On the Uses of Linear-Quadratic Methods in Solving Nonlinear Dynamic Optimization Problems With Direct Transcription

Daniel R. Herber, Athul K. Sundarrajan
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引用次数: 6

Abstract

Solving nonlinear dynamic optimization (NLDO) and optimal control problems can be quite challenging, but the need for effective methods is ever increasing as more engineered systems become more dynamic and integrated. In this article, we will explore the various uses of linear-quadratic dynamic optimization (LQDO) in the direct transcription-based solution strategies for NLDO. Three general LQDO-based strategies are discussed, including direct incorporation, two-level optimization, and quasi-linearization. Connections are made between a variety of existing approaches, including sequential quadratic programming. The case studies are solved with the various methods using a publicly available, MATLAB-based tool. Results indicate that the LQDO-based strategies can improve existing solvers and be effective solution strategies. However, there are robustness issues and problem derivative requirements that must be considered.
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线性二次方法在求解直接转录非线性动态优化问题中的应用
解决非线性动态优化(NLDO)和最优控制问题是相当具有挑战性的,但随着越来越多的工程系统变得更加动态和集成,对有效方法的需求也在不断增加。在本文中,我们将探讨线性二次动态优化(LQDO)在基于直接转录的NLDO解决策略中的各种用途。讨论了三种基于lqdo的策略,包括直接合并、两级优化和准线性化。在各种现有方法之间建立了联系,包括顺序二次规划。案例研究是通过使用一个公开的、基于matlab的工具用各种方法来解决的。结果表明,基于lqdo的策略可以改进现有的求解器,是一种有效的求解策略。但是,必须考虑健壮性问题和问题派生需求。
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