A new superlinearly convergent algorithm of combining QP subproblem with system of linear equations for nonlinear optimization
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摘要
In this paper, a class of optimization problems with nonlinear inequality constraints is discussed. Based on the ideas of sequential quadratic programming algorithm and the method of strongly sub-feasible directions, a new superlinearly convergent algorithm is proposed. The initial iteration point can be chosen arbitrarily for the algorithm. At each iteration, the new algorithm solves one quadratic programming subproblem which is always feasible, and one or two systems of linear equations with a common coefficient matrix. Moreover, the coefficient matrix is uniformly nonsingular. After finite iterations, the iteration points can always enter the feasible set of the problem, and the search direction is obtained by solving one quadratic programming subproblem and only one system of linear equations. The new algorithm possesses global and superlinear convergence under some suitable assumptions without the strict complementarity. Finally, some numerical results are reported to show that the algorithm is promising.
论文关键词:90C30,90C55,49M37,65K10,Nonlinear optimization,Sequential quadratic programming,Method of strongly sub-feasible directions,Global convergence,Superlinear convergence
论文评审过程:Received 28 June 2012, Revised 30 April 2014, Available online 14 June 2014.
论文官网地址:https://doi.org/10.1016/j.cam.2014.06.009