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Model Building by Merging Submodels Using PLSR

机译:通过使用PLSR合并子模型建立模型

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References(30) PLSR (partial least squares regression) has become a basic tool for chemometrics, monitoring and modeling of processes, etc. The basic idea of PLSR is to relate two data matrices X and Y into a multivariate linear model, for analysis of the data with noisy and collinear variables. In industrial processes, sub-models of the specific units are built for monitoring and engineering process control. However, we know that these process units are not individually independent. As a result, the full model is usually desirable. In an actual process, there are thousands to ten thousands of variables being measured and conveniently recorded instantaneously. It is not practical to deal with such a large number of variables to construct a full model at time, especially they are collinear and embedded with noise. In this paper, the linear regression model merging procedure is proposed to incorporate PLSR models of subsystems into a full model. By way of this approach, the computation time and memory can thus significantly be reduced. It is quite suitable to merge the process sub-models built from PLSR into the complete one. The method could be extended to dynamic and non-linear modeling easily. Two examples for dynamic modeling and monitoring are presented for illustration. One is the dynamic modeling of a 4 × 4 linear process. Second one is the process monitoring of a double effect evaporator.
机译:参考文献(30)PLSR(偏最小二乘回归)已成为化学计量学,过程监测和建模等的基本工具。PLSR的基本思想是将两个数据矩阵X和Y关联到多元线性模型中,以分析具有嘈杂和共线变量的数据。在工业过程中,将建立特定单元的子模型以进行监视和工程过程控制。但是,我们知道这些处理单元不是个别独立的。结果,通常需要完整的模型。在实际过程中,有数千到上万个变量被即时测量并方便记录。同时处理如此大量的变量以构建完整的模型是不切实际的,尤其是它们是共线的并且嵌入了噪声。在本文中,提出了线性回归模型合并程序,以将子系统的PLSR模型合并到完整模型中。通过这种方法,因此可以显着减少计算时间和内存。将从PLSR构建的过程子模型合并到完整模型中是非常合适的。该方法可以容易地扩展到动态和非线性建模。给出了两个用于动态建模和监视的示例以供说明。一种是4×4线性过程的动态建模。第二个是双效蒸发器的过程监控。

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