Data-Driven Prediction of Complex Flow Field Over an Axisymmetric Body of Revolution Using Machine Learning

Author:

Panda J. P.1,Warrior H. V.2

Affiliation:

1. DIT University Department of Mechanical Engineering, , Dehradun 248009, Uttarakhand , India

2. IIT Kharagpur Department of Ocean Engineering and Naval Architecture, , Kharagpur 721302, West Bengal , India

Abstract

Abstract Computationally efficient and accurate simulations of the flow over axisymmetric bodies of revolution (ABR) have been an important desideratum for engineering design. In this article, the flow field over an ABR is predicted using machine learning (ML) algorithms (e.g., random forest (RF), artificial neural network (ANN), and convolutional neural network (CNN)) using trained ML models as surrogates for classical computational fluid dynamics (CFD) approaches. The data required for the development of the ML models were obtained from high fidelity Reynolds stress transport model (RSTM)-based simulations. The flow field is approximated as functions of x and y coordinates of locations in the flow field and the velocity at the inlet of the computational domain. The optimal hyperparameters of the trained ML models are determined using validation. The trained ML models can predict the flow field rapidly and exhibit orders of magnitude speedup over conventional CFD approaches. The predicted results of pressure, velocity, and turbulence kinetic energy are compared with the baseline CFD data. It is found that the ML-based surrogate model predictions are as accurate as CFD results. This investigation offers a framework for fast and accurate predictions for a flow scenario that is critically important in engineering design.

Publisher

ASME International

Subject

Mechanical Engineering,Ocean Engineering

Reference38 articles.

1. CFD Analysis of Axisymmetric Bodies of Revolution Using Openfoam;Reddy,2018

2. Design of an Axisymmetric Afterbody Test Case for CFD Validation;Disotell,2017

3. CFD-Based Boundary Layer Prediction of Axisymmetric Bodies of Revolution;Akolekar,2020

4. Experimental Study of a CFD Validation Test Case for Turbulent Separated Flows;Williams,2020

5. Machine Learning for Fluid Mechanics;Brunton;Annu. Rev. Fluid Mech.,2020

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