Inferring interaction potentials from particle trajectories

ORAL

Abstract

Interaction potentials provide rich information about systems of interacting and self-assembling particles. Measuring interaction potentials has repeatedly revealed novel physics, and extracting effective interactions in complex systems provides a path towards simulation and design in systems where the precise physics is unknown. However, measurements of interaction potentials in experiments are difficult and time-intensive. Moreover, previous methods of measuring interparticle potentials rely on highly constrained motion of small numbers of particles at equilibrium, placing limits on which interactions can be measured. We introduce a method for inferring interaction potentials directly from trajectory data. Beginning with a form for the equations of motion, we find the potential that maximizes the probability of observing a known trajectory. The method is valid both in and out of equilibrium, and is well-suited to large numbers of interacting particles. We demonstrate our method in both simulated and experimental colloidal systems.

*This material is based on work supported by NSF Graduate Research Fellowship Grant DGE1745303, the Materials Research Science and Engineering Centers Grant DMR-1420570, and the Office of Naval Research Grant N00014-17-1-3029.

Presenters

  • Ella M King

    • Harvard University

Authors

  • Ella M King

    • Harvard University
  • Megan C Engel

    • University of Calgary
    • Harvard University
  • Sam Schoenholz

    • Google Brain
  • Caroline S Martin

    • Harvard University
  • Vinothan N Manoharan

    • Harvard University
  • Michael P Brenner

    • Harvard University