Login / Signup

A time independent least squares algorithm for parameter identification of Turing patterns in reaction-diffusion systems.

Lili ChangXinyu WangGuiquan SunZhen WangZhen Jin
Published in: Journal of mathematical biology (2023)
Turing patterns arising from reaction-diffusion systems such as epidemic, ecology or chemical reaction models are an important dynamic property. Parameter identification of Turing patterns in spatial continuous and networked reaction-diffusion systems is an interesting and challenging inverse problem. The existing algorithms require huge account operations and resources. These drawbacks are amplified when apply them to reaction-diffusion systems on large-scale complex networks. To overcome these shortcomings, we present a new least squares algorithm which is rooted in the fact that Turing patterns are the stationary solutions of reaction-diffusion systems. The new algorithm is time independent, it translates the parameter identification problem into a low dimensional optimization problem even a low order linear algebra equations. The numerical simulations demonstrate that our algorithm has good effectiveness, robustness as well as performance.
Keyphrases
  • machine learning
  • deep learning
  • electron transfer
  • systematic review
  • randomized controlled trial
  • neural network
  • molecular dynamics
  • mass spectrometry