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首页> 外文期刊>Chemical Engineering Research & Design: Transactions of the Institution of Chemical Engineers >Weighted similarity based just-in-time model predictive control for batch trajectory tracking
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Weighted similarity based just-in-time model predictive control for batch trajectory tracking

机译:基于加权相似性的批量轨迹跟踪的立即模型预测控制

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Being different from the continuous process, batch processes in the practical industry have several distinct characteristics, such as the unsteady state, severe nonlinearity, and iterative operation. For tracking a reference trajectory of a batch process, data-driven model predictive controllers have been proposed with the progress of sensors and machine learning. Among them, the latent variable space model-based controllers (LV-MPC) have been applied to the batch processes for decades. When there exist time- and batch-varying trajectory and disturbance, however, utilization of a single model using the aggregate historical dataset may reduce the capability of the predictive model and the control performance. It is because maintaining a single global model can miss the details of process dynamics at the current state. To solve this problem, we propose to update the local model in the manner of just-in-time learning (JITL) and to use them to the predictive controller design at first. Then, two different weighted similarity methods based on principal component analysis (PCA) and partial least squares (PLS) are proposed to enhance the performance of sorting out the most relevant dataset able to explain the current state. A fed-batch bioreactor system, which has time- and batch-varying reference trajectory and disturbance, is simulated to verify the efficiency of the proposed methods. Simulation results show that weighted similarity based on PLS and its application to JITL latent variable space model predictive controller (LV-MPC) has an improved control performance as it sorts out the data with the useful information about the current dynamics. (C) 2020 Institution of Chemical Engineers. Published by Elsevier B.V. All rights reserved.
机译:与连续过程不同,实际行业中的批处理具有几个不同的特性,如不稳定的状态,严重的非线性和迭代操作。为了跟踪批处理的参考轨迹,已经提出了通过传感器和机器学习的进度提出了数据驱动的模型预测控制器。其中,基于潜在的变量空间模型的控制器(LV-MPC)已经应用于数十年的批处理。然而,当存在时 - 和批量变化的轨迹和干扰时,使用聚合历史数据集利用单个模型可以降低预测模型和控制性能的能力。这是因为维护单个全局模型可以错过当前状态的过程动态的细节。为了解决这个问题,我们建议以仲计学学习(JITL)的方式更新本地模型,并首先将它们用于预测控制器设计。然后,提出了两种基于主成分分析(PCA)和部分最小二乘(PLS)的不同加权相似性方法,以增强排序能够解释当前状态的最相关的数据集的性能。模拟了一种具有时间和批量改变参考轨迹和干扰的联邦批量生物反应器系统以验证所提出的方法的效率。仿真结果表明,基于PLS的加权相似性及其在JITL潜在可变空间模型预测控制器(LV-MPC)的应用具有改进的控制性能,因为它将数据与当前动态的有用信息进行分类。 (c)2020化学工程师机构。 elsevier b.v出版。保留所有权利。

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