Air pollution data sets are usually spatio-temporal multivariate data related to time series of different pollutants recorded by a monitoring network. To improve the estimate of functional data when missing values, and mainly long gaps, are present in the original data set, some procedures are here proposed considering jointly FunctionalData Analysis and EmpiricalOrthogonal Function approaches. In order to compare and validate the proposed procedures, a simulation plan is carried out and some performance indicators are computed. The obtained results show that one of the proposed procedures works better than the others, providing a better reconstruction especially in presence of long gaps
Data remediation of long gaps in time series requires a precise knowledge and a subsequent modelling...
Data remediation of long gaps in time series requires a precise knowledge and a subsequent modelling...
Data remediation of long gaps in time series requires a precise knowledge and a subsequent modelling...
Missing values are a common concern in spatiotemporal data sets. During recent years a great number ...
Missing values are a common concern in spatiotemporal data sets. During recent years a great number...
The knowledge of the urban air quality represents the first step to face air pollution issues. For t...
The knowledge of the urban air quality represents the first step to face air pollution issues. For t...
High dimensional data with spatio-temporal structures are of great interest in many elds of researc...
High dimensional data with spatio-temporal structures are of great interest in many elds of researc...
Multivariate spatio-temporal data analysis methods usually assume fairly complete data, while a num...
Gap-filling or modelling surface-atmosphere fluxes critically depends on an, ideally continuous, ava...
Multivariate spatio-temporal data analysis methods usually assume fairly complete data, while a numb...
In this paper, an improved methodology for the determination of missing values in a spatiotemporal d...
The present research uses two different functional data analysis methods called functional high-dens...
Often environmental scientists face the problem of clustering different sites, areas or stations in ...
Data remediation of long gaps in time series requires a precise knowledge and a subsequent modelling...
Data remediation of long gaps in time series requires a precise knowledge and a subsequent modelling...
Data remediation of long gaps in time series requires a precise knowledge and a subsequent modelling...
Missing values are a common concern in spatiotemporal data sets. During recent years a great number ...
Missing values are a common concern in spatiotemporal data sets. During recent years a great number...
The knowledge of the urban air quality represents the first step to face air pollution issues. For t...
The knowledge of the urban air quality represents the first step to face air pollution issues. For t...
High dimensional data with spatio-temporal structures are of great interest in many elds of researc...
High dimensional data with spatio-temporal structures are of great interest in many elds of researc...
Multivariate spatio-temporal data analysis methods usually assume fairly complete data, while a num...
Gap-filling or modelling surface-atmosphere fluxes critically depends on an, ideally continuous, ava...
Multivariate spatio-temporal data analysis methods usually assume fairly complete data, while a numb...
In this paper, an improved methodology for the determination of missing values in a spatiotemporal d...
The present research uses two different functional data analysis methods called functional high-dens...
Often environmental scientists face the problem of clustering different sites, areas or stations in ...
Data remediation of long gaps in time series requires a precise knowledge and a subsequent modelling...
Data remediation of long gaps in time series requires a precise knowledge and a subsequent modelling...
Data remediation of long gaps in time series requires a precise knowledge and a subsequent modelling...