An algorithm for nonlinear optimization using linear programming and equality constrained subproblems

被引:0
|
作者
Richard H. Byrd
Nicholas I.M. Gould
Jorge Nocedal
Richard A. Waltz
机构
[1] University of Colorado,Department of Computer Science
[2] Rutherford Appleton Laboratory,Computational Science and Engineering Department
[3] Northwestern University,Department of Electrical and Computer Engineering
来源
Mathematical Programming | 2003年 / 100卷
关键词
Numerical Experiment; Linear Approximation; Conjugate Gradient; Gradient Method; Nonlinear Optimization;
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摘要
This paper describes an active-set algorithm for large-scale nonlinear programming based on the successive linear programming method proposed by Fletcher and Sainz de la Maza [10]. The step computation is performed in two stages. In the first stage a linear program is solved to estimate the active set at the solution. The linear program is obtained by making a linear approximation to the ℓ1 penalty function inside a trust region. In the second stage, an equality constrained quadratic program (EQP) is solved involving only those constraints that are active at the solution of the linear program. The EQP incorporates a trust-region constraint and is solved (inexactly) by means of a projected conjugate gradient method. Numerical experiments are presented illustrating the performance of the algorithm on the CUTEr [1, 15] test set.
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页码:27 / 48
页数:21
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