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Neural network model based batch-to-batch optimal control

机译:基于神经网络模型的批次间最优控制

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A neural network based batch to batch optimal control strategy is proposed in this paper. To overcome the difficulty in developing mechanistic models for batch processes, neural network models are developed from process operational data. The developed neural network model can only approximate the batch process and model plant mismatches usually exist. Thus the optimal control policy calculated based on a neural network model may not be optimal when applied to the true process. Due to the repetitive nature of batch processes, it is possible to improve the operation of the next batch using the information of the current and previous batch runs. A batch to batch optimal control strategy based on the linearization of the neural network model is proposed in this paper. Applications to a simulated batch polymerisation reactor demonstrate that the proposed method can improve process performance from batch to batch in the presence of model plant mismatches and unknown disturbances.
机译:本文提出了一种基于神经网络的批量批量最佳控制策略。为了克服开发批处理机械模型的困难,从过程操作数据开发神经网络模型。开发的神经网络模型只能近似批处理和模型工厂不匹配通常存在。因此,当应用于真实过程时,基于神经网络模型计算的最佳控制策略可能不是最佳的。由于批处理过程的重复性,可以使用当前的信息和先前批量运行来改善下一个批处理的操作。本文提出了一种基于神经网络模型线性化的批量最佳控制策略。应用于模拟分批聚合反应器的应用表明,该方法可以在模型植物不匹配和未知干扰的存在下从批次到批次来改善过程性能。

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