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Research on the Soft-sensing Modeling Method for the Naphtha Dry Point of an Atmospheric Tower

机译:大气塔石脑油干点软测量建模方法研究

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摘要

Atmospheric tower process data from an atmospheric-vacuum distillation unit present a number of uncertainties. Therefore, the soft-sensing modeling approach is affected by many factors and the universality is poor. In this paper, a soft-sensing modeling process for the dry point of an atmospheric tower overhead naphtha is proposed, and it considers various stages of soft sensing and integrates a variety of algorithms. To realize data pretreatment, wavelet and boxplot combination algorithms were used to identify anomalies based on certain variables and the Robust Partial Least Squares (RPLS) method was used to recognize multivariate anomalies. Then, the influence of the maximum delay time and the effect of the sampling interval on the model performance were investigated using the grid search algorithm. After selecting the optimal dynamic input variables, we compared the effect of the soft-sensing models using many methods and found that the Dynamic Partial Least Squares (DPLS) approach was the best modeling method. Finally, according to the characteristics of the data of the atmospheric decompression process, the use of a moving window to update the model online was proposed. The test results showed that the method had good accuracy and universality.
机译:来自大气压-真空蒸馏装置的大气压塔工艺数据存在许多不确定性。因此,软传感建模方法受很多因素影响,通用性差。本文提出了一种用于大气塔架塔顶石脑油干点的软传感建模方法,该方法考虑了软传感的各个阶段并集成了多种算法。为了实现数据预处理,小波和箱线图组合算法用于基于某些变量来识别异常,而鲁棒偏最小二乘(RPLS)方法用于识别多元异常。然后,使用网格搜索算法研究了最大延迟时间和采样间隔对模型性能的影响。选择最佳动态输入变量后,我们使用多种方法比较了软感模型的效果,发现动态最小二乘(DPLS)方法是最佳建模方法。最后,根据大气减压过程数据的特点,提出了利用移动窗口在线更新模型的方法。测试结果表明,该方法具有良好的准确性和通用性。

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