Cloud-Powered Digital Twins: Is It Reality?

Balázs Sonkoly, B. Nagy, János Dóka, István Pelle, G. Szabó, Sándor Rácz, János Czentye, László Toka
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Abstract

The flexibility of future production systems envisioned by Industry 4.0 requires safe but efficient Human-Robot Collaboration (HRC). An important enabler of HRC is a sophisticated collision avoidance mechanism which can detect objects and potential collision events and as a response, it calculates detour trajectories avoiding physical contacts. Digital twins provide a novel way to test the impact of different control decisions in a simulated virtual environment even in parallel. The required computational power can be provided by cloud platforms but at the cost of higher delay and jitter. Moreover, clouds bring a versatile set of novel techniques easing the life of both developers and operators. Can digital twins exploit the benefits of these concepts? Can the robots tolerate the delay characteristics coming with the cloud platforms? In this paper, we answer these questions by building on public and private cloud solutions providing different techniques for parallel computation. Our contribution is threefold. First, we introduce a measurement methodology to characterize different approaches in terms of latency. Second, a real HRC use-case is elaborated and a relevant KPI is defined. Third, we evaluate the pros/cons of different solutions and their impact on the performance.
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云驱动的数字孪生:这是现实吗?
工业4.0所设想的未来生产系统的灵活性需要安全而高效的人机协作(HRC)。HRC的一个重要推动因素是复杂的避碰机制,它可以检测物体和潜在的碰撞事件,并作为响应,计算避免物理接触的绕行轨迹。数字孪生提供了一种新的方法来测试不同控制决策在模拟虚拟环境中的影响,甚至是并行的。所需的计算能力可以由云平台提供,但代价是更高的延迟和抖动。此外,云带来了一套灵活的新技术,简化了开发人员和操作人员的生活。数字孪生能利用这些概念带来的好处吗?机器人能忍受云平台带来的延迟特性吗?在本文中,我们通过构建提供不同并行计算技术的公共云和私有云解决方案来回答这些问题。我们的贡献是三重的。首先,我们介绍了一种测量方法,以表征不同方法的延迟。其次,详细阐述一个真实的HRC用例,并定义一个相关的KPI。第三,我们评估了不同解决方案的优缺点及其对性能的影响。
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