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Sampling-Interval-Aware LSTM for Industrial Process Soft Sensing of Dynamic Time Sequences With Irregular Sampling Measurements

机译:用于工业过程的采样间隔感知LSTM具有不规则采样测量的动态时间序列的动态时间序列的软感应

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摘要

In modern industrial processes, dynamics and nonlinearities are two main difficulties for soft sensing of key quality variables. Thus, nonlinear dynamic models like long short-term memory (LSTM) network have been applied for data sequence modeling due to its powerful representation ability. Nevertheless, most dynamic methods cannot deal with data series with irregular sampling intervals, which is a common phenomenon in many industrial plants. To handle this problem, a novel sampling-interval-aware LSTM (SIA-LSTM) is proposed in this paper, which takes the sampling intervals between sequential samples into consideration to adjust the influence of the previous sample on the current one. To this end, two non-increasing functions of the sampling interval are designed to weight different sampling intervals in the dynamic data sequence. Then, each sampling-interval weight is multiplied to the corresponding previous hidden state to adjust its impact. Finally, the adjusted hidden state is used as an adaptive input for the three control gates in each LSTM unit to obtain the current hidden state. The proposed SIA-LSTM is applied to an actual hydrocracking process for soft sensor of the C5 content in the light naphtha and the final boiling point of the heavy naphtha.
机译:在现代工业过程中,动力学和非线性是对关键质量变量的软感应的两个主要困难。因此,由于其强大的表示能力,已经应用了像长短短期存储器(LSTM)网络的非线性动态模型。尽管如此,大多数动态方法都无法处理具有不规则采样间隔的数据系列,这是许多工厂中的常见现象。为了处理该问题,本文提出了一种新的采样间隔感知LSTM(SIA-LSTM),这在顺序样本之间考虑了顺序样本之间的采样间隔,以调整先前样本对当前样品的影响。为此,采样间隔的两个非增加功能被设计为在动态数据序列中重量不同的采样间隔。然后,每个采样间隔重量乘以相应的先前隐藏状态以调整其影响。最后,调整后的隐藏状态用作每个LSTM单元中的三个控制栅极的自适应输入,以获得当前隐藏状态。将所提出的SIA-LSTM应用于实际加氢裂化过程,用于轻质石脑油中C5含量的软传感器和重型石脑油的最终沸点。

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