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首页> 外文期刊>SIAM Journal on Optimization: A Publication of the Society for Industrial and Applied Mathematics >Adjoint-based predictor-corrector sequential convex programming for parametric nonlinear optimization
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Adjoint-based predictor-corrector sequential convex programming for parametric nonlinear optimization

机译:用于参数非线性优化的基于伴随的预测器-校正器顺序凸规划

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摘要

This paper proposes an algorithmic framework for solving parametric optimization problems which we call adjoint-based predictor-corrector sequential convex programming. After presenting the algorithm, we prove a contraction estimate that guarantees the tracking performance of the algorithm. Two variants of this algorithm are investigated. The first can be used to treat online parametric nonlinear programming problems when the exact Jacobian matrix is available, while the second variant is used to solve nonlinear programming problems. The local convergence of these variants is proved. An application to a large-scale benchmark problem that originates from nonlinear model predictive control of a hydro power plant is implemented to examine the performance of the algorithms.
机译:本文提出了一种解决参数优化问题的算法框架,我们称之为基于伴随的预测器-校正器顺序凸规划。提出算法后,我们证明了收缩估计,可以保证算法的跟踪性能。研究了该算法的两个变体。当确切的雅可比矩阵可用时,第一种可用于处理在线参数非线性规划问题,而第二种可用于解决非线性规划问题。这些变体的局部收敛被证明。实现了对大型基准问题的应用,该问题源自水力发电厂的非线性模型预测控制,以检查算法的性能。

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