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Digital signal processing / Dirac delta function / Fourier analysis / Cnoidal wave / Nonlinear system / Dimensionless quantity / Differential equation / Partial differential equation / Spectral theory of ordinary differential equations / Mathematical analysis / Fluid dynamics / Water waves
Date: 2006-06-21 05:24:24
Digital signal processing
Dirac delta function
Fourier analysis
Cnoidal wave
Nonlinear system
Dimensionless quantity
Differential equation
Partial differential equation
Spectral theory of ordinary differential equations
Mathematical analysis
Fluid dynamics
Water waves

Theor. Comput. Fluid Dyn: 125–144 DOIs00162y O R I G I NA L A RT I C L E B. J. Binder · F. Dias · J.-M. Vanden-Broeck

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