基于DTW-LSTM的不均匀批处理运行轨迹预测

Feifan Shen, Lingjian Ye, Saite Fan, Zhiqiang Ge, Zhihuan Song
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引用次数: 0

摘要

本文研究了具有不均匀批长度的批过程的运行轨迹预测问题。目前大多数数据驱动的工作都集中在批轨迹建模和预测阶段的运行变化上。然而,当批序列中存在渐变变化时,应特别注意批对批的相关性。为了获得更好的非均匀长度批处理轨迹预测性能,本文引入动态时间规整(DTW)和长短期记忆(LSTM)神经网络来提取批间关联。首先,采用递归DTW对不均匀批次样本进行同步。然后,引入LSTM神经网络提取轨迹建模阶段的批关联;最后,根据离线LSTM模型实现在线批量轨迹预测。通过对青霉素分批补料发酵过程的仿真,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Run-to-run Trajectory Prediction of Uneven-length Batch Processes Using DTW-LSTM
This paper handles with the problem of the run-to-run trajectory prediction of batch processes with uneven batch length. Most current data-driven works focus on the run-to-run variations during both batch trajectory modeling and prediction stages. However, batch-to-batch correlations should be drawn extreme attentions to when gradual changes exist in batch sequence. To obtain a better batch trajectory prediction performance of uneven-length batch processes, dynamic time warping (DTW) and long-short term memory (LSTM) neural network are introduced in this work to extract batch-to-batch correlations. Firstly, the recursive DTW is used to synchronize uneven batch samples. Then, the LSTM neural network is introduced to extract the run-to-run batch correlations during the trajectory modeling stage. Finally, online batch trajectory prediction can be implemented according to the offline LSTM model. A simulation based on the fed-batch penicillin fermentation process is provided to testify the effectiveness of the proposed method.
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