The field of machine learning has rapidly advanced the state of the art in many fields of science and engineering, including experimental fluid dynamics, which is one of the original big-data disciplines. This perspective will highlight several aspects of experimental fluid mechanics that stand to benefit from progress advances in machine learning, including: 1) augmenting the fidelity and quality of measurement techniques, 2) improving experimental design and surrogate digital-twin models and 3) enabling real-time estimation and control. In each case, we discuss recent success stories and ongoing challenges, along with caveats and limitations, and outline the potential for new avenues of ML-augmented and ML-enabled experimental fluid mechanics.
翻译:机器学习领域的迅速发展推动了科学和工程的许多领域的现有技术水平,包括实验流体力学,这是最初的大数据学科之一。本文将重点介绍实验流体力学中几个有望受益于机器学习进步的方面,包括:1)增强测量技术的准确性和质量,2)改善实验设计和代理数字孪生模型,以及3)实现实时估计和控制。在每种情况下,我们讨论了最近的成功案例和正在进行的挑战,以及注意事项和限制,并概述了机器学习增强和启用实验流体力学的新途径。