way modeling was used. It was statistically validated that the Tucker3 model offered having the dimensionality [222] is appropriate for correct interpretation of the relationships between chemical parameters, sampling locations and sampling period. The Tucker3 model allowed to distinguish three major sources of pollution in the region of interest conditionally named "soil dust", "combustion" and "street dust" latent factors as responsible for chemical profile of PM and to identify seasonal variability. Additionally, some specificity of the sampling locations was also pointed out.
本研究应用 N 向因子分析对来自奥地利下奥地利州(中欧)四个不同采样点采集的颗粒物(PM)监测的三维环境数据集进行建模和解释。在研究中,使用了 Tucker3 算法进行 N 向建模。统计验证表明,Tucker3 模型的维度 [222] 适合正确解释化学参数、采样地点和采样时间之间的关系。Tucker3 模型允许区分该关注区域内三个主要的污染来源,条件性地命名为“土壤灰尘”、“燃烧”和“街道灰尘”潜在因素,这些因素是 PM 化学特征的主要成因,并确定了季节性变化。此外,还指出了采样地点的一些特异性。