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...
Increasing the cycle efficiency of Organic Rankine Cycles is an important R&D area. In this study, a...
Axial turbines are the most common turbine configuration for electric power generation and propulsio...
In this paper, a new multiploid genetic optimization method handling surrogate models of the CID sol...
Small scale axial air driven turbine (less than 10 kW) is the crucial component in distributed power...
AbstractEfficient small scale axial air turbines play a major role in determining the overall conver...
Efficient small scale axial air turbines play a major role in determining the overall conversion eff...
Efficient small scale axial air turbines play a major role in determining the overall conversion eff...
Efficient small scale axial air turbines play a major role in determining the overall conversion eff...
Efficient small scale axial air turbine is one of the proposed solutions for improving the overall e...
Small scale distributed compressed air energy storage (D-CAES) has been recognized as promising tech...
Efficient small scale axial air turbine is one of the proposed solutions for improving the overall e...
This thesis deals with a study of the significance of lossmodels and their applications in simulatio...
In this paper, a new multiploid genetic optimization method handling surrogate models of the CFD sol...
By matching a well established fast through-flow analysis code and an efficient optimization algorit...
By matching a well established fast through-flow analysis code and an efficient optimization algorit...
Increasing the cycle efficiency of Organic Rankine Cycles is an important R&D area. In this study, a...
Axial turbines are the most common turbine configuration for electric power generation and propulsio...
In this paper, a new multiploid genetic optimization method handling surrogate models of the CID sol...
Small scale axial air driven turbine (less than 10 kW) is the crucial component in distributed power...
AbstractEfficient small scale axial air turbines play a major role in determining the overall conver...
Efficient small scale axial air turbines play a major role in determining the overall conversion eff...
Efficient small scale axial air turbines play a major role in determining the overall conversion eff...
Efficient small scale axial air turbines play a major role in determining the overall conversion eff...
Efficient small scale axial air turbine is one of the proposed solutions for improving the overall e...
Small scale distributed compressed air energy storage (D-CAES) has been recognized as promising tech...
Efficient small scale axial air turbine is one of the proposed solutions for improving the overall e...
This thesis deals with a study of the significance of lossmodels and their applications in simulatio...
In this paper, a new multiploid genetic optimization method handling surrogate models of the CFD sol...
By matching a well established fast through-flow analysis code and an efficient optimization algorit...
By matching a well established fast through-flow analysis code and an efficient optimization algorit...
Increasing the cycle efficiency of Organic Rankine Cycles is an important R&D area. In this study, a...
Axial turbines are the most common turbine configuration for electric power generation and propulsio...
In this paper, a new multiploid genetic optimization method handling surrogate models of the CID sol...