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Minimization of loss in small scale axial air turbine using CFD modeling and evolutionary algorithm optimization

Bahr Ennil, Ali; Al-Dadah, Raya; Mahmoud, Saad; Rahbar, Kiyarash; AlJubori, Ayad

Authors

Raya Al-Dadah

Saad Mahmoud

Kiyarash Rahbar

Ayad AlJubori



Contributors

Abstract

Small scale axial air driven turbine (less than 10 kW) is the crucial component in distributed power generation cycles and in compressed air energy storage systems driven by renewable energies. Efficient small axial turbine design requires precise loss estimation and geometry optimization of turbine blade profile for maximum performance. Loss predictions are vital for improving turbine efficiency. Published loss prediction correlations were developed based on large scale turbines; therefore, this work aims to develop a new approach for losses prediction in a small scale axial air turbine using computational fluid dynamics (CFD) simulations. For loss minimization, aerodynamics of turbine blade shape was optimized based on fully automated CFD simulation coupled with Multi-objective Genetic Algorithm (MOGA) technique. Compare to other conventional loss models, results showed that the Kacker & Okapuu model predicted the closest values to the CFD simulation results thus it can be used in the preliminary design phase of small axial turbine which can be further optimized through CFD modeling. The combined CFD with MOGA optimization for minimum loss showed that the turbine efficiency can be increased by 12.48% compare to the baseline design.

Journal Article Type Article
Acceptance Date Mar 17, 2016
Online Publication Date Jun 5, 2016
Publication Date Jun 5, 2016
Deposit Date Oct 24, 2023
Journal Applied Thermal Engineering
Print ISSN 1359-4311
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 102
DOI https://doi.org/10.1016/j.applthermaleng.2016.03.077