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A Global Manufacturing Big Data Ecosystem for Fault Detection in Predictive Maintenance

机译:预测维护中的故障检测全球制造大数据生态系统

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Artificial intelligence, big data, machine learning, cloud computing, and Internet of Things (IoT) are terms which have driven the fourth industrial revolution. The digital revolution has transformed the manufacturing industry into smart manufacturing through the development of intelligent systems. In this paper, a big data ecosystem is presented for the implementation of fault detection and diagnosis in predictive maintenance with real industrial big data gathered directly from large-scale global manufacturing plants, aiming to provide a complete architecture which could be used in industrial IoT-based smart manufacturing in an industrial 4.0 system. The proposed architecture overcomes multiple challenges including big data ingestion, integration, transformation, storage, analytics, and visualization in a real-time environment using various technologies such as the data lake, NoSQL database, Apache Spark, Apache Drill, Apache Hive, OPC Collector, and other techniques. Transformation protocols, authentication, and data encryption methods are also utilized to address data and network security issues. A MapReduce-based distributed PCA model is designed for fault detection and diagnosis. In a large-scale manufacturing system, not all kinds of failure data are accessible, and the absence of labels precludes all the supervised methods in the predictive phase. Furthermore, the proposed framework takes advantage of some of the characteristics of PCA such as its ease of implementation on Spark, its simple algorithmic structure, and its real-time processing ability. All these elements are essential for smart manufacturing in the evolution to Industry 4.0. The proposed detection system has been implemented into the real-time industrial production system in a cooperated company, running for several years, and the results successfully provide an alarm warning several days before the fault happens. A test case involving several outages in 2014 is reported and analyzed in detail during the experiment section.
机译:人工智能,大数据,机器学习,云计算和事物互联网(IOT)是推动了第四次工业革命的条款。数字革命通过开发智能系统,将制造业转化为智能制造。在本文中,提出了一个大数据生态系统,用于实现预测性维护的故障检测和诊断,实际工业大数据直接从大型全球制造工厂收集,旨在提供可以在工业IOT中使用的完整架构 - 基于工业4.0系统的智能制造。拟议的架构克服了多种挑战,包括使用数据湖,NoSQL数据库,Apache Spark,Apache钻头,Apache Hive,OPC收集器等各种技术在实时环境中的大数据摄取,集成,转换,存储,分析和可视化,以及可视化和其他技术。转换协议,身份验证和数据加密方法也用于解决数据和网络安全问题。基于MapReduce的分布式PCA模型设计用于故障检测和诊断。在大规模的制造系统中,并非所有类型的故障数据都可以访问,并且没有标签妨碍了预测阶段中的所有监督方法。此外,所提出的框架利用了PCA的一些特性,例如火花的易于实现,其简单的算法结构及其实时处理能力。所有这些元素对于演变到工业4.0的智能制造至关重要。建议的检测系统已在合作公司中实施到实时工业生产系统,运行几年,结果成功在故障发生前几天成功提供了警报警告。在实验部门详细介绍和分析了2014年涉及几次中断的测试案例。

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