A Data Provenance based Architecture to Enhance the Reliability of Data Analysis for Industry 4.0

Peng Li, O. Niggemann
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引用次数: 3

Abstract

Integrating data analysis into workflows is a recent tendency in manufacturing sectors. According to the vision of Industry 4.0, data analysis can be automatically performed at any point of workflows if needed. In distributed and complex manufacturing systems, checking the integrity of data analysis processes is becoming more and more challenging and the dependency between (intermediate) analysis results is no more easy to understand for users involved in workflows. Therefore, a mechanism is desired, which is able to assist users in tracking and verifying distributed data analysis processes. In this paper, we extend the concept “data provenance” in the manufacturing domain to acquire information about the data origin and data changes. Furthermore, an architecture is proposed to manage provenance of process data, in which the data provenance is considered as annotation of process data. Different use cases are also given to show how data provenance can have impact on understanding and verifying data analysis processes in the manufacturing domain.
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基于数据来源的架构,提高工业4.0数据分析的可靠性
将数据分析集成到工作流程中是制造业最近的趋势。根据工业4.0的愿景,如果需要,可以在工作流程的任何点自动执行数据分析。在分布式和复杂的制造系统中,检查数据分析过程的完整性变得越来越具有挑战性,并且(中间)分析结果之间的依赖性对于参与工作流的用户来说不再容易理解。因此,需要一种能够帮助用户跟踪和验证分布式数据分析过程的机制。在本文中,我们将“数据来源”的概念扩展到制造领域,以获取有关数据来源和数据变化的信息。在此基础上,提出了一种过程数据来源管理体系结构,将数据来源视为过程数据的注释。还给出了不同的用例,以显示数据来源如何对理解和验证制造领域中的数据分析过程产生影响。
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