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A Comparative Study on Improved DPLS Soft Sensor Models Applied to a Crude Distillation Unit

机译:改进的DPLS软传感器模型对粗蒸馏装置的比较研究

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Soft sensors based on dynamic PLS (DPLS) have been widely used in industrial applications for predicting hard-to-measure quality variables. However, DPLS is prone to over-fitting due to an increasing number of model inputs. A plethora of approaches have been proposed to improve DPLS-based soft sensors, among which variable selection has been a prevailing one. Recently, a new method termed as DPLS-TS has been proposed to penalize dynamic parameters in DPLS using a temporal smoothness regularization, which helps reduce model complexity and deliver smooth predictions for quality variables. In this work we present a comparative study of temporal smoothness regularization and variable selection in terms of their improvements in prediction performance when a large number of lagged time series data are involved. Comparisons are performed through a simulated case of crude distillation unit.
机译:基于动态PLS(DPLS)的软传感器已广泛用于工业应用中,以预测难以测量的质量变量。然而,由于越来越多的模型输入,DPLS容易过度拟合。已经提出了一种方法来改善基于DPLS的软传感器,其中变量选择是普遍的一个。最近,已经提出了一种作为DPLS-TS称为DPLS-TS的新方法,以使用时间平滑正则化惩罚DPLS中的动态参数,这有助于降低模型复杂性并提供质量变量的平滑预测。在这项工作中,当涉及大量滞后的时间序列数据时,我们呈现了时间平滑正则化和变量选择的比较研究。通过粗蒸馏单元的模拟情况进行比较。

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