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Differential equations / Differential calculus / Ordinary differential equations / Numerical analysis / Multivariable calculus / Partial differential equation / Wave equation / Variation of parameters / Galerkin method / Calculus / Mathematical analysis / Mathematics
Date: 2014-03-18 08:26:45
Differential equations
Differential calculus
Ordinary differential equations
Numerical analysis
Multivariable calculus
Partial differential equation
Wave equation
Variation of parameters
Galerkin method
Calculus
Mathematical analysis
Mathematics

9 Finite Elements We have seen how to use finite differences to approximate partial differential equations on a lattice, and how to analyze and improve the stability and accuracy of these approximations. As powerful as

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