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Soft sensor based on extreme gradient boosting and bidirectional converted gates long short-term memory self-attention network

机译:基于极端梯度升压和双向转换闸门的软传感器长短期内存自我关注网络

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摘要

In this paper, a new soft sensor that combines eXtreme Gradient Boosting (Xgboost) decision trees and a bidirectional, converted gate long short-term memory (BiCG-LSTMs) self-attention (SEA) mechanism network is proposed. Xgboost is first utilized to select relevant input variables according to their importance. It then acts as an encoder to weigh the selected input variables based on their importance scores. The encoded input variables are normalized and then sent to the bidirectional converted gates LSTM (BiCG-LSTMs) to extract dynamic information hidden in the process data. The BiCG-LSTMs is designed to avoid multiple gates function, a characteristic of traditional LSTM units in bidirectional LSTM that consumes additional calculation time. Next, a regularization method by smoothing dynamic features based on self-attention weights is utilized to denoise and alleviate the overfitting of the regression once new features are added. In addition, self-attention takes into account the internal dependence of input variables regardless how far the distance between input variables. Finally, the effectiveness of the proposed Xgboost-BiCG-LSTM-SEA soft sensor framework is demonstrated by an application to the prediction of melt intrinsic viscosity of the polyester polymerization process.(c)& nbsp;2020 Elsevier B.V. All rights reserved.
机译:在本文中,提出了一种结合极端梯度升压(XGBoost)决策树和双向转换栅极长短期存储器(BICG-LSTMS)自我关注(SEA)机制网络的新软传感器。首先利用XGBoost根据它们的重要性选择相关的输入变量。然后,它充当编码器,以基于其重要性分数来称量所选择的输入变量。编码的输入变量归一化,然后发送到双向转换的栅极LSTM(BICG-LSTMS)以提取隐藏在过程数据中的动态信息。 BICG-LSTMS旨在避免多个栅极函数,在双向LSTM中的传统LSTM单元的特征,消耗额外的计算时间。接下来,通过基于自我注意重量平滑动态特征的正则化方法被利用,以便在添加新功能一旦添加了回归的过度拟合。此外,自我注意考虑了输入变量的内部依赖性,无论输入变量之间的距离多远。最后,通过应用于预测聚酯聚合过程的熔体特性粘度的应用来证明所提出的XGBoost-BICG-LSTM-SEA软传感器框架的有效性。(c)  2020 elestvier b.v.保留所有权利。

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