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A batch-to-batch iterative optimal control strategy based on recurrent neural network models

机译:基于递归神经网络模型的逐批迭代最优控制策略

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摘要

A batch-to-batch model-based iterative optimal control strategy for batch processes is proposed. To address the difficulties in developing detailed mechanistic models, recurrent neural networks are used to model batch processes from process operational data. Due to model-plant mismatches and unmeasured disturbances, the calculated optimal control profile may not be optimal when applied to the actual process. To address this issue, model prediction errors from previous batch runs are used to improve neural network model predictions for the current batch. Since the main interest in batch process operation is on the end of batch product quality, a quadratic objective function is introduced to track the desired qualities at the end-point of a batch. Because model errors are gradually reduced from batch-to-batch, the control trajectory gradually approaches the optimal control policy. The proposed scheme is illustrated on a simulated methyl methacrylate polymerisation reactor. (C) 2004 Elsevier Ltd. All rights reserved.
机译:提出了一种基于批间模型的批处理迭代最优控制策略。为了解决在开发详细的机械模型时遇到的困难,使用循环神经网络从流程操作数据为批处理流程建模。由于模型工厂的不匹配和无法测量的干扰,当应用于实际过程时,计算出的最佳控制曲线可能不是最佳的。为了解决此问题,以前批次运行的模型预测错误用于改进当前批次的神经网络模型预测。由于批处理过程操作的主要关注点是批产品的质量,因此引入了二次目标函数来跟踪批处理终点的所需质量。由于模型误差逐批减少,因此控制轨迹逐渐接近最佳控制策略。在模拟的甲基丙烯酸甲酯聚合反应器上说明了所提出的方案。 (C)2004 Elsevier Ltd.保留所有权利。

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