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信赖域策略的内点投影既约Hessian方法解非线性约束优化
引用本文:朱德通.信赖域策略的内点投影既约Hessian方法解非线性约束优化[J].高校应用数学学报(英文版),2004,19(3):311-326.
作者姓名:朱德通
作者单位:Dept.ofMath.,ShanghaiNormalUniv.,Shanghai200234,China.
基金项目:国家自然科学基金;上海市教委项目
摘    要:A interior point scaling projected reduced Hessian method with combination of nonmonotonic backtracking technique and trust region strategy for nonlinear equality constrained optimization with nonegative constraint on variables is proposed. In order to deal with large problems,a pair of trust region subproblems in horizontal and vertical subspaces is used to replace the general full trust region subproblem. The horizontal trust region subproblem in the algorithm is only a general trust region subproblem while the vertical trust region subproblem is defined by a parameter size of the vertical direction subject only to an ellipsoidal constraint. Both trust region strategy and line search technique at each iteration switch to obtaining a backtracking step generated by the two trust region subproblems. By adopting the l1 penalty function as the merit function, the global convergence and fast local convergence rate of the proposed algorithm are established under some reasonable conditions. A nonmonotonic criterion and the second order correction step are used to overcome Maratos effect and speed up the convergence progress in some ill-conditioned cases.

关 键 词:信赖域策略  内点  投影  Hessian方法  非线性约束优化
收稿时间:11 July 2003

Interior point projected reduced Hessian method with trust region strategy for nonlinear constrained optimization
Zhu Detong.Interior point projected reduced Hessian method with trust region strategy for nonlinear constrained optimization[J].Applied Mathematics A Journal of Chinese Universities,2004,19(3):311-326.
Authors:Zhu Detong
Institution:Dept.of Math.,Shanghai Normal Univ.,Shanghai 200234,China
Abstract:A interior point scaling projected reduced Hessian method with combination of nonmonotonic backtracking technique and trust region strategy for nonlinear equality constrained optimization with nonegative constraint on variables is proposed. In order to deal with large problems, a pair of trust region subproblems in horizontal and vertical subspaces is used to replace the general full trust region subproblem. The horizontal trust region subproblem in the algorithm is only a general trust region subproblem while the vertical trust region subproblem is defined by a parameter size of the vertical direction subject only to an ellipsoidal constraint. Both trust region strategy and line search technique at each iteration switch to obtaining a backtracking step generated by the two trust region subproblems. By adopting the l 1 penalty function as the merit function, the global convergence and fast local convergence rate of the proposed algorithm are established under some reasonable conditions. A nonmonotonic criterion and the second order correction step are used to overcome Maratos effect and speed up the convergence progress in some ill-conditioned cases. Supported partially by the National Natural Science Foundation of China (10071050), Science Foundation (02ZA14070) of Shanghai Technical Sciences Committee and Science Foundation (02DK06) of Shanghai Education Committee.
Keywords:90C30  65K05  49M40
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