A machine learning based Bayesian optimization solution to non-linear responses in dusty plasmas

Abstract
Nonlinear frequency response analysis is a widely used method for determining system dynamics in the presence of nonlinearities. In dusty plasmas, the plasma-grain interaction (e.g. grain charging fluctuations) can be characterized by a single-particle non-linear response analysis, while grain-grain non-linear interactions can be determined by a multi-particle non-linear response analysis. Here a machine learning-based method to determine the equation of motion in the non-linear response analysis for dust particles in plasmas is presented. Searching the parameter space in a Bayesian manner allows an efficient optimization of the parameters needed to match simulated non-linear response curves to experimentally measured non-linear response curves.
Funding Information
  • National Science Foundation (1707215)
  • NASA (1571701)