DATA-DRIVEN EVOLUTIONS OF CRITICAL POINTS

Stefano Almi, Massimo Fornasier, Richard Huber

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

In this paper we are concerned with the learnability of energies from data obtained by observing time evolutions of their critical points starting at random initial equilibria. As a byproduct of our theoretical framework we introduce the novel concept of mean-field limit of critical point evolutions and of their energy balance as a new form of transport. We formulate the energy learning as a variational problem, minimizing the discrepancy of energy competitors from fulfilling the equilibrium condition along any trajectory of critical points originated at random initial equilibria. By Γ-convergence arguments we prove the convergence of minimal solutions obtained from finite number of observations to the exact energy in a suitable sense. The abstract framework is actually fully constructive and numerically implementable. Hence, the approximation of the energy from a finite number of observations of past evolutions allows one to simulate further evolutions, which are fully data-driven. As we aim at a precise quantitative analysis, and to provide concrete examples of tractable solutions, we present analytic and numerical results on the reconstruction of an elastic energy for a one-dimensional model of thin nonlinear-elastic rod.

Original languageEnglish
Pages (from-to)207-255
Number of pages49
JournalFoundations of Data Science
Volume2
Issue number3
DOIs
StatePublished - Sep 2020

Keywords

  • Energy learning
  • data assimilation
  • mean-field limit
  • probability measure transport
  • quasi-static evolutions of critical points
  • variational calculus

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