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Dynamical systems / Continuum mechanics / Smoothed-particle hydrodynamics / Non-parametric statistics / Kernel density estimation / Lagrangian / Hamiltonian mechanics / Momentum / Finite pointset method / Physics / Computational fluid dynamics / Fluid dynamics
Date: 2010-12-08 17:21:11
Dynamical systems
Continuum mechanics
Smoothed-particle hydrodynamics
Non-parametric statistics
Kernel density estimation
Lagrangian
Hamiltonian mechanics
Momentum
Finite pointset method
Physics
Computational fluid dynamics
Fluid dynamics

Smoothed Particle Hydrodynamics and Magnetohydrodynamics Daniel J. Price Centre for Stellar and Planetary Astrophysics & School of Mathematical Sciences, Monash University, Melbourne Vic. 3800, Australia Abstract

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