Nonlocal flocking dynamics: Learning the fractional order of PDEs from particle simulations
Zhiping Mao, Zhen Li, George Em Karniadakis

TL;DR
This paper introduces a framework to learn the fractional order of PDEs governing nonlocal flocking dynamics directly from particle simulation data, bridging microscopic agent models and macroscopic continuum descriptions.
Contribution
It presents a novel method to infer the fractional influence function in PDEs from particle trajectories, enhancing the modeling of nonlocal flocking behavior.
Findings
Learned fractional influence functions match particle data
Finite volume solutions reproduce collective density distributions
Framework applicable in 1D and 2D flocking models
Abstract
Flocking refers to collective behavior of a large number of interacting entities, where the interactions between discrete individuals produce collective motion on the large scale. We employ an agent-based model to describe the microscopic dynamics of each individual in a flock, and use a fractional PDE to model the evolution of macroscopic quantities of interest. The macroscopic models with phenomenological interaction functions are derived by applying the continuum hypothesis to the microscopic model. Instead of specifying the fPDEs with an ad hoc fractional order for nonlocal flocking dynamics, we learn the effective nonlocal influence function in fPDEs directly from particle trajectories generated by the agent-based simulations. We demonstrate how the learning framework is used to connect the discrete agent-based model to the continuum fPDEs in 1D and 2D nonlocal flocking dynamics.…
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