是否有可能开发出用于监测制造业噪声的数字孪生系统?

Li Yi, Patrick Ruediger-Flore, Ali Karnoub, Jan Mertes, Moritz Glatt, J. Aurich
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引用次数: 0

摘要

噪声监测对制造业非常重要,因为它有助于为员工维持一个安全健康的工作空间。当前的制造业噪声监测方法以声学传感器为基础,其测量的声压级 (SPL) 显示为条形图/曲线图和声学热图。在这种方法中,噪声的发射和传播过程没有得到充分解决。本文利用增强现实技术(AR)和声子追踪方法(PTM),为制造业噪声监测提出了一种数字孪生(DT)技术。在建议的基于 PTM/AR 的 DT 中,噪声由三维粒子(称为声子)在空间域中发射和穿越表示。使用移动 AR 设备(HoloLens 2),用户能够可视化机床发出的噪声并与之互动。为了验证所提出的基于 PTM/AR 的 DT 的可行性,进行了两个使用案例。第一个用例是离线测试,首先获取机床的噪声数据,然后使用不同的参数集实施基于 PTM/AR 的 DT。第一个用例的结果是了解 HoloLens 2 的 AR 性能(帧速率)与初始声子数和采样频率设置之间的关系。第二个用例是在线测试,以展示基于 PTM/AR 的 DT 的原位噪声监测能力。结果表明,我们基于 PTM/AR 的 DT 是可视化和评估制造系统实时噪声的强大工具。
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Is it possible to develop a digital twin for noise monitoring in manufacturing?
Noise monitoring is important in the context of manufacturing because it can help maintain a safe and healthy workspace for employees. Current approaches for noise monitoring in manufacturing are based on acoustic sensors, whose measured sound pressure levels (SPL) are shown as bar/curve charts and acoustic heat maps. In such a way, the noise emission and propagation process is not fully addressed. This paper proposes a digital twin (DT) for noise monitoring in manufacturing using augmented reality (AR) and the phonon tracing method (PTM). In the proposed PTM/AR-based DT, the noise is represented by 3D particles (called phonons) emitting and traversing in a spatial domain. Using a mobile AR device (HoloLens 2), users are able to visualize and interact with the noise emitted by machine tools. To validate the feasibility of the proposed PTM/AR-based DT, two use cases are carried out. The first use case is an offline test, where the noise data from a machine tool are first acquired and used for the implementation of PTM/AR-based DT with different parameter sets. The result of the first use case is the understanding between the AR performance of HoloLens 2 (frame rate) and the setting of the initial number of phonons and sampling frequency. The second use case is an online test to demonstrate the in-situ noise monitoring capability of the proposed PTM/AR-based DT. The result shows that our PTM/AR-based DT is a powerful tool for visualizing and assessing the real-time noise in manufacturing systems.
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Digital Twin
Digital Twin digital twin technologies-
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期刊介绍: Digital Twin is a rapid multidisciplinary open access publishing platform for state-of-the-art, basic, scientific and applied research on digital twin technologies. Digital Twin covers all areas related digital twin technologies, including broad fields such as smart manufacturing, civil and industrial engineering, healthcare, agriculture, and many others. The platform is open to submissions from researchers, practitioners and experts, and all articles will benefit from open peer review.  The aim of Digital Twin is to advance the state-of-the-art in digital twin research and encourage innovation by highlighting efficient, robust and sustainable multidisciplinary applications across a variety of fields. Challenges can be addressed using theoretical, methodological, and technological approaches. The scope of Digital Twin includes, but is not limited to, the following areas:  ● Digital twin concepts, architecture, and frameworks ● Digital twin theory and method ● Digital twin key technologies and tools ● Digital twin applications and case studies ● Digital twin implementation ● Digital twin services ● Digital twin security ● Digital twin standards Digital twin also focuses on applications within and across broad sectors including: ● Smart manufacturing ● Aviation and aerospace ● Smart cities and construction ● Healthcare and medicine ● Robotics ● Shipping, vehicles and railways ● Industrial engineering and engineering management ● Agriculture ● Mining ● Power, energy and environment Digital Twin features a range of article types including research articles, case studies, method articles, study protocols, software tools, systematic reviews, data notes, brief reports, and opinion articles.
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