Steady-state models which have been learned from historical operational data may be unfit for model-based optimization unless correlations in the training data which are introduced by control are accounted for. Using recent results from work on structural dynamical causal models, we derive a formula for adjusting for this control confounding, enabling the estimation of a causal steady-state model from closed-loop steady-state data. The formula assumes that the available data have been gathered under some fixed control law. It works by estimating and taking into account the disturbance which the controller is trying to counteract, and enables learning from data gathered under both feedforward and feedback control.
翻译:从历史业务数据中吸取的稳态模型可能不适合模型优化,除非考虑到控制所引入的培训数据的相关性。我们利用结构动态因果模型工作的最新结果,为这种控制得出一个调整公式,以便从封闭环稳定状态数据中估算因果稳定状态模型。该公式假定,现有数据是根据某种固定控制法收集的。它通过估计和考虑到控制员试图抵消的干扰,并能够从进料和反馈控制下收集的数据中学习。