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Online model maintenance in real-time optimization methods

机译:实时优化方法的在线模型维护

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摘要

The performance of model-based optimization methods, like Real-time Optimization (RTO), relies on the model accuracy and adequacy. However, features of the process may be unknown and/or the system behavior can drastically change with time (e.g. system degradation). Therefore, even if we have a perfect model in the beginning, we may end up making decisions based on a poor model. This paper proposes a method that adapts the model structure online, based on an available model component set, while simultaneously estimating the model parameters. The problem is presented in a superstructure framework and solved using a mixed-integer nonlinear formulation. Then, the updated model is combined with Output Modifier Adaptation, an RTO variant for economic optimization. Our method is tested in case studies considering a continuous stirred-tank reactor and a gas lifted oil well network. The results show that we can select the correct model structure, update its parameters, and simultaneously converge to the plant optimum.
机译:基于模型的优化方法的性能,如实时优化(RTO),依赖于模型准确性和充分性。然而,该过程的特征可能是未知的,并且/或系统行为可以随着时间的推移而大大变化(例如,系统劣化)。因此,即使我们在一开始就拥有完美的模型,我们也可能最终根据一个糟糕的模型做出决定。本文提出了一种基于可用型号组件集的在线调整模型结构的方法,同时估计模型参数。该问题以超结构框架呈现并使用混合整数非线性配方解决。然后,更新的模型与输出修改器适配相结合,是经济优化的RTO变体。考虑到连续搅拌罐反应器和气体升降油井网络的情况下,测试了我们的方法。结果表明,我们可以选择正确的模型结构,更新其参数,并同时收敛到工厂最佳。

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