使用聚类分析来研究机器过程

E. Sutanto
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引用次数: 1

摘要

使用均值跟踪聚类算法对机器过程的研究提供了有用的结果,并对过程有了更好的理解。从Sutanto和Warwick(1995)的分析中得出的表示故障和无故障机器行为的集群为在哪些区域运行和避免哪些区域提供了指导。然而,有些集群不能如此容易地定义,因为它们包含有故障和无故障机器行为的重叠区域。过程轨迹上的聚类在一定程度上分离了这些区域,从而可以更好地定义它们。这样,错误之间的相关性就更加明显了。然后,通过对启动数据进行聚类,进一步进行聚类练习,以确定成功和麻烦的启动区域。结果不仅成功地定义了这些区域,而且揭示了每一次启动都有一定的成功概率,并且从来没有失败的启动。(5页)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of cluster analysis for the study of machine processes
The study of machine processes using the mean-tracking cluster algorithm has provided useful results and a greater understanding of the processes. Clusters denoting faulty and fault-free machine behaviour derived from analyses in Sutanto and Warwick (1995) have provided guidance as to which regions to operate in and which to avoid. However, some clusters could not be so easily defined since they contained overlapping regions of faulty and fault-free machine behaviour. Clustering on process trajectories has separated these regions to a degree that they could be better defined. In doing so, correlations between errors were made more visible. The clustering exercise was then taken further to identify regions of successful and troublesome start-ups by clustering on start-up data. The results did not only define these regions successfully, but revealed that each start-up that was carried out had some probability of success and was never a non-starter start-up. (5 pages)
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