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Integrating dynamic neural network models with principal component analysis for adaptive model predictive control

机译:具有适应性模型预测控制的主成分分析的集成动态神经网络模型

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This work addresses one aspect of the overparameterization problem in using artificial/recurrent neural networks (ANN/RNN) based dynamic models for model predictive control (MPC) implementations. The manuscript presents an approach to handle situations where the training data may not be sufficiently rich, and in particular, for handling historical data with correlated inputs. Two approaches are proposed. The key idea in the first method is to perform principal component analysis (PCA) on input space and then utilize the scores to build a PCA-RNN model. Next, a PCA-RNN-based MPC is designed to compute the optimal values of scores and subsequently determined the manipulated inputs. An alternative solution is proposed in the second approach by proposing a new constraint on squared prediction error (SPE) statistic in the RNN-based MPC to make prescribed inputs follow the PCA model constructed for training input data. Finally, an approach is presented that allows to break the correlation in the MPC implementation while maintaining model validity. This is done by first generating richer closed-loop data by implementing the SPE based MPC with slightly relaxed constraints (thus compromising only slightly on the closed loop performance). Then the new data is utilized to re-identify the model, and for use in the MPC. The efficacy of the proposed approaches to handle the problem of set-point tracking is evaluated using a chemical reactor example. The results are compared with a nominal MPC design, and the superior performance under the proposed formulations demonstrated. (C) 2020 Institution of Chemical Engineers. Published by Elsevier B.V. All rights reserved.
机译:这项工作地解决了使用基于人工/复发性神经网络(ANN / RNN)的模型预测控制(MPC)实现的动态模型的一个方面。稿件介绍了一种处理训练数据可能不充分丰富的情况的方法,尤其是处理具有相关输入的历史数据。提出了两种方法。第一种方法中的关键思路是在输入空间上执行主成分分析(PCA),然后利用分数来构建PCA-RNN模型。接下来,设计基于PCA-RNN的MPC以计算分数的最佳值,并随后确定被操纵的输入。通过在基于RNN的MPC中提出基于RNN的MPC中的平方预测误差(SPE)统计的新约束来提出一种替代解决方案,以使规定输入遵循构造用于训练输入数据的PCA模型。最后,提出了一种方法,其允许在保持模型有效性的同时破坏MPC实现中的相关性。这是通过首先通过略微松弛约束实现基于SPE的MPC来完成更丰富的闭环数据来完成的(从而仅略微损害闭环性能)。然后,新数据用于重新识别模型,并用于MPC。使用化学反应器实施例评估所提出的方法来处理设定点跟踪问题的功效。将结果与标称MPC设计进行比较,并且在所提出的制剂下的优越性表现。 (c)2020化学工程师机构。 elsevier b.v出版。保留所有权利。

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