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Line search filter methods for nonlinear programming: Motivation and global convergence

机译:非线性规划的线搜索滤波器方法:动机和全局收敛

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摘要

Line search methods are proposed for nonlinear programming using Fletcher and Leyffer's filter method [ Math. Program., 91 ( 2002), pp. 239 - 269], which replaces the traditional merit function. Their global convergence properties are analyzed. The presented framework is applied to active set sequential quadratic programming (SQP) and barrier interior point algorithms. Under mild assumptions it is shown that every limit point of the sequence of iterates generated by the algorithm is feasible, and that there exists at least one limit point that is a stationary point for the problem under consideration. A new alternative filter approach employing the Lagrangian function instead of the objective function with identical global convergence properties is briefly discussed.
机译:提出了使用Fletcher和Leyffer滤波方法进行非线性规划的线搜索方法。计划,91(2002),第239-269页],它取代了传统的优点功能。分析了它们的全局收敛性。提出的框架适用于活动集顺序二次规划(SQP)和势垒内点算法。在温和的假设下,表明由算法生成的迭代序列的每个极限点都是可行的,并且存在至少一个极限点,该极限点是所考虑问题的固定点。简要讨论了一种新的替代滤波器方法,该方法采用拉格朗日函数代替具有相同全局收敛性的目标函数。

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