Prospects of federated machine learning in fluid dynamics

Author:

San Omer1ORCID,Pawar Suraj1ORCID,Rasheed Adil2ORCID

Affiliation:

1. School of Mechanical and Aerospace Engineering, Oklahoma State University, Stillwater, Oklahoma 74078, USA

2. Department of Engineering Cybernetics, Norwegian University of Science and Technology, N-7465 Trondheim, Norway

Abstract

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 article, 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 a 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.

Funder

U.S. Department of Energy

Publisher

AIP Publishing

Subject

General Physics and Astronomy

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