PySDM
Particle simulator
An atmospheric modeling package for simulating particle dynamics in moist air using the Super-Droplet Method
Pythonic particle-based (super-droplet) warm-rain/aqueous-chemistry cloud microphysics package with box, parcel & 1D/2D prescribed-flow examples in Python, Julia and Matlab
60 stars
5 watching
36 forks
Language: Python
last commit: 11 months ago
Linked from 1 awesome list
atmospheric-modellingatmospheric-physicscudagpugpu-computingmonte-carlo-simulationnumbanvrtcparticle-systemphysics-simulationpintpypi-packagepythonresearchsimulationthrust
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