约束松弛的逆最优控制

IF 2 Q2 AUTOMATION & CONTROL SYSTEMS
Rahel Rickenbach;Amon Lahr;Melanie N. Zeilinger
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引用次数: 0

摘要

逆最优控制(IOC)是一种很有前途的范例,用于从有能力的演示者那里学习和模仿最优控制策略,或者通过从一个或多个相应的最优控制序列中估计未知的目标函数来更深入地了解他们的意图。当在具有安全保护不等式约束的环境中计算演示估计时,考虑到它们对最终控制策略的强烈影响,在所选择的IOC方法中承认它们的存在是至关重要的。然而,能够考虑不等式约束的解决策略,如逆Karush-Kuhn-Tucker方法,依赖于它们的正确激活和实现;处理吵闹的示威时的限制性假设。为了克服这个问题,我们利用了IOC的精确惩罚函数的概念,并展示了对估计精度的保留。考虑到有噪声的演示,然后我们说明了惩罚函数的使用如何减少未知变量的数量,以及它们的近似值如何增强估计方法在多边形约束环境中解释错误约束激活的能力。在三个系统的仿真中对该方法进行了评估,在噪声演示中优于传统的松弛方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inverse Optimal Control With Constraint Relaxation
Inverse optimal control (IOC) is a promising paradigm for learning and mimicking optimal control strategies from capable demonstrators, or gaining a deeper understanding of their intentions, by estimating an unknown objective function from one or more corresponding optimal control sequences. When computing estimates from demonstrations in environments with safety-preserving inequality constraints, acknowledging their presence in the chosen IOC method is crucial given their strong influence on the final control strategy. However, solution strategies capable of considering inequality constraints, such as the inverse Karush-Kuhn-Tucker approach, rely on their correct activation and fulfillment; a restrictive assumption when dealing with noisy demonstrations. To overcome this problem, we leverage the concept of exact penalty functions for IOC and show preservation of estimation accuracy. Considering noisy demonstrations, we then illustrate how the usage of penalty functions reduces the number of unknown variables and how their approximations enhance the estimation method’s capacity to account for wrong constraint activations within a polytopic-constrained environment. The proposed method is evaluated for three systems in simulation, outperforming traditional relaxation approaches for noisy demonstrations.
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来源期刊
IEEE Control Systems Letters
IEEE Control Systems Letters Mathematics-Control and Optimization
CiteScore
4.40
自引率
13.30%
发文量
471
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