Title of article
A new space–time multivariate approach for environmental data analysis
Author/Authors
Sandra De Iaco، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2011
Pages
13
From page
2471
To page
2483
Abstract
Air quality control usually requires a monitoring system of multiple indicators measured at various points
in space and time. Hence, the use of space–time multivariate techniques are of fundamental importance
in this context, where decisions and actions regarding environmental protection should be supported by
studies based on either inter-variables relations and spatial–temporal correlations. This paper describes
how canonical correlation analysis can be combined with space–time geostatistical methods for analysing
two spatial–temporal correlated aspects, such as air pollution concentrations and meteorological conditions.
Hourly averages of three pollutants (nitric oxide, nitrogen dioxide and ozone) and three atmospheric
indicators (temperature, humidity and wind speed) taken for two critical months (February and August)
at several monitoring stations are considered and space–time variograms for the variables are estimated.
Simultaneous relationships between such sample space–time variograms are determined through canonical
correlation analysis. The most correlated canonical variates are used for describing synthetically the
underlying space–time behaviour of the components of the two sets.
Keywords
sample space–time variograms , canonical correlation analysis , multivariate environmental data , space–time random fields
Journal title
JOURNAL OF APPLIED STATISTICS
Serial Year
2011
Journal title
JOURNAL OF APPLIED STATISTICS
Record number
712681
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