Emulation of Complex Fluid Flows

Projection-Based Reduced-Order Modeling and Machine Learning

Vigor Yang author Xingjian Wang author

Format:Hardback

Publisher:De Gruyter

Published:21st Nov '25

Currently unavailable, and unfortunately no date known when it will be back

Emulation of Complex Fluid Flows cover

While artificial intelligence has made significant strides in imaging and natural language processing, its utilization in engineering science remains relatively new. This book aims to introduce machine learning techniques to facilitate the emulation of complex fluid flows. The work focuses on projection-based reduced-order models (ROMs) that condense high-dimensional data into a low-dimensional subspace by leveraging principal components. Techniques like proper orthogonal decomposition (POD) and convolutional autoencoder (CAE) are utilized to configure this subspace, establishing a functional mapping between input parameters and solution fields. The applicability of POD-based ROMs for spatial and spatiotemporal problems are explored across various engineering scenarios, including flow past a cylinder, supercritical turbulent flows, and hydrogen-blended combustion. To capture intricate dynamics, common POD, kernel-smoothed POD, and common kernel-smoothed POD methods are developed in sequence. Additionally, the effectiveness of POD and CAE in capturing nonlinear features are compared. This book is designed to benefit graduate students and researchers interested in the intersection of data and engineering sciences.

ISBN: 9783111631356

Dimensions: unknown

Weight: 371g

121 pages