Nonlinear latent variable regression

Muddu Madakyaru, M. Nounou, H. Nounou
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引用次数: 3

Abstract

Many operations, such as monitoring and control, require the availability of some key process variables. When these variables are difficult to measure, it is usually relied on inferential models that can be used to estimate these variables from other easier-to-measure variables. Latent variable regression (LVR) techniques, such as principal component regression (PCR), partial least square (PLS), and regularized canonical correlation analysis (RCCA), are commonly used as inferential models. In this paper, these linear LVR modeling techniques are first reviewed, and then a new algorithm that extends these LVR modeling techniques to nonlinear processes is presented. The developed nonlinear LVR (NLLVR) modeling algorithm utilizes nonlinear functions in the form of polynomials to capture the nonlinear relationships between the latent variables are the model output. The structures of these polynomials as well as the number of latent variables used are optimized using cross validation. The performances of the developed NLLVR modeling techniques are illustrated and compared with those the conventional linear LVR techniques (PCR, PLS, and RCCA). This comparison is performed using two examples, one using synthetic data and the other using simulated distillation column data. The results of both examples show that a significant improvement in model predictions can be achieved using the NLLVR modeling methods.
非线性潜变量回归
许多操作,如监视和控制,需要一些关键过程变量的可用性。当这些变量难以测量时,通常依赖于可用于从其他更容易测量的变量中估计这些变量的推断模型。潜变量回归(LVR)技术,如主成分回归(PCR)、偏最小二乘(PLS)和正则化典型相关分析(RCCA),通常被用作推理模型。本文首先对线性LVR建模技术进行了综述,然后提出了一种将线性LVR建模技术扩展到非线性过程的新算法。所开发的非线性LVR (NLLVR)建模算法利用多项式形式的非线性函数来捕捉潜在变量之间的非线性关系作为模型输出。这些多项式的结构以及使用的潜在变量的数量使用交叉验证进行优化。并与传统的线性LVR技术(PCR、PLS和RCCA)进行了比较。通过两个实例进行了比较,一个使用合成数据,另一个使用模拟精馏塔数据。两个实例的结果表明,使用NLLVR建模方法可以显著提高模型的预测精度。
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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