Production prediction modeling of industrial processes based on Bi-LSTM

Yongming Han, Rundong Zhou, Zhiqiang Geng, Kai Chen, Yajie Wang, Qin Wei
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引用次数: 4

Abstract

The analysis and prediction of industrial production plants are of great significance for reducing energy consumption, improving economic efficiency. Therefore, a production prediction method based on bidirectional long short-term memory (Bi-LSTM) is proposed to accurately analyze and evaluate the energy efficiency status of ethylene production plants in industrial processes. Bi-LSTM is a Indirection ally connected network with two layers of long short-term memory (LSTM), it gives full consideration to the relationship between the current data and the data before and after it. Bi-LSTM solves the gradient disappearance or gradient explosion problem in recurrent neural network (RNN), and overcomes the drawback that LSTM only consider the relationship between the current data and its previous data. The comparison results show that the prediction effect of the Bi-LSTM model is superior to that of the back propagation (BP) neural network model, and the average relative error is reduced by 70%, which proves that the Bi-LSTM can effectively raise the accuracy and stability of the ethylene production prediction.
基于Bi-LSTM的工业过程生产预测建模
对工业生产装置进行分析和预测,对于降低能耗、提高经济效益具有重要意义。为此,提出了一种基于双向长短期记忆(Bi-LSTM)的产量预测方法,以准确分析和评价工业过程中乙烯生产装置的能效状况。Bi-LSTM是一种具有两层长短期记忆(LSTM)的间接连接网络,它充分考虑了当前数据与前后数据之间的关系。Bi-LSTM解决了递归神经网络(RNN)中的梯度消失或梯度爆炸问题,克服了LSTM只考虑当前数据与之前数据之间的关系的缺点。对比结果表明,Bi-LSTM模型的预测效果优于BP神经网络模型,平均相对误差减小70%,证明Bi-LSTM能有效提高乙烯产量预测的准确性和稳定性。
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