Inverse Aerodynamic Design of Gas Turbine Blades using Probabilistic Machine Learning

Author:

Ghosh Sayan1,Anantha Padmanabha Govinda2,Peng Cheng3,Andreoli Valeria1,Atkinson Steven4,Pandita Piyush1,Vandeputte Thomas5,Zabaras Nicholas6,Wang Liping7

Affiliation:

1. 1 Research Circle Niskayuna, NY 12309

2. University of Notre Dame Notre Dame, IN 46556

3. University of Notre Dame Notre Dame, KS 46556

4. 35 Kent Ave Brooklyn, NY 11249

5. 1 Research Circle Niskayuna NY, NY 12309-1027

6. University of Warwick Coventry, CV4 7AL United Kingdom

7. 1 Research Circle K1-4B5A Niskayuna, NY 12309

Abstract

Abstract One of the critical components in Industrial Gas Turbines (IGT) is the turbine blade. Design of turbine blades needs to consider multiple aspects like aerodynamic efficiency, durability, safety and manufacturing, which make the design process sequential and iterative. The sequential nature of these iterations forces a long design cycle time, ranging from several months to years. Due to the reactionary nature of these iterations, little effort has been made to accumulate data in a manner that allows for deep exploration and understanding of the total design space. This is exemplified in the process of designing the individual components of the IGT resulting in a potential unrealized efficiency. To overcome the aforementioned challenges, we demonstrate a probabilistic inverse design machine learning framework, namely PMI (PMI), to carry out an explicit inverse design. PMI calculates the design explicitly without costly iteration and overcomes the challenges associated with ill-posed inverse problems. In this work the framework will be demonstrated on inverse aerodynamic design of three-dimensional turbine blades.

Funder

Advanced Research Projects Agency

Publisher

ASME International

Subject

Computer Graphics and Computer-Aided Design,Computer Science Applications,Mechanical Engineering,Mechanics of Materials

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