Models of complex systems often consist of state variables with structurally similar dynamics that differ in the specific values of some parameters. Examples are multi-class epidemiological models, chemical reaction networks describing multiple components (e.g., binding sites) with equivalent functional behavior, and models of electric circuits with replicated designs. In these cases, the analysis may be expensive due to the model size. Here we consider models defined as systems of polynomial ordinary differential equations (ODEs) with positive solutions. We present an algorithm to reduce the computational cost by transforming the original ODE model into one for which we can compute an appropriate over-approximation on a smaller set of stat...
Ordinary differential equations (ODEs) are widespread in many natural sciences including chemistry, ...
Ordinary differential equations (ODEs) with polynomial derivatives are a fundamental tool for unders...
Ordinary differential equations (ODEs) are the primary means to modelling dynamical systems in many ...
Models of complex systems often consist of state variables with structurally similar dynamics that d...
It is well known that exact notions of model abstraction and reduction for dynamical systems may not...
We present a model reduction technique for a class of nonlinear ordinary differential equation (ODE)...
It is well known that exact notions of model abstraction and reduction for dynamical systems may not...
In life sciences, deriving insights from dynamic models can be challenging due to the large number o...
Biological systems are typically modelled by nonlinear differential equations. In an effort to produ...
We present an algorithm to compute exact aggregations of a class of systems of ordinary differential...
Increasing complexity of mathematical models demands techniques of model order reduction (MOR) that ...
We present an algorithm to compute exact aggregations of a class of systems of ordinary differential...
Abstract. We present an algorithm to compute exact aggregations of a class of systems of ordinary di...
Ordinary differential equations (ODEs) are widespread in many natural sciences including chemistry, ...
Ordinary differential equations (ODEs) with polynomial derivatives are a fundamental tool for unders...
Ordinary differential equations (ODEs) are the primary means to modelling dynamical systems in many ...
Models of complex systems often consist of state variables with structurally similar dynamics that d...
It is well known that exact notions of model abstraction and reduction for dynamical systems may not...
We present a model reduction technique for a class of nonlinear ordinary differential equation (ODE)...
It is well known that exact notions of model abstraction and reduction for dynamical systems may not...
In life sciences, deriving insights from dynamic models can be challenging due to the large number o...
Biological systems are typically modelled by nonlinear differential equations. In an effort to produ...
We present an algorithm to compute exact aggregations of a class of systems of ordinary differential...
Increasing complexity of mathematical models demands techniques of model order reduction (MOR) that ...
We present an algorithm to compute exact aggregations of a class of systems of ordinary differential...
Abstract. We present an algorithm to compute exact aggregations of a class of systems of ordinary di...
Ordinary differential equations (ODEs) are widespread in many natural sciences including chemistry, ...
Ordinary differential equations (ODEs) with polynomial derivatives are a fundamental tool for unders...
Ordinary differential equations (ODEs) are the primary means to modelling dynamical systems in many ...