台式智能生产线及其诊断技术研究

T. Chan, Jyun-De Li, Yi Su, Yi-Hao Chen, Zhong-Rui Chang, Teng-Chieh Chang, Chen-Yang Hung, Chui-Chan Chiu, Arindam Dutta, Sabbella Veera Venkata Satyanarayana Reddy
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引用次数: 0

摘要

摘要:智能制造是制造业的发展趋势。因此,本研究旨在构建一条虚拟与真实系统相结合的桌面智能生产线。将各种传感器测得的数据收集起来,与智能预测诊断系统相结合,实现对机器健康状态的在线诊断、分析和预测。为了方便用户,我们设计了一个交互式的信息收集服务。我们让用户方便快捷地获取特定信息,提高了控制器和设备的便利性,满足了长期监控的需要。此外,我们专注于使用机械臂、三维打印机和具有智能预测诊断系统的小型复杂加工机器,将生产场景从单元制造减少到工厂产品检查。对此,机械臂的视觉识别功能可以对产品进行外观检测。最后,在集成所有控制器的机器网络平台上,当机器出现故障时,通过通信服务软件将信息实时发送给用户,操作人员可以根据收到的报警动作采取相应的措施,如远程控制机器,以保证生产效率和质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study on Desktop Smart Production Line and Diagnosis Technology
Abstract: Smart manufacturing is a development tendency in the manufacturing industry. Thus, this study aimed to construct a desktop smart production line using a virtual and a real system. The data measured by various sensors were collected and combined with an intelligent predictive diagnosis system to achieve online diagnosis, analysis, and prediction of the health status of the machine. We designed an interactive information collection service for the convenience of users. We allowed users to obtain specific information easily and quickly, improve the convenience of controllers and devices, and meet the need for long-term monitoring. Moreover, we focused on reducing production scenarios from cell manufacturing to factory product inspection using robotic arms, three-dimensional printers, and small and complex processing machines with intelligent predictive diagnostic systems. In this regard, the visual recognition function of the robotic arm can perform a product appearance inspection. Finally, in the machine network platform integrating all the controllers, when the machine fails, the information is sent to the user in real time through the communication service software, and the operator can take corresponding measures depending on the warning actions received, such as remote control of the machine, to ensure production efficiency and quality.
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