基于集成学习的安全关键工业系统自适应实时探索与优化

Buse Sibel Korkmaz, Tong Liu, Mehmet Mercangöz
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引用次数: 0

摘要

实时优化在提高工业系统的能源效率和运行效率方面起着关键作用。为了处理未知过程特性和安全约束,最近提出了一种新的安全自适应实时探索与优化(ARTEO)算法。ARTEO利用高斯过程(GP)回归来模拟未知的植物特性,并使用GP模型提供的置信区间来强制执行安全约束。由于过程特征的变化,GP模型需要通过纳入新的观测值来在线更新,并且模型自适应的计算复杂度随着数据集的增加而增加。这项工作提出了一种通过集成学习的替代ARTEO实现,即ensemble -ARTEO。ensemble - arteo通过参数回归模型的集合来学习未知的植物特性,并通过集合预测的方差来计算不确定性。将预测不确定性纳入优化目标,进一步推动勘探。集成成员在线有效更新,以捕获不断变化的过程特征。我们在工业制冷过程中演示了我们提出的Ensemble-ARTEO方法的有效性。实验结果表明,该方法能够在满足安全约束的前提下跟踪所需的冷却需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Real-Time Exploration and Optimization of Safety-Critical Industrial Systems with Ensemble Learning
Real-time optimization plays a key role in improving energy efficiency and the operational effectiveness of industrial systems. To deal with unknown process characteristics and safety constraints, a novel safe adaptive real-time exploration and optimization (ARTEO) algorithm is proposed recently for safety-critical industrial systems. ARTEO utilizes the Gaussian process (GP) regression to model unknown plant characteristics and enforces safety constraints using confidence intervals provided by the GP models. Due to changing process characteristics, the GP models need to be updated online by incorporating new observations and the computational complexity of model adaptation increases with a growing dataset. This work proposes an alternative ARTEO implementation by using ensemble learning, namely Ensemble-ARTEO. The Ensemble-ARTEO learns unknown plant characteristics through an ensemble of parametric regression models and calculates uncertainty by the variance of ensemble predictions. The predictive uncertainty is integrated into the optimization objective to further drive exploration. The ensemble members are updated efficiently online to capture the changing process characteristics. We demonstrate the effectiveness of our proposed Ensemble-ARTEO approach in an industrial refrigeration process. Experimental results show that our method enables tracking the desired cooling demand while satisfying the safety constraints.
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