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One-way coupled Lagrangian Particle Tracking algorithms.

Project description

lptlib (Lagrangian Particle Tracking Library)

Previously project-arrakis

Python based particle tracking algorithms for CFD data

A highly parallelized set of Lagrangian Particle Tracking (LPT) algorithms based on Python to post-process steady and unsteady CFD data. An advanced programming interface (API) is developed for uncertainty quantification of optical velocimetry data.

Installation

pip install lptlib

Python >= 3.10 is required. Core dependencies include numpy, scipy, matplotlib, pandas, seaborn, tqdm, mpi4py, and scikit-learn.

Overview

lptlib provides building blocks to:

  • Read Plot3D grid/flow data (GridIO, FlowIO)
  • Locate points in structured curvilinear grids (Search)
  • Interpolate flow variables at arbitrary locations (Interpolation)
  • Integrate particle paths and streamlines with multiple schemes (Integration, Streamlines)
  • Run stochastic, parallel particle simulations (StochasticModel, Particle, SpawnLocations)
  • Compute derived variables like velocity, temperature, pressure, Mach, viscosity (Variables)
  • Post-process LPT outputs to Eulerian fields and Plot3D files (DataIO)

Quickstart

Read Plot3D grid and flow

from lptlib.io.plot3dio import GridIO, FlowIO

grid = GridIO('path/to/grid.sp.x')
flow = FlowIO('path/to/sol-0000010.q')
grid.read_grid()
flow.read_flow()
grid.compute_metrics()

Interpolate and integrate a streamline

import numpy as np
from lptlib.streamlines.search import Search
from lptlib.streamlines.interpolation import Interpolation
from lptlib.streamlines.integration import Integration

point = np.array([0.1, 0.05, 0.0])
idx = Search(grid, point)
idx.compute(method='p-space')

interp = Interpolation(flow, idx)
interp.compute(method='p-space')

intg = Integration(interp)
new_point, u = intg.compute(method='pRK4', time_step=1e-3)

One-shot streamline extraction

from lptlib.streamlines.streamlines import Streamlines

sl = Streamlines('path/to/grid.sp.x', 'path/to/sol-0000010.q', [0.1, 0.05, 0.0])
sl.compute(method='p-space')
coords = sl.streamline  # list of points

Stochastic parallel run (oblique shock example)

The repository includes a fully working example in main.py that generates an oblique shock test case and launches an adaptive particle tracking simulation in parallel:

python main.py

Key objects used in the example:

  • ObliqueShock, ObliqueShockData to synthesize grid/flow for a controlled shock case
  • Particle, SpawnLocations to define particle size distribution and seed locations
  • StochasticModel to run many particles in parallel with adaptive time stepping

DataIO pipeline (Lagrangian → Eulerian)

DataIO reads scattered particle tracks (as .npy per particle), interpolates flow to those points, removes outliers, then interpolates both flow and particle fields onto a structured mesh and writes Plot3D outputs for visualization and downstream tools.

Essential steps:

  1. Scatter interpolation of flow to particle locations (MPI-parallel)
  2. Outlier removal and caching of intermediate .npy files under dataio/
  3. Grid interpolation to a user-defined mesh
  4. Export to Plot3D: mgrd_to_p3d.x, mgrd_to_p3d_fluid.q, mgrd_to_p3d_particle.q

See test/test_dataio.py for a minimal, runnable example.

Core API

  • lptlib.io.plot3dio.GridIO
    • read_grid(data_type='f4'), compute_metrics(), mgrd_to_p3d(...)
  • lptlib.io.plot3dio.FlowIO
    • read_flow(data_type='f4'), read_unsteady_flow(...), mgrd_to_p3d(...), read_formatted_txt(...)
  • lptlib.streamlines.Search
    • compute(method=...), p2c(ppoint), c2p(cpoint)
  • lptlib.streamlines.Interpolation
    • compute(method=...) with options: p-space, c-space, rbf-*, rgi-*, simple_oblique_shock
  • lptlib.streamlines.Integration
    • compute(method=..., time_step=...) with pRK2/4, cRK2/4, unsteady variants
    • compute_ppath(...) for particle dynamics with drag models (stokes, loth, etc.)
  • lptlib.streamlines.Streamlines
    • High-level orchestrator: compute(method=...), exposes streamline, fvelocity, svelocity, time
  • lptlib.streamlines.StochasticModel
    • Parallel execution over many particles: multi_process(), multi_thread(), mpi_run(), serial()
  • lptlib.function.Variables
    • compute_velocity(), compute_temperature(), compute_pressure(), compute_mach(), compute_viscosity()
  • lptlib.io.DataIO
    • compute() end-to-end Lagrangian→Eulerian conversion and Plot3D export

Testing

Run the test suite from the repo root:

pytest -q

Tests cover search, interpolation (steady/unsteady), integration, DataIO, streamlines, plotting, and MPI helpers.

License

Distributed under MIT AND (Apache-2.0 OR BSD-2-Clause). See LICENSE.

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