Physics-based models have been mainstream in fluid dynamics for developing predictive models. In recent years, machine learning has offered a renaissance to the fluid community due to the rapid developments in data science, processing units, neural network based technologies, and sensor adaptations. So far in many applications in fluid dynamics, machine learning approaches have been mostly focused on a standard process that requires centralizing the training data on a designated machine or in a data center. In this letter, we present a federated machine learning approach that enables localized clients to collaboratively learn an aggregated and shared predictive model while keeping all the training data on each edge device. We demonstrate the feasibility and prospects of such decentralized learning approach with an effort to forge a deep learning surrogate model for reconstructing spatiotemporal fields. Our results indicate that federated machine learning might be a viable tool for designing highly accurate predictive decentralized digital twins relevant to fluid dynamics.
翻译:近年来,由于数据科学、处理器、神经网络技术和感官适应方面的快速发展,机器学习使流体社区有了复兴。 到目前为止,在流体动态的许多应用中,机器学习方法主要侧重于一个标准过程,该过程要求将培训数据集中到指定的机器或数据中心。在本信中,我们提出了一个联合机器学习方法,使本地客户能够合作学习一个综合和共享的预测模型,同时将所有培训数据保存在每个边缘设备上。我们展示了这种分散学习方法的可行性和前景,努力构建一个深层次的学习代金模型,用于重建运动场。我们的结果表明,联结机器学习可能是设计与流体动态相关的高度准确、分散的数字双胞胎的可行工具。