Data having spatio-temporal structure are often observed in environmental sciences. They may be considered as discrete observations from curves along time and/or space and treated as functional. Generalized Additive Models (GAMs) represent a useful tool for modelling, for example, as pollutant concentrations describing their spatial and/or temporal trends.Usually, the prediction of a curve at an unmonitored site is necessary and, with this aim, we extend kriging for functional data to a multivariate context. Moreover, even if we are interested only in predicting a single pollutant, such as PM10, the estimation can be improved exploiting its correlation with the other pollutants. Cross validation is used to test the performance of the proposed procedure.

Di Salvo, F., Plaia A, Ruggieri M (2016). GAMs and functional kriging for air quality data. In PROCEEDINGS of the 48th scientific meeting of the Italian Statistical Society.

GAMs and functional kriging for air quality data

DI SALVO, Francesca;PLAIA, Antonella;RUGGIERI, Mariantonietta
2016-01-01

Abstract

Data having spatio-temporal structure are often observed in environmental sciences. They may be considered as discrete observations from curves along time and/or space and treated as functional. Generalized Additive Models (GAMs) represent a useful tool for modelling, for example, as pollutant concentrations describing their spatial and/or temporal trends.Usually, the prediction of a curve at an unmonitored site is necessary and, with this aim, we extend kriging for functional data to a multivariate context. Moreover, even if we are interested only in predicting a single pollutant, such as PM10, the estimation can be improved exploiting its correlation with the other pollutants. Cross validation is used to test the performance of the proposed procedure.
2016
9788861970618
Di Salvo, F., Plaia A, Ruggieri M (2016). GAMs and functional kriging for air quality data. In PROCEEDINGS of the 48th scientific meeting of the Italian Statistical Society.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10447/180658
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