Global Convergence Analysis of Line Search Interior-Point Methods for Nonlinear Programming without Regularity Assumptions

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作者
X. W. Liu
J. Sun
机构
[1] National University of Singapore,Research Fellow, Department of Decision Sciences and Singapore
[2] Hebei University of Technology,MIT Alliance, Associate Professor, Department of Applied Mathematics
[3] National University of Singapore,Professor, Department of Decision Sciences and Singapore
关键词
Nonlinear programming; interior-point methods; convergence;
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摘要
As noted by Wächter and Biegler (Ref. 1), a number of interior-point methods for nonlinear programming based on line-search strategy may generate a sequence converging to an infeasible point. We show that, by adopting a suitable merit function, a modified primal-dual equation, and a proper line-search procedure, a class of interior-point methods of line-search type will generate a sequence such that either all the limit points of the sequence are KKT points, or one of the limit points is a Fritz John point, or one of the limit points is an infeasible point that is a stationary point minimizing a function measuring the extent of violation to the constraint system. The analysis does not depend on the regularity assumptions on the problem. Instead, it uses a set of satisfiable conditions on the algorithm implementation to derive the desired convergence property.
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页码:609 / 628
页数:19
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