A Visual Analytics Approach for Equipment Condition Monitoring in Smart Factories of Process Industry

Wenchao Wu, Yixian Zheng, Kaiyuan Chen, Xiangyu Wang, Nan Cao
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引用次数: 41

Abstract

Monitoring equipment conditions is of great value in manufacturing, which can not only reduce unplanned downtime by early detecting anomalies of equipment but also avoid unnecessary routine maintenance. With the coming era of Industry 4.0 (or industrial internet), more and more assets and machines in plants are equipped with various sensors and information systems, which brings an unprecedented opportunity to capture large-scale and fine-grained data for effective on-line equipment condition monitoring. However, due to the lack of systematic methods, analysts still find it challenging to carry out efficient analyses and extract valuable information from the mass volume of data collected, especially for process industry (e.g., a petrochemical plant) with complex manufacturing procedures. In this paper, we report the design and implementation of an interactive visual analytics system, which helps managers and operators at manufacturing sites leverage their domain knowledge and apply substantial human judgements to guide the automated analytical approaches, thus generating understandable and trustable results for real-world applications. Our system integrates advanced analytical algorithms (e.g., Gaussian mixture model with a Bayesian framework) and intuitive visualization designs to provide a comprehensive and adaptive semi-supervised solution to equipment condition monitoring. The example use cases based on a real-world manufacturing dataset and interviews with domain experts demonstrate the effectiveness of our system.
过程工业智能工厂设备状态监测的可视化分析方法
监测设备状态在制造中具有重要的价值,不仅可以通过早期发现设备异常来减少计划外停机时间,还可以避免不必要的日常维护。随着工业4.0(或工业互联网)时代的到来,工厂中越来越多的资产和机器配备了各种传感器和信息系统,这为捕获大规模和细粒度数据以进行有效的在线设备状态监测带来了前所未有的机会。然而,由于缺乏系统的方法,分析人员仍然发现从收集的大量数据中进行有效的分析和提取有价值的信息是具有挑战性的,特别是对于具有复杂制造程序的过程工业(例如,石化工厂)。在本文中,我们报告了交互式可视化分析系统的设计和实现,该系统可以帮助制造站点的管理人员和操作员利用他们的领域知识,并应用大量的人工判断来指导自动化分析方法,从而为现实世界的应用生成可理解和可信赖的结果。我们的系统集成了先进的分析算法(如高斯混合模型与贝叶斯框架)和直观的可视化设计,为设备状态监测提供了全面和自适应的半监督解决方案。基于真实世界制造数据集的示例用例和对领域专家的访谈证明了我们系统的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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