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首页> 外文期刊>Chemometrics and Intelligent Laboratory Systems >Novel soft sensor development using echo state network integrated with singular value decomposition: Application to complex chemical processes
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Novel soft sensor development using echo state network integrated with singular value decomposition: Application to complex chemical processes

机译:新型软传感器开发,采用回声状态网络与奇异值分解集成:复杂化学过程的应用

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摘要

It is of great importance to develop advanced soft sensors for ensuring the safety and stability of complex industrial processes. Unluckily, with the increasing scale of chemical processes, it becomes more and more demanding to develop soft sensor with high accuracy. In addition, most of industrial processes are dynamic. As a result, the soft sensors developed using static models cannot achieve acceptable performance. In order to handle this problem, the Echo state network (ESN) as a kind of recurrent neural network is selected. However, the output weights of ESN are calculated linearly. On one hand, the collinear in the reserve layer outputs may decrease the performance; on the other hand, the over-fining problem may occur. To enhance and improve the ESN performance, singular value decomposition based ESN (SVD-ESN) is presented. In the SVD-ESN method, the singular value decomposition instead of the traditional least square is adopted to calculate the weights between the output layer and the reserve layer. Through singular value analysis in the outputs of the reserve layer, appropriate defining parameters are selected to enhance the accuracy and ensure the computing speed. As a result, the collinearity and over-fining problem is solved; then the performance of ESN is enhanced. To test and validate the performance of SVD-ESN, the proposed SVD-ESN is developed as soft sensor for the High Density Polyethylene (HDPE) production process and Purified Terephthalic Acid (PTA) production process. Compared with the conventional ESN, Extreme Learning Machine (ELM), Dynamic Window based ELM (DW-ELM) and Long Short-Term Memory (LSTM), the simulation results show that the proposed SVD-ESN model obtains better performance in terms of prediction accuracy, which conforms that the proposed SVD-ESN can be used as an effective dynamic model for developing accurate soft sensors.
机译:开发先进的软传感器是非常重视,以确保复杂工业过程的安全性和稳定性。利用化学过程的规模越来越雄厚,开发高精度的软传感器越来越苛刻。此外,大多数工业过程都是动态的。结果,使用静态模型开发的软传感器无法实现可接受的性能。为了处理这个问题,选择回声状态网络(ESN)作为一种复发性神经网络。然而,ESN的输出权重线性地计算。一方面,储备层输出中的共线可能会降低性能;另一方面,可能发生过度罚款问题。为了增强和改进ESN性能,提出了基于ESN的ESN(SVD-ESN)的奇异值分解。在SVD-ESN方法中,采用奇异值分解而不是传统的最小正方形来计算输出层和储备层之间的权重。通过储备层的输出中的奇异值分析,选择适当的定义参数以增强精度并确保计算速度。结果,解决了共同性和过度罚款问题;然后增强了ESN的性能。为了测试和验证SVD-ESN的性能,所提出的SVD-ESN被开发为高密度聚乙烯(HDPE)制备方法和纯化对苯二甲酸(PTA)生产过程的软传感器。与传统的ESN,极端学习机(ELM),基于动态窗口的ELM(DW-ELM)和长短期存储器(LSTM)相比,仿真结果表明,所提出的SVD-ESN模型在预测方面获得了更好的性能精度,符合所提出的SVD-ESN可用作显影精确的软传感器的有效动态模型。

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