面向工业4.0的数字孪生应用:综述

Mohd Javaid , Abid Haleem , Rajiv Suman
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引用次数: 10

摘要

数字孪生是实时存在的对象、过程和系统的虚拟表示。虽然数字孪生可以代表数字对象,但它们通常用于连接物理世界和数字世界。该技术在满足工业4.0的各种要求方面发挥着至关重要的作用。它提供了工厂运营、通信网络活动或物流系统中物品移动的数字图像。本文研究了数字孪生及其在工业4.0中的需求。然后,对工业4.0数字孪生的过程和支持特征进行了图解讨论,最后确定了数字孪生在工业4.0中的主要应用。Digital Twin的复杂程度取决于所代表的流程或产品以及可用的数据。制造商可以通过在特定资产上安装传感器、收集数据、创建数字副本和使用机器智能,了解资产在物理世界中的实时行为。他们可以自信地做出明智的判断,这有助于提高公司业绩。Digital Twin评估材料使用情况以节省成本、发现效率低下、复制工具跟踪系统以及做其他事情。制造商为特定的设备和工具、独家产品或系统、整个程序或他们想在工厂改进的任何其他东西构建了一个数字克隆。传感器和其他收集过程或产品状态实时数据的设备收集这些信息,另一方面,这些信息必须得到适当的处理和处理。物联网传感器使其变得可行,它从物理环境中收集数据并传输数据以进行虚拟重建。该信息包括设计和工程细节,用于解释资产的形状、材料、组件以及行为或性能。
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Digital Twin applications toward Industry 4.0: A Review

Digital Twin is a virtual representation of objects, processes, and systems that exist in real-time. While Digital Twin can represent digital objects, they are often used to connect the physical and digital worlds. This technology plays a vital role in fulfilling various requirements of Industry 4.0. It gives a digital image of a factory's operations, a communications network's activities, or the movement of items through a logistics system. This paper studies Digital Twin and its need in Industry 4.0. Then the process and supportive features of Digital Twin for Industry 4.0 are diagrammatically discussed, and finally, the major applications of Digital Twin for Industry 4.0 are identified. Digital Twin sophistication depends on the process or product represented and the data available. Manufacturers can learn how assets will behave in real-time, in the physical world, by putting sensors on particular assets, gathering data, creating digital duplicates, and employing machine intelligence. They can confidently make wise judgments, which helps improve company performance. Digital Twin assesses material usage to save costs, discover inefficiencies, replicate tool tracking systems, and do other things. Manufacturers construct a digital clone for specific equipment and tools, exclusive products or systems, entire procedures, or anything else they want to improve on the factory floor. Sensors and other equipment that collect real-time data on the state of the process or product collect this information, which on the other hand, must be handled and processed appropriately. It is made feasible by IoT sensors, which collect data from the physical environment and transmit it to be virtually recreated. This information comprises design and engineering details that explain the asset's shape, materials, components, and behaviour or performance.

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