An Improved Extreme Learning Machine Based on Auto-Encoder for Production Predictive Modeling of Industrial Processes

Zhiqiang Geng, Qingchao Meng, Yongming Han, Qin Wei, Zhi Ouyang
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引用次数: 2

Abstract

Industrial process data has the characteristics of complexity, variability and noisy, which brings challenges to data-driven production predictive modeling for industrial processes basing on the traditional extreme learning machine (ELM). Therefore, this paper proposes an improved ELM based on auto-encoder (AE) (AE-ELM). The AE can extract the main features with lower-dimension by eliminating the linear correlation among the original complex data. Then, the main features are used as the inputs of the ELM. For the purpose of verifying the effectiveness of the proposed method, the AE-ELM model has been experimented on the production prediction of the pure terephthalic acid (PTA). The experimental results prove that the AE-ELM is less sensitive to the structure of the traditional ELM and principal components extraction based robust ELM (PCE-RELM). Moreover, the modeling accuracy can be improved by 2.4%, which has certain guiding significance for process modeling and production prediction.
基于自编码器的工业过程生产预测建模改进极限学习机
工业过程数据具有复杂性、可变性和噪声等特点,这给基于传统极限学习机(ELM)的工业过程数据驱动生产预测建模带来了挑战。为此,本文提出了一种基于自编码器(AE)的改进ELM (AE-ELM)。声发射通过消除原始复杂数据之间的线性相关性,提取出较低维数的主要特征。然后,将主要特征作为ELM的输入。为了验证所提方法的有效性,对AE-ELM模型进行了纯对苯二甲酸(PTA)生产预测实验。实验结果表明,AE-ELM对传统ELM和基于主成分提取的鲁棒ELM (PCE-RELM)的结构敏感度较低。建模精度可提高2.4%,对工艺建模和生产预测具有一定的指导意义。
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