Globally Convergent Interior-Point Algorithm for Nonlinear Programming

被引:0
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作者
I. Akrotirianakis
B. Rustem
机构
[1] Princeton University,Postdoctoral Research Associate, Department of Chemical Engineering
[2] Imperial College,Professor, Department of Computing
关键词
Primal-dual interior-point algorithms; merit functions; convergence theory;
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摘要
This paper presents a primal-dual interior-point algorithm for solving general constrained nonlinear programming problems. The inequality constraints are incorporated into the objective function by means of a logarithmic barrier function. Also, satisfaction of the equality constraints is enforced through the use of an adaptive quadratic penalty function. The penalty parameter is determined using a strategy that ensures a descent property for a merit function. Global convergence of the algorithm is achieved through the monotonic decrease of a merit function. Finally, extensive computational results show that the algorithm can solve large and difficult problems in an efficient and robust way.
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页码:497 / 521
页数:24
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