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An energy-aware cyber physical system for energy Big data analysis and recessive production anomalies detection in discrete manufacturing workshops

机译:一种能量感知网络物理系统,用于能量大数据分析和离散制造研讨会中的隐性生产异常检测

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摘要

With the development of sensing and communications technology, some new features have emerged in manufacturing processes, such as highly correlated, deeply integrated, dynamically integrated, and a huge volume of data. There is a strong need to deeply excavate information from manufacturing Big Data, especially the energy consumption data, for energy-efficient manufacturing operations management and analysis. However, relevant data reduction and association analysis to support energy-efficient manufacturing are still ineffective and error-prone, especially for discrete manufacturing workshops. In this paper, an energy-aware Cyber Physical System (E-CPS) is proposed for energy Big Data analysis and recessive production anomalies detection. Firstly, E-CPS is introduced to acquire manufacturing Big Data. Then, a Big Data analysis method, including data reduction and data association analysis, is proposed to analyse the manufacturing data in the E-CPS. Considering the complexity and dynamics of manufacturing processes, an energy Big Data-driven recessive production anomalies analysis method is proposed based on deep belief networks. The proposed method in this paper realises the integrated utilisation of production Big Data and energy Big Data in the E-CPS. Further, the efficiency evaluation and recessive anomalies detection methods can be used in existing production information systems.
机译:随着传感和通信技术的发展,制造过程中出现了一些新的功能,例如高度相关,深度集成,动态整合和大量数据。有强有力需要深深挖掘从制造大数据,尤其是能源消耗数据,以节能制造业务管理和分析。然而,相关数据减少和关联分析支持节能制造仍然无效和出错,特别是对于离散的制造研讨会。本文提出了一种能量感知网络物理系统(E-CPS),用于能量大数据分析和隐性生产异常检测。首先,引入了E-CPS以获得制造大数据。然后,提出了一种大数据分析方法,包括数据减少和数据关联分析,以分析E-CP中的制造数据。考虑到制造过程的复杂性和动态,提出了基于深度信仰网络的能量大数据驱动的隐性生产异常分析方法。本文所提出的方法实现了E-CP中生产大数据和能量大数据的集成利用。此外,效率评估和隐性异常检测方法可用于现有的生产信息系统。

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