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Digital Triplet Approach for Real-Time Monitoring and Control of an Elevator Security System

机译:数字三重态方法用于电梯安全系统的实时监控

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As Digital Twins gain more traction and their adoption in industry increases, there is a need to integrate such technology with machine learning features to enhance functionality and enable decision making tasks. This has lead to the emergence of a concept known as Digital Triplet; an enhancement of Digital Twin technology through the addition of an ’intelligent activity layer’. This is a relatively new technology in Industrie 4.0 and research efforts are geared towards exploring its applicability, development and testing of means for implementation and quick adoption. This paper presents the design and implementation of a Digital Triplet for a three-floor elevator system. It demonstrates the integration of a machine learning (ML) object detection model and the system Digital Twin. This was done to introduce an additional security feature that enabled the system to make a decision, based on objects detected and take preliminary security measures. The virtual model was designed in Siemens NX and programmed via Total Integrated Automation (TIA) portal software. The corresponding physical model was fabricated and controlled using a Programmable Logic Controller (PLC) S7 1200. A control program was developed to mimic the general operations of a typical elevator system used in a commercial building setting. Communication, between the physical and virtual models, was enabled using the OPC-Unified Architecture (OPC-UA) protocol. Object recognition using “You only look once” (YOLOV3) based machine learning algorithm was incorporated. The Digital Triplet’s functionality was tested, ensuring the virtual system duplicated actual operations of the physical counterpart through the use of sensor data. Performance testing was done to determine the impact of the ML module on the real-time functionality aspect of the system. Experiment results showed the object recognition contributed an average of 1.083 s to an overall signal travel time of 1.338 s.
机译:随着Digital Twins受到越来越多的关注并且其在行业中的采用率不断提高,需要将此类技术与机器学习功能集成在一起,以增强功能并执行决策任务。这导致了一个称为数字三重态的概念的出现。通过添加“智能活动层”来增强Digital Twin技术。这是Industrie 4.0中的一种相对较新的技术,研究工作旨在探索其适用性,开发和测试实施方式以及迅速采用的手段。本文介绍了用于三层电梯系统的Digital Triplet的设计和实现。它演示了机器学习(ML)对象检测模型和系统Digital Twin的集成。这样做是为了引入附加的安全功能,该功能使系统能够基于检测到的对象做出决定并采取初步的安全措施。该虚拟模型是在Siemens NX中设计的,并通过全面集成自动化(TIA)门户软件进行了编程。相应的物理模型是使用可编程逻辑控制器(PLC)S7 1200进行制造和控制的。开发了一个控制程序来模拟商业建筑环境中典型电梯系统的一般操作。物理模型和虚拟模型之间的通信使用OPC统一体系结构(OPC-UA)协议启用。结合了基于“只看一次”(YOLOV3)的机器学习算法的对象识别。测试了Digital Triplet的功能,以确保虚拟系统通过使用传感器数据来复制物理副本的实际操作。进行了性能测试,以确定ML模块对系统实时功能方面的影响。实验结果表明,物体识别平均为1.083 s贡献了1.338 s的总信号传播时间。

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