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Analyzing Critical Failures in a Production Process: Is Industrial IoT the Solution?

机译:分析生产过程中的重大故障:工业物联网是否是解决方案?

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摘要

Machine failures cause adverse impact on operational efficiency of any manufacturing concern. Identification of such critical failures and examining their associations with other process parameters pose a challenge in a traditional manufacturing environment. This research study focuses on the analysis of critical failures and their associated interaction effects which are affecting the production activities. To improve the fault detection process more accurately and efficiently, a conceptual model towards a smart factory data analytics using cyber physical systems (CPS) and Industrial Internet of Things (IIoTs) is proposed. The research methodology is based on a fact-driven statistical approach. Unlike other published work, this study has investigated the statistical relationships among different critical failures (factors) and their associated causes (cause of failures) which occurred due to material deficiency, production organization, and planning. A real business case is presented and the results which cause significant failure are illustrated. In addition, the proposed smart factory model will enable any manufacturing concern to predict critical failures in a production process and provide a real-time process monitoring. The proposed model will enable creating an intelligent predictive failure control system which can be integrated with production devices to create an ambient intelligence environment and thus will provide a solution for a smart manufacturing process of the future.
机译:机器故障会对任何制造方面的运营效率造成不利影响。在传统的制造环境中,识别此类严重故障并检查其与其他工艺参数的关联构成了挑战。这项研究专注于对影响生产活动的关键故障及其相关的相互作用影响进行分析。为了更准确,更有效地改善故障检测过程,提出了一种使用网络物理系统(CPS)和工业物联网(IIoT)进行智能工厂数据分析的概念模型。研究方法基于事实驱动的统计方法。与其他已发表的工作不同,本研究调查了由于材料不足,生产组织和计划而发生的不同关键故障(因素)及其相关原因(故障原因)之间的统计关系。提出了一个实际的业务案例,并说明了导致严重故障的结果。此外,建议的智能工厂模型将使任何制造方面的问题能够预测生产过程中的关键故障并提供实时过程监控。提出的模型将能够创建可以与生产设备集成以创建环境智能环境的智能预测性故障控制系统,从而为未来的智能制造过程提供解决方案。

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