Data analytics and production efficiency evaluation on a flexible manufacturing cell

F. Giusti, M. Bevilacqua, Stefano Tedeschi, C. Emmanouilidis
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引用次数: 9

Abstract

Industry 4.0 is changing the manufacturing landscape towards smart and digital manufacturing. As a result, manufacturing companies will be capable to improve productivity while reducing lead time and costs. Nevertheless, manufacturers' skepticism about the benefits provided by Industry 4.0 still represents a barrier to its diffusion. The aim of this work is to demonstrate how Internet of Things and Analytics technologies can bring benefits regarding remote performance monitoring. The intended aim is achieved through the development of a monitoring system concept and its concrete implementation on a Festo Flexible Mechatronics System (MPS 202), a small-scale automated production line. The integration and connection of various sensors allow data collection and communication to a cloud infrastructure, where data are processed and analyzed. Data analytics can highlight key performance metrics that are visualized and streamed on a dashboard, facilitating the understanding of process conditions. The system generates alarms on mobile devices in case of anomalies in the Festo system, allowing users to immediately realize whether an undesired event is occurring in the system. The monitoring system enhances process performance awareness, as key performance metrics such as productivity, cycle time and parts produced are displayed, the cloud infrastructure enables remote visualization and monitoring. This work aims to demonstrate how the implementation of simple and inexpensive IoT devices represents an efficient way to provide new monitoring capabilities for legacy machines.
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柔性制造单元的数据分析与生产效率评价
工业4.0正在改变制造业的格局,朝着智能和数字化制造的方向发展。因此,制造公司将能够提高生产率,同时减少交货时间和成本。然而,制造商对工业4.0带来的好处持怀疑态度,仍然是其推广的障碍。这项工作的目的是展示物联网和分析技术如何在远程性能监控方面带来好处。通过监测系统概念的开发及其在Festo柔性机电一体化系统(MPS 202)(一条小型自动化生产线)上的具体实施,实现了预期目标。各种传感器的集成和连接允许数据收集和通信到云基础设施,在那里数据被处理和分析。数据分析可以突出显示在仪表板上的可视化和流媒体的关键性能指标,促进对过程条件的理解。当Festo系统出现异常时,系统会在移动设备上发出告警,让用户能够第一时间意识到系统是否发生了不希望发生的事件。监控系统增强了过程性能意识,因为显示了生产率、周期时间和生产部件等关键性能指标,云基础设施支持远程可视化和监控。这项工作旨在展示简单而廉价的物联网设备的实施是如何为传统机器提供新的监控功能的有效方法。
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