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Data and Process Mining Applications on a Multi-Cell Factory Automation Testbed

机译:多单元工厂自动化测试平台上的数据和过程挖掘应用

摘要

This paper presents applications of both data mining and process mining in a factory automation testbed. It mainly concentrates on the Manufacturing Execution System (MES) level of production hierarchy. Unexpected failures might lead to vast losses on investment or irrecoverable damages. Predictive maintenance techniques, active/passive, have shown high potential of preventing such detriments. Condition monitoring of target pieces of equipment beside defined thresholds forms basis of the prediction. However, monitored parameters must be independent of environment changes, e.g. vibration of transportation equipments such as conveyor systems is variable to workload. This work aims to propose and demonstrate an approach to identify incipient faults of the transportation systems in discrete manufacturing settings. The method correlates energy consumption of the described devices with the workloads. At runtime, machine learning is used to classify the input energy data into two pattern descriptions. Consecutive mismatches between the output of the classifier and the workloads observed in real time indicate possibility of incipient failure at device level. Currently, as a result of high interaction between information systems and operational processes, and due to increase in the number of embedded heterogeneous resources, information systems generate unstructured and massive amount of events. Organizations have shown difficulties to deal with such an unstructured and huge amount of data. Process mining as a new research area has shown strong capabilities to overcome such problems. It applies both process modelling and data mining techniques to extract knowledge from data by discovering models from the event logs. Although process mining is recognised mostly as a business-oriented technique and recognised as a complementary of Business Process Management (BPM) systems, in this paper, capabilities of process mining are exploited on a factory automation testbed. Multiple perspectives of process mining is employed on the event logs produced by deploying Service Oriented Architecture through Web Services in a real multi-robot factory automation industrial testbed, originally used for assembly of mobile phones.
机译:本文介绍了数据挖掘和过程挖掘在工厂自动化测试平台中的应用。它主要集中在生产执行系统的制造执行系统(MES)级别。意外故障可能会导致巨大的投资损失或无法弥补的损失。主动/被动的预测性维护技术已显示出预防此类危害的巨大潜力。除了定义的阈值外,对目标设备的状态监控也构成了预测的基础。但是,受监控的参数必须独立于环境变化,例如运输设备(如输送机系统)的振动会随工作量而变化。这项工作旨在提出并演示一种在离散制造环境中识别运输系统初期故障的方法。该方法将所描述的设备的能量消耗与工作量相关联。在运行时,机器学习用于将输入的能量数据分类为两个模式描述。分类器的输出与实时观察到的工作负载之间连续出现不匹配,表明在设备级别发生初期故障的可能性。当前,由于信息系统和操作过程之间的高度交互作用,并且由于嵌入式异构资源数量的增加,信息系统会生成非结构化的大量事件。组织已经显示出难以处理这样的非结构化和大量数据的困难。过程挖掘作为一个新的研究领域,已经显示出克服此类问题的强大能力。它通过从事件日志中发现模型来应用流程建模和数据挖掘技术从数据中提取知识。尽管流程挖掘主要被认为是一种面向业务的技术,并且被认为是业务流程管理(BPM)系统的补充,但在本文中,流程挖掘的功能是在工厂自动化测试平台上开发的。通过在真实的多机器人工厂自动化工业测试床中通过Web服务部署面向服务的体系结构生成的事件日志中使用了过程挖掘的多种视角,该工厂最初用于移动电话的组装。

著录项

  • 作者

    Khajehzadeh Navid;

  • 作者单位
  • 年度 2012
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
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