A fault diagnosis method for gas turbines based on improved data preprocessing and an optimization deep belief network
暂无分享,去创建一个
Chunqing Tan | Xuezhi Dong | Qing Gao | Tao Wang | Hualiang Zhang | Li-Ping Yan | De-Tang Zeng | Haisheng Chen | Haisheng Chen | Chunqing Tan | Tao Wang | Q. Gao | Hualiang Zhang | Xuezhi Dong | Liping Yan | Detang Zeng
[1] Robert King,et al. Application of Artificial Neural Networks for Misfiring Detection in an Annular Pulsed Detonation Combustor Mockup , 2016 .
[2] K. Khorasani,et al. Fault detection and isolation of gas turbine engines using a bank of neural networks , 2015 .
[3] Dahai Zhang,et al. A Data-Driven Design for Fault Detection of Wind Turbines Using Random Forests and XGboost , 2018, IEEE Access.
[4] Asok Ray,et al. Data-Driven Fault Detection in Aircraft Engines With Noisy Sensor Measurements , 2011 .
[5] Loredana Magistri,et al. FDI oriented modeling of an experimental SOFC system, model validation and simulation of faulty states , 2014 .
[6] Daren Yu,et al. Sparse Bayesian Learning for Gas Path Diagnostics , 2013 .
[7] Geoffrey E. Hinton,et al. Reducing the Dimensionality of Data with Neural Networks , 2006, Science.
[8] Jian-Da Wu,et al. An expert system for the diagnosis of faults in rotating machinery using adaptive order-tracking algorithm , 2009, Expert Syst. Appl..
[9] Janani Shruti Rapur,et al. Prediction of flow blockages and impending cavitation in centrifugal pumps using Support Vector Machine (SVM) algorithms based on vibration measurements , 2018, Measurement.
[10] Dan Chicea,et al. A fast artificial neural network approach for dynamic light scattering time series processing , 2018, Measurement Science and Technology.
[11] Keiichi Yasumoto,et al. Sigma-z random forest, classification and confidence , 2018, Measurement Science and Technology.
[12] Yi-Guang Li,et al. Power Setting Sensor Fault Detection and Accommodation for Gas Turbine Engines Using Artificial Neural Networks , 2016 .
[13] Khashayar Khorasani,et al. Robust sensor fault detection and isolation of gas turbine engines subjected to time-varying parameter uncertainties ☆ , 2016 .
[14] Mohammadreza Tahan,et al. Performance-based health monitoring, diagnostics and prognostics for condition-based maintenance of gas turbines: A review , 2017 .
[15] Bin Yao,et al. The Fault Detection of Aero-engine Sensor Based on Deep Belief Networks , 2016 .
[16] A. Mehrpanahi,et al. A novel dynamic modeling of an industrial gas turbine using condition monitoring data , 2018, Applied Thermal Engineering.
[17] Tao Wang,et al. Real-time Variable Geometry Triaxial Gas Turbine Model for Hardware-in-the-loop Simulation Experiments , 2018 .
[18] Nader Meskin,et al. Multiple-Model Sensor and Components Fault Diagnosis in Gas Turbine Engines Using Autoassociative Neural Networks , 2014 .
[19] Xiaoyan Wang,et al. An efficient VRF system fault diagnosis strategy for refrigerant charge amount based on PCA and dual neural network model , 2018 .
[20] Pingfeng Wang,et al. Failure diagnosis using deep belief learning based health state classification , 2013, Reliab. Eng. Syst. Saf..
[21] Wei Shen,et al. A Novel Gas Turbine Engine Health Status Estimation Method Using Quantum-Behaved Particle Swarm Optimization , 2014 .
[22] Jie Liu,et al. A fault diagnosis method for rotating machinery based on improved variational mode decomposition and a hybrid artificial sheep algorithm , 2019, Measurement Science and Technology.
[23] Lin Lin,et al. Random forests-based extreme learning machine ensemble for multi-regime time series prediction , 2017, Expert Syst. Appl..
[24] Huisheng Zhang,et al. A New Gas Path Fault Diagnostic Method of Gas Turbine Based on Support Vector Machine , 2015 .
[25] Haidong Shao,et al. Rolling bearing fault diagnosis using an optimization deep belief network , 2015 .