On the joint estimation of flow fields and particle properties from Lagrangian data
arXiv stat.ML / 3/26/2026
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Key Points
- The paper studies whether flow fields and unknown particle properties (such as position, size/diameter, and density) can be jointly inferred from Lagrangian particle tracking (LPT) data under multiphase disperse-flow physics.
- It introduces a data-assimilation framework that couples an Eulerian flow representation with Lagrangian particle models, enforcing governing equations to infer both carrier-fluid fields and particle properties simultaneously.
- The authors validate the approach across three regimes: turbulent boundary layers with noisy tracer tracks (St→0), inertial particles in homogeneous isotropic turbulence (St≈1–5) for implicit particle characterization, and compressible shock-dominated flows with first joint reconstructions of velocity, pressure, density, and particle properties.
- A sensitivity analysis shows that seeding density, measurement noise level, and Stokes number strongly affect reconstruction accuracy, defining practical feasibility limits for joint estimation.
- Overall, the work frames joint flow/particle inference as a physics-informed inverse problem and identifies when it is achievable versus constrained, especially in supersonic/shock-dominated conditions.
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