A Data Transformation Adapter for Smart Manufacturing Systems with Edge and Cloud Computing Capabilities

Miguel Saez, Steven Lengieza, F. Maturana, K. Barton, D. Tilbury
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引用次数: 4

Abstract

The manufacturing industry is constantly seeking novel solutions to improve productivity and gain a competitive advantage. Considering the large amount of data that manufacturing operations generate, the capability to make a smart decision is tied to the ability to process plant floor data gaining insight into machine and system level performance. This work aims to bridge the gap between the plant floor operation and “Big Data” analysis solutions to help improve manufacturing productivity, quality, and sustainability. The proposed framework incorporates three main elements: data sourcing, analysis, and visualization. The combination of these aspects lays the groundwork for processing large amounts of data on a multi-layer infrastructure that leverages both edge and cloud computing. The data processing framework was tested using a manufacturing testbed with with machines, robots, conveyors, and different types of sensors to replicate the diverse data sources in a manufacturing plant. The data processing infrastructure was used to monitor machine health, detect anomalies, and evaluate throughput.
具有边缘和云计算能力的智能制造系统的数据转换适配器
制造业不断寻求新的解决方案,以提高生产率和获得竞争优势。考虑到制造业务产生的大量数据,做出明智决策的能力与处理工厂车间数据的能力有关,从而深入了解机器和系统级性能。这项工作旨在弥合工厂车间操作与“大数据”分析解决方案之间的差距,以帮助提高生产效率、质量和可持续性。提出的框架包含三个主要元素:数据源、分析和可视化。这些方面的结合为在利用边缘和云计算的多层基础设施上处理大量数据奠定了基础。数据处理框架使用带有机器、机器人、传送带和不同类型传感器的制造试验台进行测试,以在制造工厂中复制不同的数据源。数据处理基础结构用于监视机器运行状况、检测异常和评估吞吐量。
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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