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Sequential quadratic programming methods for parametric nonlinear optimization

机译:参数非线性优化的顺序二次规划方法

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Sequential quadratic programming (SQP)methods are known to be efficient for solving a series of related nonlinear optimization problems because of desirable hot and warm start properties-a solution for one problem is a good estimate of the solution of the next.However, standard SQP solvers contain elements to enforce global convergence that can interfere with the potential to take advantage of these theoretical local properties in full.We present two new predictor-corrector procedures for solving a nonlinear program given a sufficiently accurate estimate of the solution of a similar problem.The procedures attempt to trace a homotopy path between solutions of the two problems, staying within the local domain of convergence for the series of problems generated. We provide theoretical convergence and tracking results, as well as some numerical results demonstrating the robustness and performance of the methods.
机译:顺序二次规划(SQP)方法由于具有理想的热启动和热启动特性,因此对于解决一系列相关的非线性优化问题非常有效-一种解决方案是对下一个解决方案的良好估计。求解器包含强制执行全局收敛的元素,这些元素可能会干扰潜在地充分利用这些理论上的局部特性的能力。我们给出了两种新的预测器-校正器程序,可以在给出对相似问题的解决方案足够准确的估计的情况下求解非线性程序。该过程试图跟踪两个问题的解决方案之间的同态路径,并停留在所生成的一系列问题的收敛本地域内。我们提供了理论上的收敛性和跟踪结果,以及一些数值结果,证明了该方法的鲁棒性和性能。

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