A systematic method of remaining useful life estimation based on physics-informed graph neural networks with multisensor data
暂无分享,去创建一个
Huai Su | Jinjun Zhang | Lin Fan | Zhaoming Yang | E. Zio | Shiliang Peng | Zhe Yang | Yuxuan He
[1] Yingqian Zhang,et al. Attention and Long Short-Term Memory Network for Remaining Useful Lifetime Predictions of Turbofan Engine Degradation , 2023, International Journal of Prognostics and Health Management.
[2] E. Zio,et al. Gas liquid cylindrical cyclone flow regime identification using machine learning combined with experimental mechanism explanation , 2022, Petroleum Science.
[3] Xiangyi Du,et al. How to improve machine learning models for lithofacies identification by practical and novel ensemble strategy and principles , 2022, Petroleum Science.
[4] Hongrui Cao,et al. A gated graph convolutional network with multi-sensor signals for remaining useful life prediction , 2022, Knowl. Based Syst..
[5] Lei Cheng,et al. Prediction of gas concentration evolution with evolutionary attention-based temporal graph convolutional network , 2022, Expert Syst. Appl..
[6] Lu Liu,et al. Aircraft engine remaining useful life estimation via a double attention-based data-driven architecture , 2022, Reliab. Eng. Syst. Saf..
[7] Shangsheng Yan,et al. A comparison of deep learning methods for seismic impedance inversion , 2022, Petroleum Science.
[8] Enrico Zio,et al. Prognostics and health management: A review from the perspectives of design, development and decision , 2022, Reliab. Eng. Syst. Saf..
[9] Yong Zhang,et al. Health status assessment and remaining useful life prediction of aero-engine based on BiGRU and MMoE , 2021, Reliab. Eng. Syst. Saf..
[10] Yi Qin,et al. Multicellular LSTM-based deep learning model for aero-engine remaining useful life prediction , 2021, Reliab. Eng. Syst. Saf..
[11] E. Zio,et al. Optimization of the Operation and Maintenance of Renewable Energy Systems by Deep Reinforcement Learning , 2021, SSRN Electronic Journal.
[12] Enrico Zio,et al. Prognostics and Health Management (PHM): Where are we and where do we (need to) go in theory and practice , 2021, Reliab. Eng. Syst. Saf..
[13] Andreas Theissler,et al. Challenges of machine learning-based RUL prognosis: A review on NASA's C-MAPSS data set , 2021, 2021 26th IEEE International Conference on Emerging Technologies and Factory Automation (ETFA ).
[14] Fuchuan Zeng,et al. A deep attention residual neural network-based remaining useful life prediction of machinery , 2021 .
[15] Matthew J. Darr,et al. A physics-informed deep learning approach for bearing fault detection , 2021, Eng. Appl. Artif. Intell..
[16] Peng Ding,et al. Transfer learning for remaining useful life prediction of multi-conditions bearings based on bidirectional-GRU network , 2021, Measurement.
[17] Mingyu Fan,et al. AST-GNN: An attention-based spatio-temporal graph neural network for Interaction-aware pedestrian trajectory prediction , 2021, Neurocomputing.
[18] Henderi Henderi,et al. Comparison of Min-Max normalization and Z-Score Normalization in the K-nearest neighbor (kNN) Algorithm to Test the Accuracy of Types of Breast Cancer , 2021 .
[19] Yuxiong Li,et al. A Double-Channel Hybrid Deep Neural Network Based on CNN and BiLSTM for Remaining Useful Life Prediction , 2020, Sensors.
[20] Pier Carlo Berri,et al. Computational framework for real-time diagnostics and prognostics of aircraft actuation systems , 2020, Comput. Ind..
[21] Yong Yu,et al. Averaged Bi-LSTM networks for RUL prognostics with non-life-cycle labeled dataset , 2020, Neurocomputing.
[22] Weifeng Lv,et al. LSTM variants meet graph neural networks for road speed prediction , 2020, Neurocomputing.
[23] Wennian Yu,et al. An improved similarity-based prognostic algorithm for RUL estimation using an RNN autoencoder scheme , 2020, Reliab. Eng. Syst. Saf..
[24] Wei Zhao,et al. Remaining useful life prediction using multi-scale deep convolutional neural network , 2020, Appl. Soft Comput..
[25] Chetan S. Kulkarni,et al. Fusing Physics-based and Deep Learning Models for Prognostics , 2020, Reliab. Eng. Syst. Saf..
[26] Yu Zheng,et al. An ensemble framework based on convolutional bi-directional LSTM with multiple time windows for remaining useful life estimation , 2020, Comput. Ind..
[27] Deepak Gupta,et al. Robust regularized extreme learning machine with asymmetric Huber loss function , 2020, Neural Computing and Applications.
[28] Yaguo Lei,et al. Deep separable convolutional network for remaining useful life prediction of machinery , 2019 .
[29] Yang Ji,et al. A Weighted Deep Domain Adaptation Method for Industrial Fault Prognostics According to Prior Distribution of Complex Working Conditions , 2019, IEEE Access.
[30] Wennian Yu,et al. Remaining useful life estimation using a bidirectional recurrent neural network based autoencoder scheme , 2019, Mechanical Systems and Signal Processing.
[31] Amir Asif,et al. A multimodal and hybrid deep neural network model for Remaining Useful Life estimation , 2019, Comput. Ind..
[32] Oliver Schütze,et al. A Neural Network-Evolutionary Computational Framework for Remaining Useful Life Estimation of Mechanical Systems , 2019, Neural Networks.
