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Data-Driven Scenario Optimization for Automated Controller Tuning with Probabilistic Performance Guarantees

机译:具有概率性能保证的自动化控制器调整的数据驱动方案优化

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Systematic design and verification of advanced control strategies for complex systems under uncertainty largely remains an open problem. Despite the promise of black-box optimization methods for automated controller tuning, they generally lack formal guarantees on the solution quality, which is especially important in the control of safety-critical systems. This paper focuses on obtaining closed-loop performance guarantees for automated controller tuning, which can be formulated as a black-box optimization problem under uncertainty. We use recent advances in non-convex scenario theory to provide a distribution-free bound on the probability of the closed-loop performance measures. To mitigate the computational complexity of the data-driven scenario optimization method, we restrict ourselves to a discrete set of candidate tuning parameters. We propose to generate these candidates using constrained Bayesian optimization run multiple times from different random seed points. We apply the proposed method for tuning an economic nonlinear model predictive controller for a semibatch reactor modeled by seven highly nonlinear differential equations.
机译:系统的设计和验证在不确定性下复杂系统的先进控制策略仍然是一个公开问题。尽管对自动控制器调整的黑匣子优化方法承诺,但它们通常缺乏对解决方案质量的正式保证,这在控制安全关键系统方面尤为重要。本文侧重于获取自动控制器调整的闭环性能保证,可在不确定度下将其作为黑匣子优化问题制定。我们使用最近的非凸面理论的进展,以提供无闭环性能测量概率的无分配束缚。为了减轻数据驱动场景优化方法的计算复杂性,我们将自己限制为一个离散的候选调整参数集。我们建议使用多次从不同随机种子点运行的受限贝叶斯优化运行这些候选人。我们应用用于调整经济非线性模型预测控制器的提出方法,用于由七个高度非线性微分方程建模的半靶反应器。

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