A Haghshenas, S Hedayatpour, R Groll - Physics of Fluids, 2023 - pubs.aip.org
An accurate and fast prediction of particle-laden flow fields is of particular relevance for a wide variety of industrial applications. The motivation for this research is to evaluate the …
Micro-scale positioning techniques have become essential in numerous engineering systems. In the field of fluid mechanics, particle tracking velocimetry (PTV) stands out as a …
C Xu, P Terry - Physics of Fluids, 2024 - pubs.aip.org
Turbulence, the ubiquitous dynamical phenomenon involving random flows and particle motion, is a most challenging research topic that has received persistent attention in both the …
This study proposes a computational model to define the wind velocity of the environment on the photovoltaic (PV) module via heat transfer concepts. The effect of the wind velocity and …
Time-marching of turbulent flow fields is computationally expensive using traditional Computational Fluid Dynamics (CFD) solvers. Machine Learning (ML) techniques can be …
This study presents a novel approach to using a gated recurrent unit (GRU) model, a deep neural network, to predict turbulent flows in a Lagrangian framework. The emerging velocity …
This study suggests employing a deep learning model trained on on-site wind speed measurements to enhance predictions for future wind speeds. The model uses a gated …
The transport of passive particles in turbulent flow can be studied with a combination of Direct Numerical Simulation (DNS) and Lagrangian scalar tracking (LST). While such …