Blade profile optimization of pump as turbine

One major focus on the performance researches of pump as turbine is how to enhance the efficiency of energy recovery. While the key point of increasing the efficiency is to improve the performance of the blade profile which is structural basis of the blade geometry. This article presents an optimiza...

Full description

Bibliographic Details
Main Authors: Sen-chun Miao, Jun-hu Yang, Guang-tai Shi, Ting-ting Wang
Format: Article
Language:English
Published: SAGE Publishing 2015-09-01
Series:Advances in Mechanical Engineering
Online Access:https://doi.org/10.1177/1687814015605748
id doaj-acdffe75c5ec488ea8ad9a86123c9a3e
record_format Article
spelling doaj-acdffe75c5ec488ea8ad9a86123c9a3e2020-11-25T03:32:32ZengSAGE PublishingAdvances in Mechanical Engineering1687-81402015-09-01710.1177/168781401560574810.1177_1687814015605748Blade profile optimization of pump as turbineSen-chun MiaoJun-hu YangGuang-tai ShiTing-ting WangOne major focus on the performance researches of pump as turbine is how to enhance the efficiency of energy recovery. While the key point of increasing the efficiency is to improve the performance of the blade profile which is structural basis of the blade geometry. This article presents an optimization method for the blade profile. It contained the parameterization of blade profile, the Latin Hypercube experimental design, the computational fluid dynamics techniques, the back propagation neural network, and genetic algorithm. Specifically, the nonuniform cubic B-spline curve was used to parameterize the blade profile, the Latin Hypercube experimental design method for the acquirement of the sample points of back propagation neural network. The performance analysis of each sample point was accomplished by the computational fluid dynamics techniques. Then, the learning and training of the back propagation neural network was carried out. Finally, the optimization techniques of combining the back propagation neural network and genetic algorithm were used to solve the optimization problems of the blade profile. Based on the above method, the blade profile of a pump as turbine was optimized and improved. The result shows that the efficiency of the optimized pump as turbine under the optimum operating condition was increased by 2.91%, with the constraint condition to ensure that the difference between the head and the initial head of the pump as turbine is less than the specified value. This proves that using the above method to optimize the blade profile is feasible.https://doi.org/10.1177/1687814015605748
collection DOAJ
language English
format Article
sources DOAJ
author Sen-chun Miao
Jun-hu Yang
Guang-tai Shi
Ting-ting Wang
spellingShingle Sen-chun Miao
Jun-hu Yang
Guang-tai Shi
Ting-ting Wang
Blade profile optimization of pump as turbine
Advances in Mechanical Engineering
author_facet Sen-chun Miao
Jun-hu Yang
Guang-tai Shi
Ting-ting Wang
author_sort Sen-chun Miao
title Blade profile optimization of pump as turbine
title_short Blade profile optimization of pump as turbine
title_full Blade profile optimization of pump as turbine
title_fullStr Blade profile optimization of pump as turbine
title_full_unstemmed Blade profile optimization of pump as turbine
title_sort blade profile optimization of pump as turbine
publisher SAGE Publishing
series Advances in Mechanical Engineering
issn 1687-8140
publishDate 2015-09-01
description One major focus on the performance researches of pump as turbine is how to enhance the efficiency of energy recovery. While the key point of increasing the efficiency is to improve the performance of the blade profile which is structural basis of the blade geometry. This article presents an optimization method for the blade profile. It contained the parameterization of blade profile, the Latin Hypercube experimental design, the computational fluid dynamics techniques, the back propagation neural network, and genetic algorithm. Specifically, the nonuniform cubic B-spline curve was used to parameterize the blade profile, the Latin Hypercube experimental design method for the acquirement of the sample points of back propagation neural network. The performance analysis of each sample point was accomplished by the computational fluid dynamics techniques. Then, the learning and training of the back propagation neural network was carried out. Finally, the optimization techniques of combining the back propagation neural network and genetic algorithm were used to solve the optimization problems of the blade profile. Based on the above method, the blade profile of a pump as turbine was optimized and improved. The result shows that the efficiency of the optimized pump as turbine under the optimum operating condition was increased by 2.91%, with the constraint condition to ensure that the difference between the head and the initial head of the pump as turbine is less than the specified value. This proves that using the above method to optimize the blade profile is feasible.
url https://doi.org/10.1177/1687814015605748
work_keys_str_mv AT senchunmiao bladeprofileoptimizationofpumpasturbine
AT junhuyang bladeprofileoptimizationofpumpasturbine
AT guangtaishi bladeprofileoptimizationofpumpasturbine
AT tingtingwang bladeprofileoptimizationofpumpasturbine
_version_ 1724567659447582720