The scientific methodology of mathematical models and their credibility to form the basis of public policy decisions have been frequently challenged. The development of novel methods for rigorously assessing the uncertainty underlying model predictions is one of the priorities of the modelling community [1]. Striving for novel uncertainty analysis tools, I present the Bayesian calibration of process -based models as a methodological advancement that warrants consideration in ecosystem analysis and biogeochemical research [2]. This modelling framework combines the advantageous features of both process -based and statistical approaches; that ...
In recent years there has been considerable interest in developing models for river and lake ecologi...
An ecosystem model is a representation of a real complex ecological system, and is usually described...
We present a case study for Bayesian analysis and proper representation of distributions and depende...
The scientific methodology of mathematical models and their credibility to form the basi...
The scientific methodology of mathematical models and their credibility to form the basi...
The scientific methodology of mathematical models and their credibility to form the basi...
This research aims to integrate mathematical water quality models with Bayesian inference techniques...
This research aims to integrate mathematical water quality models with Bayesian inference techniques...
This research aims to integrate mathematical water quality models with Bayesian inference techniques...
Data-model integration plays a critical role in assessing and improving our capacity to predict eco...
An ecosystem model is a representation of a real complex ecological system, and is usually described...
The credibility of the scientific methodology of mathematical models and their adequacy to form the ...
The credibility of the scientific methodology of mathematical models and their adequacy to form the ...
<p>Estuaries interfacing with the land, atmosphere and open oceans can be influenced in a variety of...
Analyses of ecological data should account for the uncertainty in the process(es) that generated the...
In recent years there has been considerable interest in developing models for river and lake ecologi...
An ecosystem model is a representation of a real complex ecological system, and is usually described...
We present a case study for Bayesian analysis and proper representation of distributions and depende...
The scientific methodology of mathematical models and their credibility to form the basi...
The scientific methodology of mathematical models and their credibility to form the basi...
The scientific methodology of mathematical models and their credibility to form the basi...
This research aims to integrate mathematical water quality models with Bayesian inference techniques...
This research aims to integrate mathematical water quality models with Bayesian inference techniques...
This research aims to integrate mathematical water quality models with Bayesian inference techniques...
Data-model integration plays a critical role in assessing and improving our capacity to predict eco...
An ecosystem model is a representation of a real complex ecological system, and is usually described...
The credibility of the scientific methodology of mathematical models and their adequacy to form the ...
The credibility of the scientific methodology of mathematical models and their adequacy to form the ...
<p>Estuaries interfacing with the land, atmosphere and open oceans can be influenced in a variety of...
Analyses of ecological data should account for the uncertainty in the process(es) that generated the...
In recent years there has been considerable interest in developing models for river and lake ecologi...
An ecosystem model is a representation of a real complex ecological system, and is usually described...
We present a case study for Bayesian analysis and proper representation of distributions and depende...