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A New Sequential Systems of Linear Equations Algorithm of Feasible Descent for Inequality Constrained Optimization 被引量:4

A New Sequential Systems of Linear Equations Algorithm of Feasible Descent for Inequality Constrained Optimization
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摘要 Based on a new efficient identification technique of active constraints introduced in this paper, a new sequential systems of linear equations (SSLE) algorithm generating feasible iterates is proposed for solving nonlinear optimization problems with inequality constraints. In this paper, we introduce a new technique for constructing the system of linear equations, which recurs to a perturbation for the gradients of the constraint functions. At each iteration of the new algorithm, a feasible descent direction is obtained by solving only one system of linear equations without doing convex combination. To ensure the global convergence and avoid the Maratos effect, the algorithm needs to solve two additional reduced systems of linear equations with the same coefficient matrix after finite iterations. The proposed algorithm is proved to be globally and superlinearly convergent under some mild conditions. What distinguishes this algorithm from the previous feasible SSLE algorithms is that an improving direction is obtained easily and the computation cost of generating a new iterate is reduced. Finally, a preliminary implementation has been tested. Based on a new efficient identification technique of active constraints introduced in this paper, a new sequential systems of linear equations (SSLE) algorithm generating feasible iterates is proposed for solving nonlinear optimization problems with inequality constraints. In this paper, we introduce a new technique for constructing the system of linear equations, which recurs to a perturbation for the gradients of the constraint functions. At each iteration of the new algorithm, a feasible descent direction is obtained by solving only one system of linear equations without doing convex combination. To ensure the global convergence and avoid the Maratos effect, the algorithm needs to solve two additional reduced systems of linear equations with the same coefficient matrix after finite iterations. The proposed algorithm is proved to be globally and superlinearly convergent under some mild conditions. What distinguishes this algorithm from the previous feasible SSLE algorithms is that an improving direction is obtained easily and the computation cost of generating a new iterate is reduced. Finally, a preliminary implementation has been tested.
出处 《Acta Mathematica Sinica,English Series》 SCIE CSCD 2010年第12期2399-2420,共22页 数学学报(英文版)
基金 Supported by National Natural Science Foundation of China (Grant No. 10771040) Guangxi Science Foundation (Grant No. 0832052) Guangxi University for Nationalities Youth Foundation (Grant No. 2007QN24)
关键词 Inequality constraints nonlinear optimization systems of linear equations global conver-gence superlinear convergence Inequality constraints, nonlinear optimization, systems of linear equations, global conver-gence, superlinear convergence
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