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A review of machine learning kernel methods in statistical process monitoring

机译:统计过程监控中的机器学习内核方法综述

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摘要

The complexity of modern problems turns increasingly larger in industrial environments, so the classical process monitoring techniques have to adapt to deal with those problems. This is one of the reasons why new Machine and Statistical Learning methodologies have become very popular in the statistical community. Specifically, this article is focused on machine learning kernel methods techniques in the process monitoring field. After explaining the idea of kernel methods we thoroughly examine the process monitoring articles that make use of kernel models and the way in which these models are combined with other Machine Learning approaches. Finally, we summarize the whole picture of the literature and mention some remarkable points.
机译:在工业环境中,现代问题的复杂性变得越来越大,因此经典的过程监视技术必须适应这些问题。这是新的机器和统计学习方法在统计界变得非常流行的原因之一。具体来说,本文重点关注流程监视领域中的机器学习内核方法技术。在解释了内核方法​​的思想之后,我们彻底检查了使用内核模型的过程监控文章,以及将这些模型与其他机器学习方法结合的方式。最后,我们总结了整个文献,并提到了一些值得注意的观点。

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