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Big Data Exploration for Smart Manufacturing Applications

机译:智能制造应用的大数据探索

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摘要

Industrial Big Data management is gaining momentum as a relevant research topic for the development of innovative smart manufacturing applications. Big data technologies enable the collection, management and analysis of large amount of data from Cyber Physical Systems. In this context, data exploration is becoming a fundamental facility to let users/operators learn from collected data and take decisions. Exploration has to be performed according to different perspectives, spreading over all the hierarchy levels of the smart factory asset (from each device up to the fully connected enterprise and its products) and covering the entire life cycle value stream, from development to production stages. In this paper, we propose a model-based approach to represent data exploration scenarios, by abstracting from implementation details and taking into account different perspectives of the Reference Architectural Model for Industry 4.0 (RAMI 4.0). In particular, each scenario is related to the relevance of data to be explored and different user/operator requirements. A framework based on the approach and experiments in a real Industry 4.0 case study are also described.
机译:工业大数据管理作为创新智能制造应用程序开发的相关研究主题正获得发展势头。大数据技术可以从网络物理系统收集,管理和分析大量数据。在这种情况下,数据探索正成为让用户/操作员从收集的数据中学习并做出决策的基本工具。必须根据不同的观点进行探索,遍及智能工厂资产的所有层次结构级别(从每个设备到完全连接的企业及其产品),并涵盖从开发到生产阶段的整个生命周期价值流。在本文中,我们通过从实现细节中进行抽象并考虑到工业4.0参考体系结构模型(RAMI 4.0)的不同角度,提出了一种基于模型的方法来表示数据探索方案。特别是,每种情况都与要探索的数据的相关性以及不同的用户/操作员要求有关。还描述了基于实际工业4.0案例研究中的方法和实验的框架。

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