Deep Learning For Fault Detection In Transformers Using Vibration Data
暂无分享,去创建一个
S. Bittanti | D. Bartalesi | L. De Maria | S. Garatti | V. Rucconi | B. Valecillos | S. Bittanti | S. Garatti | L. D. Maria | D. Bartalesi | B. Valecillos | V. Rucconi
[1] Stephen Marshall,et al. Activation Functions: Comparison of trends in Practice and Research for Deep Learning , 2018, ArXiv.
[2] Sergio Bittanti,et al. Diagnosis of transformers based on vibration data , 2019, 2019 IEEE 20th International Conference on Dielectric Liquids (ICDL).
[3] Li Zhang,et al. Analysis of Winding Vibration Characteristics of Power Transformers Based on the Finite-Element Method , 2018, Energies.
[4] C. Lee Giles,et al. Overfitting and neural networks: conjugate gradient and backpropagation , 2000, Proceedings of the IEEE-INNS-ENNS International Joint Conference on Neural Networks. IJCNN 2000. Neural Computing: New Challenges and Perspectives for the New Millennium.
[5] Rich Caruana,et al. Overfitting in Neural Nets: Backpropagation, Conjugate Gradient, and Early Stopping , 2000, NIPS.
[6] Roberto Battiti,et al. First- and Second-Order Methods for Learning: Between Steepest Descent and Newton's Method , 1992, Neural Computation.
[7] Paul Rayson,et al. Using J-K fold Cross Validation to Reduce Variance When Tuning NLP Models , 2018, COLING.
[8] Hossain Rahimpour-Bonab,et al. A committee neural network for prediction of normalized oil content from well log data: An example from South Pars Gas Field, Persian Gulf , 2009 .