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Multi-block methods in multivariate process contral

机译:多变量过程控制中的多块方法

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摘要

In chemometric studies all predictor variables are usually collected in one data matrix X. This matrix is then analyzed by PLS regression or other methods. When data from several different sub-processes are collected in one matrix, there is a possibility that the effects of some sub-processes may vanish. If there is, for instance, mechanic data from one process and spectral data from another, the influence of the mechanic sub-process may not be detected. An application of multi-block (MB) methods, where the X-data are divided into several data blocks is presented in this study. By using MB methods the effect of a sub-process can be seen and an example with two blocks, near infra-red, NIR, and process data, is shown. The results show improvements in modelling task, when a MB-based approach is used. This way of working with data gives more information on the process than if all data are in one X-matrix. The procedure is demonstrated by an industrial continuous process, where knowledge about the sub-processes is available and X-matrix can be divided into blocks between process variables and NIR spectra.
机译:在化学计量研究中,所有预测变量通常在一个数据矩阵x中收集。然后通过PLS回归或其他方法分析该矩阵。当从一个矩阵中收集来自几个不同子进程的数据时,有可能使某些子过程的效果消失。如果例如,来自来自另一个过程的机械数据和来自另一个过程的光谱数据,则可能无法检测到机械子过程的影响。本研究介绍了多块(MB)方法的应用,其中X-DATA被划分为几个数据块。通过使用MB方法,可以看到子进程的效果,并显示有两个块,靠近红外线,nir和处理数据的示例。当使用基于MB的方法时,结果显示了建模任务的改进。这种使用数据的方式提供了关于该过程的更多信息,而不是如果所有数据都处于一个X矩阵。该过程由工业连续过程证明,其中关于子过程的知识可用,并且X矩阵可以分为过程变量和NIR光谱之间的块。

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