论文标题
替代模型在动态系统数字双胞胎开发中的作用
The role of surrogate models in the development of digital twins of dynamic systems
论文作者
论文摘要
数字双技术在航空航天,基础设施和汽车等各个工业领域都具有广泛适用性的巨大希望,相关性和潜力。但是,由于缺乏对特定应用的明确性,因此采用该技术的效果较慢。本文使用离散阻尼的动态系统来探讨数字双胞胎的概念。由于还期望数字双胞胎利用数据和计算方法,因此在这种情况下使用替代模型有一个令人信服的案例。在这种协同作用的激励下,我们探索了在数字双技术中使用替代模型的可能性。特别是,探索了在数字双技术中使用高斯流程(GP)模拟器的使用。 GP具有解决噪声和稀疏数据的固有能力,因此是一个令人信服的案例,可以在数字双胞胎框架中使用。涉及刚度变化和质量变化的病例是单独和共同的,以及数据中不同水平的噪声和稀疏性。我们的数值模拟结果清楚地表明,诸如GP模拟器之类的替代模型有可能成为开发数字双胞胎的有效工具。分析了与数据质量和采样率有关的方面。总结了本文介绍的关键概念,并提出了针对未来的研究需求的想法。
Digital twin technology has significant promise, relevance and potential of widespread applicability in various industrial sectors such as aerospace, infrastructure and automotive. However, the adoption of this technology has been slower due to the lack of clarity for specific applications. A discrete damped dynamic system is used in this paper to explore the concept of a digital twin. As digital twins are also expected to exploit data and computational methods, there is a compelling case for the use of surrogate models in this context. Motivated by this synergy, we have explored the possibility of using surrogate models within the digital twin technology. In particular, the use of Gaussian process (GP) emulator within the digital twin technology is explored. GP has the inherent capability of addressing noise and sparse data and hence, makes a compelling case to be used within the digital twin framework. Cases involving stiffness variation and mass variation are considered, individually and jointly along with different levels of noise and sparsity in data. Our numerical simulation results clearly demonstrate that surrogate models such as GP emulators have the potential to be an effective tool for the development of digital twins. Aspects related to data quality and sampling rate are analysed. Key concepts introduced in this paper are summarised and ideas for urgent future research needs are proposed.