Direct Estimation of Parameters in ODE Models Using WENDy: Weak-form Estimation of Nonlinear Dynamics

02/26/2023
by   David M. Bortz, et al.
0

We introduce the Weak-form Estimation of Nonlinear Dynamics (WENDy) method for estimating model parameters for non-linear systems of ODEs. The core mathematical idea involves an efficient conversion of the strong form representation of a model to its weak form, and then solving a regression problem to perform parameter inference. The core statistical idea rests on the Errors-In-Variables framework, which necessitates the use of the iteratively reweighted least squares algorithm. Further improvements are obtained by using orthonormal test functions, created from a set of C^∞ bump functions of varying support sizes. We demonstrate that WENDy is a highly robust and efficient method for parameter inference in differential equations. Without relying on any numerical differential equation solvers, WENDy computes accurate estimates and is robust to large (biologically relevant) levels of measurement noise. For low dimensional systems with modest amounts of data, WENDy is competitive with conventional forward solver-based nonlinear least squares methods in terms of speed and accuracy. For both higher dimensional systems and stiff systems, WENDy is typically both faster (often by orders of magnitude) and more accurate than forward solver-based approaches. We illustrate the method and its performance in some common population and neuroscience models, including logistic growth, Lotka-Volterra, FitzHugh-Nagumo, Hindmarsh-Rose, and a Protein Transduction Benchmark model. Software and code for reproducing the examples is available at (https://github.com/MathBioCU/WENDy).

READ FULL TEXT

page 17

page 18

page 19

page 20

research
07/03/2023

Understanding the impact of numerical solvers on inference for differential equation models

Most ordinary differential equation (ODE) models used to describe biolog...
research
02/07/2020

Adaptive semiparametric Bayesian differential equations via sequential Monte Carlo

Nonlinear differential equations (DEs) are used in a wide range of scien...
research
04/24/2020

CLUE: Exact maximal reduction of kinetic models by constrained lumping of differential equations

Motivation: Detailed mechanistic models of biological processes can pose...
research
09/28/2022

Parameter identification from single trajectory data: from linear to nonlinear

Our recent work lays out a general framework for inferring information a...
research
07/24/2019

Estimation of ordinary differential equation models with discretization error quantification

We consider estimation of ordinary differential equation (ODE) models fr...
research
05/09/2020

Weak SINDy: A Data-Driven Galerkin Method for System Identification

We present a weak formulation and discretization of the system discovery...
research
09/06/2022

Weak Collocation Regression method: fast reveal hidden stochastic dynamics from high-dimensional aggregate data

Revealing hidden dynamics from the stochastic data is a challenging prob...

Please sign up or login with your details

Forgot password? Click here to reset