The monitoring and prediction of water quality parameters are important tasks in the management of water resources. In this work, the performances of time series statistical models were evaluated to predict and forecast the dissolved oxygen (DO) concentration in several monitoring sites located along the main river Vouga, in Portugal, during the period from January 2002 to May 2015. The models being compared are a regression model with correlated errors and a state-space model, which can be seen as a calibration model. Both models allow the incorporation of water quality variables, such as time correlation or seasonality. Results show that, for the DO variable, the calibration model outperforms the regression model for sample modeling, that...
International audienceDissolved oxygen is one of the parameters of river water quality for which the...
In this work it is constructed a hydro-meteorological factor to improve the adjustment of statistica...
A regression model integrating data pre-processing and transformation, input selection techniques an...
The monitoring and prediction of water quality parameters are important tasks in the management of w...
The focus of this work is on contributions to the analysis of time series of water quality variables...
The aim of this contribution is to combine statistical methodologies to geographically classify hom...
Surface water quality monitoring has as its main objective the characterization of water resources a...
Time series analysis by state space models provide a very flexible tool for analysing dynamic phenom...
The surface water quality monitoring is an important concern of public organizations due to its rele...
This work proposes a methodology for characterizing the time evolution of water quality time series ...
A structural time series model is one which is set up in terms of components which have a direct int...
Three approaches to trend analysis of water quality time series are discussed: (1) seasonal model, w...
This work presents some common issues in the statistical analysis of time series of environmental ar...
This study focuses on the potential improvement of environmental variables modelling by using linear...
Robust statistical tools were applied on the water quality datasets with the aim of determining the ...
International audienceDissolved oxygen is one of the parameters of river water quality for which the...
In this work it is constructed a hydro-meteorological factor to improve the adjustment of statistica...
A regression model integrating data pre-processing and transformation, input selection techniques an...
The monitoring and prediction of water quality parameters are important tasks in the management of w...
The focus of this work is on contributions to the analysis of time series of water quality variables...
The aim of this contribution is to combine statistical methodologies to geographically classify hom...
Surface water quality monitoring has as its main objective the characterization of water resources a...
Time series analysis by state space models provide a very flexible tool for analysing dynamic phenom...
The surface water quality monitoring is an important concern of public organizations due to its rele...
This work proposes a methodology for characterizing the time evolution of water quality time series ...
A structural time series model is one which is set up in terms of components which have a direct int...
Three approaches to trend analysis of water quality time series are discussed: (1) seasonal model, w...
This work presents some common issues in the statistical analysis of time series of environmental ar...
This study focuses on the potential improvement of environmental variables modelling by using linear...
Robust statistical tools were applied on the water quality datasets with the aim of determining the ...
International audienceDissolved oxygen is one of the parameters of river water quality for which the...
In this work it is constructed a hydro-meteorological factor to improve the adjustment of statistica...
A regression model integrating data pre-processing and transformation, input selection techniques an...