Learning implicit equations from data

ORAL

Abstract

Reduced order modeling and dimensionality reduction techniques have become very popular in nuclear physics in the last decade. The motivations for speeding up computations include the developing of uncertainty quantification frameworks, experimental design, real time control for experimental set ups, and the ability to keep up with the computational burden of implementing ever-increasingly more complex models, among others.

Various of these techniques follow two steps to construct the reduced order model. First, we identify a set of suitable reduced coordinates to describe our usually high-dimensional system. Second, we find (or construct) equations that relate how these coordinates evolve as either time (for dynamical systems), or the controlling parameters change. The second step can be a challenge for non-affine or non-linear operators, while it can become almost impossible for experimental set-ups where there is no access to the underlying true high-dimensional equations of the system.

In this talk we will discuss some approaches to get around this problem by constructing implicit equations from observed data. Some of the approahces work very well, Others work SUPER well. A handful don’t work at all.

*Facility for Rare Isotope Beams

Presenters

  • Pablo G Giuliani

    • Facility for Rare Isotope Beams

Authors

  • Pablo G Giuliani

    • Facility for Rare Isotope Beams
  • Kyle S Godbey

    • Michigan State University
    • Facility for Rare Isotope Beams
  • Edgard L Bonilla Carrasquel

    • Stanford Univ
  • Diogenes Figueroa

    • Florida State University
  • Witold Nazarewicz

    • Michigan State University
  • Illya Bakurov

    • Michigan State University
  • Nathan Haut

    • Michigan State University
  • Wolfgang Banzhaf

    • Michigan State University
  • Ruchi Garg

    • Michigan State University