Differential equations (DEs) are commonly used to describe dynamic systems evolving in one (ordinary differ-ential equations or ODEs) or in more than one dimensions (partial differential equations or PDEs). In real data applications the parameters involved in the DE models are usually unknown and need to be estimated from the available measurements together with the state function. In this paper, we present frequentist and Bayesian ap-proaches for the joint estimation of the parameters and of the state functions involved in PDEs. We also propose two strategies to include differential (initial and/or boundary) conditions in the estimation procedure. We evaluate the performances of the proposed strategy on simulated and real data applications
peer reviewedaudience: researcher, professionalOrdinary differential equations (ODEs) are widely use...
The behaviour of many processes in science and engineering can be accurately described by dynamical ...
International audienceWe consider the problem of estimating parameters and unobserved trajectories i...
Differential equations (DEs) are commonly used to describe dynamic systems evolving in one (ordinary...
Differential equations (DEs) are commonly used to describe dynamic systems evolving in one (ordinary...
Partial differential equation (PDE) models are commonly used to model complex dynamic systems in app...
Ordinary differential equations (ODEs) are widely used to model physical, chemical and biological pr...
Parameter estimation for differential equations is an important and challenging problem in many area...
Bayesian parameter estimation in coupled ordi-nary differential equations (ODEs) is challeng-ing due...
Parameter estimation is a vital component of model development. Making use of data, one aims to dete...
Abstract–Inferring the parameters of ordinary differential equations (ODEs) from noisy observations ...
AbstractNonlinear dynamic systems such as biochemical pathways can be represented in abstract form u...
We explore probability modelling of discretization uncertainty for system states defined implicitly ...
This paper advocates expansion of the role of Bayesian statistical inference when formally quantifyi...
We explore probability modelling of discretization uncertainty for system states defined implicitly ...
peer reviewedaudience: researcher, professionalOrdinary differential equations (ODEs) are widely use...
The behaviour of many processes in science and engineering can be accurately described by dynamical ...
International audienceWe consider the problem of estimating parameters and unobserved trajectories i...
Differential equations (DEs) are commonly used to describe dynamic systems evolving in one (ordinary...
Differential equations (DEs) are commonly used to describe dynamic systems evolving in one (ordinary...
Partial differential equation (PDE) models are commonly used to model complex dynamic systems in app...
Ordinary differential equations (ODEs) are widely used to model physical, chemical and biological pr...
Parameter estimation for differential equations is an important and challenging problem in many area...
Bayesian parameter estimation in coupled ordi-nary differential equations (ODEs) is challeng-ing due...
Parameter estimation is a vital component of model development. Making use of data, one aims to dete...
Abstract–Inferring the parameters of ordinary differential equations (ODEs) from noisy observations ...
AbstractNonlinear dynamic systems such as biochemical pathways can be represented in abstract form u...
We explore probability modelling of discretization uncertainty for system states defined implicitly ...
This paper advocates expansion of the role of Bayesian statistical inference when formally quantifyi...
We explore probability modelling of discretization uncertainty for system states defined implicitly ...
peer reviewedaudience: researcher, professionalOrdinary differential equations (ODEs) are widely use...
The behaviour of many processes in science and engineering can be accurately described by dynamical ...
International audienceWe consider the problem of estimating parameters and unobserved trajectories i...