2D mapping by Kohonen Networks of the air quality data from a large city

被引:6
作者
Groselj, N
Zupan, J
Reich, S
Dawidowski, L
Gomez, D
Magallanes, J
机构
[1] Natl Inst Chem, SI-1000 Ljubljana, Slovenia
[2] Univ San Martin, Escuela Ciencia & Tecnol, San Martin, Argentina
[3] Comis Nacl Energia Atom, Unidad Actividad Quim, San Martin, Argentina
来源
JOURNAL OF CHEMICAL INFORMATION AND COMPUTER SCIENCES | 2004年 / 44卷 / 02期
关键词
D O I
10.1021/ci030418r
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
The 15-variable environmental data (7 concentrations: CO, SO2, O-3, NOx, NO, NO2, particulate matter smaller than 10 mu (PM10), and 8 weather data: cloudiness, rainfall, insolation factor (Isf(t)), temperature, pressure at two locations, and wind intensity with direction) in a period of 45 days with 1-h intervals were extracted from a larger database of concentrations recorded in minute intervals for the same time period. The monitoring site was located in the City of Buenos Aires in a relatively heavy traffic crossroad of two avenues. The data required special pretreatment where the hourly content of rain, wind intensity, wind velocity, and cloudiness were concerned. The new variable named insolation factor (relative UV radiation) calculated on the basis of the general meteorological data, the geographic position of the monitoring site, cloudiness, date, and the time of the recording was composed. The relative intensity of UV radiation was modeled by a Gaussian function, multiplied by a cloudiness factor. Based on the 14-variable input and the 1-variable output (ozone) data, first, the clustering of all 980 data records was made. The top map clustering showing the ozone concentration was related to the maps of all 14 variables. The link between O-3 clusters, NO2, and Isf(i) weight levels is shown and discussed. As a preliminary result of this study some of the most interesting correlations between the maps and remaining variables are given.
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页码:339 / 346
页数:8
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