A Visual Analytics Approach for the Diagnosis of Heterogeneous and Multidimensional Machine Maintenance Data

Xiaoyu Zhang, Takanori Fujiwara, Senthil K. Chandrasegaran, Michael P. Brundage, Thurston Sexton, A. Dima, K. Ma
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引用次数: 9

Abstract

Analysis of large, high-dimensional, and heterogeneous datasets is challenging as no one technique is suitable for visualizing and clustering such data in order to make sense of the underlying information. For instance, heterogeneous logs detailing machine repair and maintenance in an organization often need to be analyzed to diagnose errors and identify abnormal patterns, formalize root-cause analyses, and plan preventive maintenance. Such real-world datasets are also beset by issues such as inconsistent and/or missing entries. To conduct an effective diagnosis, it is important to extract and understand patterns from the data with support from analytic algorithms (e.g., finding that certain kinds of machine complaints occur more in the summer) while involving the human-in-the-loop. To address these challenges, we adopt existing techniques for dimensionality reduction (DR) and clustering of numerical, categorical, and text data dimensions, and introduce a visual analytics approach that uses multiple coordinated views to connect DR + clustering results across each kind of the data dimension stated. To help analysts label the clusters, each clustering view is supplemented with techniques and visualizations that contrast a cluster of interest with the rest of the dataset. Our approach assists analysts to make sense of machine maintenance logs and their errors. Then the gained insights help them carry out preventive maintenance. We illustrate and evaluate our approach through use cases and expert studies respectively, and discuss generalization of the approach to other heterogeneous data.
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一种异构多维机器维护数据诊断的可视化分析方法
对大型、高维和异构数据集的分析具有挑战性,因为没有一种技术适合对此类数据进行可视化和聚类,以便理解底层信息。例如,经常需要分析组织中详细描述机器维修和维护的异构日志,以诊断错误和识别异常模式,形式化根本原因分析,并计划预防性维护。这些真实世界的数据集也受到不一致和/或缺失条目等问题的困扰。为了进行有效的诊断,重要的是要在分析算法的支持下从数据中提取和理解模式(例如,发现某些类型的机器投诉在夏季发生得更多),同时涉及人在循环中。为了应对这些挑战,我们采用了现有的数字、分类和文本数据维度的降维(DR)和聚类技术,并引入了一种可视化分析方法,该方法使用多个协调视图将每一种数据维度的DR +聚类结果连接起来。为了帮助分析人员标记集群,每个集群视图都补充了技术和可视化,将感兴趣的集群与数据集的其余部分进行对比。我们的方法帮助分析人员理解机器维护日志及其错误。然后,获得的见解可以帮助他们进行预防性维护。我们分别通过用例和专家研究来说明和评估我们的方法,并讨论了该方法在其他异构数据中的推广。
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