Abstract

ABSTRACT The Inexact Adaptive Newton method (IAN) is a modification of the Adaptive Implicit Method1 (AIM) with improved Newton convergence. Both methods simplify the Jacobian at each time step by zeroing coefficients in regions where saturations are changing slowly. The methods differ in how the diagonal block terms are treated. On test problems with up to 3,000 cells, IAN consistently saves approximately 30% of the CPU time when compared to the fully implicit method. AIM shows similar savings on some problems, but takes as much CPU time as fully implicit on other test problems due to poor Newton convergence.

Keywords:
Jacobian matrix and determinant Convergence (economics) Diagonal Newton's method Computer science Block (permutation group theory) Applied mathematics Algorithm Mathematical optimization Mathematics Nonlinear system

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3
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Citation History

Topics

Advanced Optimization Algorithms Research
Physical Sciences →  Mathematics →  Numerical Analysis
Iterative Methods for Nonlinear Equations
Physical Sciences →  Mathematics →  Numerical Analysis
Numerical methods for differential equations
Physical Sciences →  Mathematics →  Numerical Analysis

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