大规模控制问题的状态伴随模型约简

Y. Bang, H. Abdel-Khalik
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引用次数: 1

摘要

鲁棒控制系统的设计需要有效的方法来计算相对于大量初始条件的大范围变化的感兴趣响应的变化。这是必要的,以便执行面向工程的应用,如设计优化,逆向研究和灵敏度分析。基于伴随方法的降阶模型利用状态的收缩而不是响应相空间来计算感兴趣的响应相对于输入参数的变化。该方法旨在解决常限制降阶模型设计的状态相空间爆炸问题。我们证明了所开发的伴随方法与给定的响应无关,并且仅依赖于将初始条件与状态变量相关的约束方程。该数学框架将采样技术与伴随方法相结合,找到了降阶模型。它的构造对具有一般初始条件变化的线性和非线性动力系统具有普遍的适用性。摘要给出了线性问题的一个原理证明。关于它在非线性模型中的普遍适用性的细节将留给一篇完整的期刊文章。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
State-based adjoint model reduction for large scale control problems
Design of robust control systems requires efficient ways to compute variations of responses of interest with respect to a wide range of variations for a large number of initial conditions. This is necessary in order to perform engineering oriented applications such as design optimization, inverse studies, and sensitivity analysis. A reduced order model based on an adjoint approach that takes advantage of the contraction in the state rather than the response phase space is developed to calculate the variations in responses of interest with respect to input parameters. The approach is designed to combat the explosion in the state phase space often limiting the design of reduced order models. We show that the developed adjoint approach is independent of the given response, and is only dependent on the constraint equations relating initial conditions to the state variables. The mathematical framework hybridizes sampling techniques with adjoint methods to find the reduced order model. Its construction permits a general applicability to linear and nonlinear dynamical systems with general initial conditions variations. A proof of principle linear problem is demonstrated in this summary. The details of its general applicability to nonlinear models are left to a full journal article.
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