Model calibration is an essential test that dynamic hypotheses must pass in order to serve as tools for decision-making. In short, it is the search for a match between actual and simulated behaviours using parameter inference. Here, we approach such an inference process from a Bayesian perspective. Under this paradigm, we provide statements about the parameters (viewed as random variables) and data in probabilistic terms. These statements stem from a posterior distribution whose solution is often found via statistical simulation. However, the uptake of these methods within the system dynamics field has been somewhat limited, and state-of-the-art algorithms have not been explored. Therefore, we introduce Hamiltonian Monte Carlo (HMC), an eff...
In the context of computer models, calibration is the process of estimating unknown simulator parame...
A b s t r a c t: This paper proposes to use approximate instead of exact stochastic simulation algor...
We often want to learn about physical processes that are described by complex nonlinear mathematical...
Masters Research - Master of Philosophy (MPhil)This thesis proposes Bayesian inference as a feasible...
Parameter inference is a fundamental problem in data-driven modeling. Indeed, for making reliable pr...
Bayesian statistics may constitute the core of a consistent and comprehensive framework for the stat...
Bayesian statistics may constitute the core of a consistent and comprehensive framework for the stat...
The Bayesian approach is well recognised in the structural dynamics community as an attractive appro...
In recent years, Bayesian model updating techniques based on measured data have been applied to syst...
We consider prediction and uncertainty analysis for systems which are approximated using complex mat...
The work here explores new numerical methods for supporting a Bayesian approach to parameter estimat...
Approximate Bayesian Computation (ABC) methods have gained in popularity over the last decade becaus...
A new multi-level Markov chain Monte Carlo algorithm for Bayesian inference, ABC-SubSim, has recentl...
Probability logic with Bayesian updating provides a rigorous framework to quantify modeling uncertai...
We describe a Bayesian methodology for fitting deterministic dynamic models, demonstrating how this ...
In the context of computer models, calibration is the process of estimating unknown simulator parame...
A b s t r a c t: This paper proposes to use approximate instead of exact stochastic simulation algor...
We often want to learn about physical processes that are described by complex nonlinear mathematical...
Masters Research - Master of Philosophy (MPhil)This thesis proposes Bayesian inference as a feasible...
Parameter inference is a fundamental problem in data-driven modeling. Indeed, for making reliable pr...
Bayesian statistics may constitute the core of a consistent and comprehensive framework for the stat...
Bayesian statistics may constitute the core of a consistent and comprehensive framework for the stat...
The Bayesian approach is well recognised in the structural dynamics community as an attractive appro...
In recent years, Bayesian model updating techniques based on measured data have been applied to syst...
We consider prediction and uncertainty analysis for systems which are approximated using complex mat...
The work here explores new numerical methods for supporting a Bayesian approach to parameter estimat...
Approximate Bayesian Computation (ABC) methods have gained in popularity over the last decade becaus...
A new multi-level Markov chain Monte Carlo algorithm for Bayesian inference, ABC-SubSim, has recentl...
Probability logic with Bayesian updating provides a rigorous framework to quantify modeling uncertai...
We describe a Bayesian methodology for fitting deterministic dynamic models, demonstrating how this ...
In the context of computer models, calibration is the process of estimating unknown simulator parame...
A b s t r a c t: This paper proposes to use approximate instead of exact stochastic simulation algor...
We often want to learn about physical processes that are described by complex nonlinear mathematical...