A Class of Globally Convergent Optimization Methods Based on Conservative Convex Separable Approximations 论文
2002SIAM Journal on Optimization引用 1333
Advanced Optimization Algorithms ResearchOptimization and Variational AnalysisTopology Optimization in Engineering
摘要
This paper deals with a certain class of optimization methods, based on conservative convex separable approximations (CCSA), for solving inequality-constrained nonlinear programming problems. Each generated iteration point is a feasible solution with lower objective value than the previous one, and it is proved that the sequence of iteration points converges toward the set of Karush--Kuhn--Tucker points. A major advantage of CCSA methods is that they can be applied to problems with a very large number of variables (say 104--105) even if the Hessian matrices of the objective and constraint functions are dense.