Gas turbine performance prediction via machine learning

被引:99
|
作者
Liu, Zuming [1 ]
Karimi, Iftekhar A. [1 ]
机构
[1] Natl Univ Singapore, Dept Chem & Biomol Engn, 4 Engn Dr 4, Singapore 117585, Singapore
关键词
Gas turbine; Surrogate models; Machine learning; Performance prediction; Correction curves; Simulation; ARTIFICIAL NEURAL-NETWORKS; POWER-PLANT; COMBINED HEAT; NATURAL-GAS; MODEL; ANN; SYSTEM; IMPLEMENTATION; DESIGN;
D O I
10.1016/j.energy.2019.116627
中图分类号
O414.1 [热力学];
学科分类号
摘要
This paper develops a machine learning-based method to predict gas turbine performance for power generation. Two surrogate models based on high dimensional model representation (HDMR) and artificial neural network (ANN) are developed from real operational data to predict the operating characteristics of air compressor and turbine. Both models capture the operating characteristics well with average errors of less than 1.0%. Moreover, four more holistic models are developed to capture gas turbine part-load and full-load performance. The models for air compressor and turbine are then embedded into a gas turbine simulation program, and all surrogate models are validated using a separate data set. It is shown that the power output, pressure ratio, fuel flow, and turbine exhaust temperature from these models match their measured values well with average and maximum errors of less than 2.0% and 4.3%, respectively. Since holistic ANN models have lower complexity and higher accuracy, the ANN model for predicting full-load performance is used to construct gas turbine performance correction curves. The correction curves along with the ANN model for predicting part-load performance offer an excellent basis for continuous health monitoring and fault diagnosis. The proposed methodology is applicable to any gas turbines and can help power plants to study and quantify performance degradation over time. (C) 2019 Elsevier Ltd. All rights reserved.
引用
收藏
页数:10
相关论文
共 50 条
  • [31] Fast prediction and sensitivity analysis of gas turbine cooling performance using supervised learning approaches
    Wang, Qi
    Yang, Li
    Huang, Kang
    [J]. ENERGY, 2022, 246
  • [32] Early prediction of preeclampsia via machine learning
    Maric, Ivana
    Tsur, Abraham
    Aghaeepour, Nima
    Montanari, Andrea
    Stevenson, David K.
    Shaw, Gary M.
    Winn, Virginia D.
    [J]. AMERICAN JOURNAL OF OBSTETRICS & GYNECOLOGY MFM, 2020, 2 (02)
  • [33] Performance Prediction of Learning Programming - Machine Learning Approach
    Au, Thien-Wan
    Salihin, Rahim
    Saiful, Omar
    [J]. 30TH INTERNATIONAL CONFERENCE ON COMPUTERS IN EDUCATION, ICCE 2022, VOL 2, 2022, : 96 - 105
  • [34] Machine learning approaches for modelling a single shaft gas turbine
    Asgari, Hamid
    Ory, Emmanuel
    [J]. INTERNATIONAL JOURNAL OF MODELLING IDENTIFICATION AND CONTROL, 2021, 37 (3-4) : 275 - 284
  • [35] Tabular Machine Learning Methods for Predicting Gas Turbine Emissions
    Potts, Rebecca
    Hackney, Rick
    Leontidis, Georgios
    [J]. MACHINE LEARNING AND KNOWLEDGE EXTRACTION, 2023, 5 (03): : 1055 - 1075
  • [36] Modelling the vibration response of a gas turbine using machine learning
    Zarate, Josue
    Juarez-Smith, Perla
    Carmona, Javier
    Trujillo, Leonardo
    de Lara, Salvador
    [J]. EXPERT SYSTEMS, 2020, 37 (05)
  • [37] Efficient prediction of hydrogen storage performance in depleted gas reservoirs using machine learning
    Mao, Shaowen
    Chen, Bailian
    Malki, Mohamed
    Chen, Fangxuan
    Morales, Misael
    Ma, Zhiwei
    Mehana, Mohamed
    [J]. APPLIED ENERGY, 2024, 361
  • [38] APPLICATION OF MACHINE LEARNING BASED SURROGATE MODEL FOR PREDICTION OF SECTIONAL TEMPERATURE OF RADIALLY COOLED GAS TURBINE BLADES
    Shrivastava, Rishabh
    Tamar, Nisha
    Grover, Amit
    Das, Debdulal
    [J]. PROCEEDINGS OF ASME 2021 GAS TURBINE INDIA CONFERENCE (GTINDIA2021), 2021,
  • [39] Prediction of Anti-Corrosion performance of new triazole derivatives via Machine learning
    Akrom, Muhamad
    Rustad, Supriadi
    Dipojono, Hermawan Kresno
    [J]. COMPUTATIONAL AND THEORETICAL CHEMISTRY, 2024, 1236
  • [40] Prediction of superior thermoelectric performance in unexplored doped-BiCuSeO via machine learning
    He, Zhijian
    Peng, Jinlin
    Lei, Chihou
    Xie, Shuhong
    Zou, Daifeng
    Liu, Yunya
    [J]. MATERIALS & DESIGN, 2023, 229