Reference Architecture for a Collaborative Predictive Platform for Smart Maintenance in Manufacturing

Z. Balogh, E. Gatial, J. Barbosa, P. Leitão, T. Matejka
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引用次数: 12

Abstract

Maintenance is a key factor to ensure the production efficiency, since the occurrence of unexpected failures leads to a degradation of the system performance, causing the loss of productivity and business opportunities, which are crucial roles to achieve competitiveness. The article aims to propose a reference architecture which will improve the way maintenance is considered in the current manufacturing world, by enabling an overall increase of production rates, while increasing the operational equipment effectiveness and decreasing the impact of maintenance needs. This objective would be accomplished by establishing an IoT infrastructure for the collection of the huge amount of available shop floor data, which can be analyzed, considering data analytics algorithms, predictive maintenance models and forecasting techniques, to perform the machine/system health assessment and prediction of maintenance needs, e.g. by detecting earlier the occurrence of possible failures and consequently the need to implement maintenance interventions. The scheduling of predictive maintenance needs will be integrated with the existing maintenance planning tools, and especially synchronized with the production planning tools to achieve a nondisruptive maintenance impact in the production system. A cloud-based collaborative maintenance services platform allows the secure collection, aggregation and analysis of a large amount of shared data from numerous manufacturers that use the same or similar machinery, and acts as an open market where companies can contract specialized maintenance services. This reference architecture aims to provide replicable architecture to be broadly applicable in a variety of industries, capable to improve the production efficiency through a real-time health monitoring and early detection of failures and outages, to speed up the maintenance delivery, and consequently mitigate their impact.
制造业智能维护协同预测平台的参考体系结构
维护是确保生产效率的关键因素,因为意外故障的发生会导致系统性能下降,导致生产力和商业机会的损失,而这是实现竞争力的关键作用。本文旨在提出一种参考架构,通过提高生产率,同时提高操作设备的有效性,减少维护需求的影响,从而改善当前制造业对维护的考虑方式。这一目标将通过建立物联网基础设施来实现,用于收集大量可用的车间数据,考虑数据分析算法、预测性维护模型和预测技术,对这些数据进行分析,以执行机器/系统健康评估和维护需求预测,例如,通过更早地检测可能发生的故障,从而实施维护干预。预测性维护需求的调度将与现有的维护计划工具集成,特别是与生产计划工具同步,以实现对生产系统的非中断维护影响。基于云的协同维护服务平台允许安全收集、聚合和分析来自使用相同或类似机器的众多制造商的大量共享数据,并充当公司可以签订专业维护服务的开放市场。此参考体系结构旨在提供广泛适用于各种行业的可复制体系结构,能够通过实时运行状况监控和早期检测故障和中断来提高生产效率,加快维护交付,从而减轻其影响。
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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