[33] Qian Liu,et al. Gated recurrent unit based recurrent neural network for remaining useful life prediction of nonlinear deterioration process , 2019, Reliab. Eng. Syst. Saf..
[34] Lei Ren,et al. Multi-scale Dense Gate Recurrent Unit Networks for bearing remaining useful life prediction , 2019, Future Gener. Comput. Syst..
[35] Houxiang Zhang,et al. Remaining useful life predictions for turbofan engine degradation using semi-supervised deep architecture , 2019, Reliab. Eng. Syst. Saf..
[36] Huihui Miao,et al. Joint Learning of Degradation Assessment and RUL Prediction for Aeroengines via Dual-Task Deep LSTM Networks , 2019, IEEE Transactions on Industrial Informatics.
[37] Soumaya Yacout,et al. Bidirectional handshaking LSTM for remaining useful life prediction , 2019, Neurocomputing.
[38] Robert X. Gao,et al. Deep learning and its applications to machine health monitoring , 2019, Mechanical Systems and Signal Processing.
[39] Peng Wang,et al. Long short-term memory for machine remaining life prediction , 2018, Journal of Manufacturing Systems.
[40] Lei Ren,et al. Bearing remaining useful life prediction based on deep autoencoder and deep neural networks , 2018, Journal of Manufacturing Systems.
[41] Takehisa Yairi,et al. A review on the application of deep learning in system health management , 2018, Mechanical Systems and Signal Processing.
[42] Aleksander Madry,et al. How Does Batch Normalization Help Optimization? (No, It Is Not About Internal Covariate Shift) , 2018, NeurIPS.
[43] Yaguo Lei,et al. Machinery health prognostics: A systematic review from data acquisition to RUL prediction , 2018 .
[44] Konstantin Eckle,et al. A comparison of deep networks with ReLU activation function and linear spline-type methods , 2018, Neural Networks.
[45] Xiang Li,et al. Remaining useful life estimation in prognostics using deep convolution neural networks , 2018, Reliab. Eng. Syst. Saf..
[46] Hongwen He,et al. Long Short-Term Memory Recurrent Neural Network for Remaining Useful Life Prediction of Lithium-Ion Batteries , 2018, IEEE Transactions on Vehicular Technology.
[47] Li Lin,et al. Remaining useful life estimation of engineered systems using vanilla LSTM neural networks , 2018, Neurocomputing.
[48] Bo Peng,et al. Cycle life estimation of lithium-ion polymer batteries using artificial neural network and support vector machine with time-resolved thermography , 2017, Microelectron. Reliab..
[49] Pietro Liò,et al. Graph Attention Networks , 2017, ICLR.
[50] Pierre Vandergheynst,et al. Geometric Deep Learning: Going beyond Euclidean data , 2016, IEEE Signal Process. Mag..
[51] Li Lin,et al. Fault diagnosis and remaining useful life estimation of aero engine using LSTM neural network , 2016, 2016 IEEE International Conference on Aircraft Utility Systems (AUS).
[52] Wenjing Jin,et al. Enhanced Restricted Boltzmann Machine With Prognosability Regularization for Prognostics and Health Assessment , 2016, IEEE Transactions on Industrial Electronics.
[53] Pedro Paulo Balestrassi,et al. Design of experiments and focused grid search for neural network parameter optimization , 2016, Neurocomputing.
[54] Taejung Yeo,et al. A novel multistage Support Vector Machine based approach for Li ion battery remaining useful life estimation , 2015 .
[55] Emmanuel Ramasso,et al. Investigating computational geometry for failure prognostics , 2014, International Journal of Prognostics and Health Management.
[56] Enrico Zio,et al. Fatigue crack growth estimation by relevance vector machine , 2012, Expert Syst. Appl..
[57] Abhinav Saxena,et al. Damage propagation modeling for aircraft engine run-to-failure simulation , 2008, 2008 International Conference on Prognostics and Health Management.
[58] Daming Lin,et al. A review on machinery diagnostics and prognostics implementing condition-based maintenance , 2006 .
[59] Lutz Prechelt,et al. Automatic early stopping using cross validation: quantifying the criteria , 1998, Neural Networks.
[60] Ruqiang Yan,et al. The emerging graph neural networks for intelligent fault diagnostics and prognostics: A guideline and a benchmark study , 2022, Mechanical Systems and Signal Processing.
[61] Abdallah Chehade,et al. A dual-LSTM framework combining change point detection and remaining useful life prediction , 2021, Reliab. Eng. Syst. Saf..
[62] Kai Goebel,et al. More effective prognostics with elbow point detection and deep learning , 2021 .
[63] Hongfu Zuo,et al. Prediction of remaining useful life of multi-stage aero-engine based on clustering and LSTM fusion , 2021, Reliab. Eng. Syst. Saf..
[64] Ruqiang Yan,et al. Hierarchical attention graph convolutional network to fuse multi-sensor signals for remaining useful life prediction , 2021, Reliab. Eng. Syst. Saf..
[65] Tangbin Xia,et al. A hybrid prognostic method based on gated recurrent unit network and an adaptive Wiener process model considering measurement errors , 2021 .
[66] Minping Jia,et al. A BiGRU method for remaining useful life prediction of machinery , 2021 .
[67] A. Wills,et al. Physics-Informed Machine , 2021 .
[68] Ekachai Phaisangittisagul,et al. An Analysis of the Regularization Between L2 and Dropout in Single Hidden Layer Neural Network , 2016, 2016 7th International Conference on Intelligent Systems, Modelling and Simulation (ISMS).
[69] Nitish Srivastava,et al. Dropout: a simple way to prevent neural networks from overfitting , 2014, J. Mach. Learn. Res..