Enhanced modeling of distillation columns using integrated multiscale latent variable regression

Muddu Madakyaru, M. Nounou, H. Nounou
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引用次数: 4

Abstract

Operating distillation columns under control requires inferring the compositions of the distillate and bottom streams (which are challenging to measure) from other more easily measured variables, such as temperatures at different trays of the column. Models that can be used in this regard are called inferential models. Commonly used inferential models include latent variable regression (LVR) techniques, such as principal component regression (PCR), partial least square (PLS), and regularized canonical correlation analysis (RCCA). Unfortunately, measured practical data are usually contaminated with errors, which degrade the prediction accuracy of inferential models. Therefore, noisy measurements need to be filtered to enhance the prediction ability of these models. Wavelet-based multiscale filtering has been shown to be a powerful denoising tool. In this work, the advantages of multiscale filtering are utilized to enhance the prediction accuracy of LVR models by developing an integrated multiscale LVR (IMSLVR) modeling algorithm that integrates modeling and filtering. The idea behind the IMSLVR modeling algorithm is to filter the process data at different decomposition levels, model the filtered data from each level, and then select the LVR model that optimizes a model selection criterion. The performance of the developed IMSLVR algorithm is illustrated using two examples, one using synthetic data and the other using simulated distillation column data. Both examples clearly demonstrate the effectiveness of the IMSLVR algorithm.
利用集成多尺度潜变量回归增强精馏塔建模
在控制下操作蒸馏塔需要从其他更容易测量的变量(如塔内不同托盘的温度)推断馏分和底流的组成(这是具有挑战性的测量)。在这方面可以使用的模型称为推理模型。常用的推理模型包括潜变量回归(LVR)技术,如主成分回归(PCR)、偏最小二乘法(PLS)和正则化典型相关分析(RCCA)。然而,实际测量数据往往存在误差,从而降低了推理模型的预测精度。因此,需要对噪声测量进行滤波,以增强这些模型的预测能力。基于小波的多尺度滤波已被证明是一种强大的去噪工具。本文利用多尺度滤波的优势,开发了一种集建模和滤波于一体的集成多尺度LVR (IMSLVR)建模算法,提高了LVR模型的预测精度。IMSLVR建模算法背后的思想是过滤不同分解级别的过程数据,对来自每个级别的过滤数据建模,然后选择优化模型选择标准的LVR模型。通过两个实例说明了所开发的IMSLVR算法的性能,一个是使用合成数据,另一个是使用模拟精馏塔数据。这两个例子清楚地证明了IMSLVR算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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