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A SUPERLINEARLY CONVERGENT HYBRID ALGORITHM FOR SOLVING NONLINEAR PROGRAMMING

机译:求解非线性规划的超线性收敛混合算法

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摘要

In this paper, a superlinearly convergent hybrid algorithm is proposed for solving nonlinear programming. First of all, an improved direction is obtained by a convex combination of the solution of an always feasible quadratic programming (QP) subproblem and a mere feasible direction, which is generated by a reduced system of linear equations (SLE). The coefficient matrix of SLE only consists of the constraints and their gradients corresponding to the working set. Then, the second-order correction direction is obtained by solving another reduced SLE to overcome the Maratos effect and obtain the superlinear convergence. In particular, the convergence rate is proved to be locally one-step superlinear under a condition weaker than the strong second-order sufficient condition and without the strict complementarity. Moreover, the line search in our algorithm can effectively combine the initialization processes with the optimization processes, and the line search conditions are weaker than the previous work. Finally, some numerical results are reported.
机译:提出了一种求解非线性规划的超线性收敛混合算法。首先,通过始终可行的二次规划(QP)子问题的解决方案与单纯可行的方向的凸组合来获得改进的方向,这是由线性方程组(SLE)的简化系统生成的。 SLE的系数矩阵仅由约束及其对应于工作集的梯度组成。然后,通过求解另一个减小的SLE来克服Maratos效应并获得超线性收敛,从而获得二阶校正方向。特别地,在弱于强二阶充分条件且没有严格互补性的条件下,证明收敛速度局部为一阶超线性。此外,我们算法中的线搜索可以有效地将初始化过程与优化过程结合起来,并且线搜索条件比以前的工作要弱。最后,报告了一些数值结果。

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