Integrated Analytics for IIoT Predictive Maintenance Using IoT Big Data Cloud Systems

Hong Linh Truong
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引用次数: 14

Abstract

For predictive maintenance of equipment with Industrial Internet of Things (IIoT) technologies, existing IoT Cloud systems provide strong monitoring and data analysis capabilities for detecting and predicting status of equipment. However, we need to support complex interactions among different software components and human activities to provide an integrated analytics, as software algorithms alone cannot deal with the complexity and scale of data collection and analysis and the diversity of equipment, due to the difficulties of capturing and modeling uncertainties and domain knowledge in predictive maintenance. In this paper, we describe how we design and augment complex IoT big data cloud systems for integrated analytics of IIoT predictive maintenance. Our approach is to identify various complex interactions for solving system incidents together with relevant critical analytics results about equipment. We incorporate humans into various parts of complex IoT Cloud systems to enable situational data collection, services management, and data analytics. We leverage serverless functions, cloud services, and domain knowledge to support dynamic interactions between human and software for maintaining equipment. We use a real-world maintenance of Base Transceiver Stations to illustrate our engineering approach which we have prototyped with state-of-the art cloud and IoT technologies, such as Apache Nifi, Hadoop, Spark and Google Cloud Functions.
使用物联网大数据云系统的工业物联网预测性维护集成分析
对于工业物联网(IIoT)技术设备的预测性维护,现有的物联网云系统提供了强大的监控和数据分析能力,可以检测和预测设备的状态。然而,我们需要支持不同软件组件和人类活动之间的复杂交互,以提供集成分析,因为在预测性维护中,由于捕获和建模不确定性和领域知识的困难,软件算法无法单独处理数据收集和分析的复杂性和规模以及设备的多样性。在本文中,我们描述了如何设计和增强复杂的物联网大数据云系统,以进行物联网预测性维护的集成分析。我们的方法是确定各种复杂的相互作用,以解决系统事件,以及有关设备的相关关键分析结果。我们将人类融入复杂物联网云系统的各个部分,以实现情景数据收集、服务管理和数据分析。我们利用无服务器功能、云服务和领域知识来支持人与软件之间的动态交互,以维护设备。我们使用真实世界的基站维护来说明我们的工程方法,我们使用最先进的云和物联网技术(如Apache Nifi, Hadoop, Spark和谷歌cloud Functions)进行原型设计。
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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