MACHINE LEARNING BASED CLASSIFICATION MODEL FOR PREDICTING CYCLIC FAILURE IN RADIALLY COOLED GAS TURBINE BLADES

被引:0
作者
Shrivastava, Rishabh [1 ]
Kapoor, Ankush [1 ]
Kaushal, Stuti [1 ]
Yadav, Amit [1 ]
Vodnala, Pavankumar [1 ]
机构
[1] Siemens Ltd, Gurugram, India
来源
PROCEEDINGS OF ASME 2021 GAS TURBINE INDIA CONFERENCE (GTINDIA2021) | 2021年
关键词
Gas Turbine; Turbine Blade; Low cycle fatigue; Machine Learning; Surrogate Modelling; Linear regression; Random Forest;
D O I
暂无
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Gas turbine blades and vanes face very severe operating conditions- high temperature and pressure which necessitates the creation of complex cooling and component designs, resulting in high computational cost. The ability to predict cyclic failure in these components is therefore a critical activity that has been historically performed using 3D commercial finite element (FE) codes for baseload conditions. However, these codes take substantial time and resources which restricts their application in failure prediction at variable operating conditions. Newer data-driven techniques such as machine learning (ML) provide a valuable tool that can be utilized to predict the occurrence of cyclic failure for these conditions with minimal time and resource requirement. In this paper, a machine learning based surrogate model is developed to predict the cyclic failure of a radially cooled turbine blade. The features used as input to machine learning model are turbine inlet temperature, coolant inlet temperature, hot gas mass flow rate, cooling air mass flow rate and blade materials. The output for the model is a binary variable depicting the incident of component failure. 70% of the FE data points are used to train the ML model while the remaining are used for testing. A comparative study between Logistic Regression, Random Forest, K-nearest neighbor, and Support Vector Machine (SVM) was performed to select the most accurate algorithm for the classification model. Finally, the results show that the Random Forest and SVM algorithms predicts failure with the highest f-1 score of 0.92. The model also demonstrates that Turbine Inlet temperature has the highest importance amongst the input features followed by blade material. Additionally, this methodology offers a tremendous advantage for failure prediction by reducing analysis time from multiple hours to a few seconds, rendering this technique especially beneficial for time sensitive business decisions in the gas turbine industry.
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页数:8
相关论文
共 12 条
[1]   Artificial intelligence/machine learning in manufacturing and inspection: A GE perspective [J].
Aggour, Kareem S. ;
Gupta, Vipul K. ;
Ruscitto, Daniel ;
Ajdelsztajn, Leonardo ;
Bian, Xiao ;
Brosnan, Kristen H. ;
Kumar, Natarajan Chennimalai ;
Dheeradhada, Voramon ;
Hanlon, Timothy ;
Iyer, Naresh ;
Karandikar, Jaydeep ;
Li, Peng ;
Moitra, Abha ;
Reimann, Johan ;
Robinson, Dean M. ;
Santamaria-Pang, Alberto ;
Shen, Chen ;
Soare, Monica A. ;
Sun, Changjie ;
Suzuki, Akane ;
Venkataramana, Raju ;
Vinciguerra, Joseph .
MRS BULLETIN, 2019, 44 (07) :545-558
[2]   Linear and nonlinear features and machine learning for wind turbine blade ice detection and diagnosis [J].
Arcos Jimenez, Alfredo ;
Garcia Marquez, Fausto Pedro ;
Borja Moraleda, Victoria ;
Gomez Munoz, Carlos Quiterio .
RENEWABLE ENERGY, 2019, 132 :1034-1048
[3]   Fatigue life prediction of metallic materials considering mean stress effects by means of an artificial neural network [J].
Barbosa, Joelton Fonseca ;
Correia, Jose A. F. O. ;
Freire Junior, R. C. S. ;
De Jesus, Abilio M. P. .
INTERNATIONAL JOURNAL OF FATIGUE, 2020, 135
[4]  
Coffin LF, 1954, T AM SOC MECH ENG, V76, P931, DOI DOI 10.1115/1.4015020
[5]  
Geron A., 2019, Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow: Concepts, Tools, and Techniques to Build Intelligent Systems
[6]  
Hadadian Armin, 2018, ASME TURBO EXPO 2018
[7]   Deep neural network-based wind speed forecasting and fatigue analysis of a large composite wind turbine blade [J].
Kulkarni, Pravin A. ;
Dhoble, Ashwinkumar S. ;
Padole, Pramod M. .
PROCEEDINGS OF THE INSTITUTION OF MECHANICAL ENGINEERS PART C-JOURNAL OF MECHANICAL ENGINEERING SCIENCE, 2019, 233 (08) :2794-2812
[8]   A deep learning approach to estimate stress distribution: a fast and accurate surrogate of finite-element analysis [J].
Liang, Liang ;
Liu, Minliang ;
Martin, Caitlin ;
Sun, Wei .
JOURNAL OF THE ROYAL SOCIETY INTERFACE, 2018, 15 (138)
[9]   Combining regression trees and the finite element method to define stress models of highly non-linear mechanical systems [J].
Lostado, R. ;
Martinez-de-Pison, F. J. ;
Pernia, A. ;
Alba, F. ;
Blanco, J. .
JOURNAL OF STRAIN ANALYSIS FOR ENGINEERING DESIGN, 2009, 44 (06) :491-502
[10]  
Manson S.S., 1954, NATL ADVISORY COMMIT