在工业数字孪生体中实现数字人类表现

Dedy Ariansyah, A. Buerkle, Ali Al-Yacoub, Melanie Zimmer, J. Erkoyuncu, N. Lohse
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引用次数: 6

摘要

数字孪生(DTs)已经证明了它们在虚拟模型中集成传感器数据、当前状态信息和环境信息的能力。虽然以前的方法主要集中在为机器和工作站创建DT,但少数研究在设计DT系统时考虑了人的性能,这导致了整体系统性能的不足。人的整合-DT框架的缺失可能会减缓人在工业DT中的整合,因此,忽视了人在未来工业中的关键作用。本文提出了工业DT中数字人的表示框架,以连续监测和分析人的操作状态和行为。因此,DT使决策者能够在考虑到人的身体和精神状态的情况下在车间分配任务。一个示例案例展示了如何根据开发的框架将人体肌肉活动监测系统与DT集成,以解释操作员的肌肉疲劳或身体疲惫以进行决策。这包括使用人工智能(AI)来解释使用可穿戴传感器的人类活动相关数据,如肌电图(EMG)。未来的研究建议利用来自更丰富的各种传感器的人类数据作为生产操作和改进决策的控制参数。
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Towards a Digital Human Representation in an Industrial Digital Twin
Digital twins (DTs) have demonstrated their abilities to integrate sensor data, current state information, and the information about the environment in virtual models. While previous approaches have focused on creating DTs for mainly machines and workstations, a small number of studies have considered human performance when designing the DT system, which leads to a deficiency in overall system performance. The absence of the human integrated-DT framework may decelerate human integration in industrial DT, and thus, disregards the crucial role of the human in the industry of the future. This paper presents a framework for digital human representation in an industrial DT to continuously monitor and to analyse the human operational state and behaviour. Thereby, the DT enables decision-makers to allocate tasks on the shop floor taking into account the human physical and mental status. A sample case showed how a human muscle activity monitoring system could be integrated with the DT based on the developed framework to account for the operator’s muscular fatigue or physical exhaustion for decision-making. This included the use of Artificial Intelligence (AI) to interpret the human activity related data using wearable sensors, such as electromyography (EMG). Future research is proposed to harness human data from a richer variety of sensors as control parameters for production operation and improved decision-making.
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