N-CMAPSS data preparation for Machine Learning and Deep Learning models. (Python source code for new CMAPSS dataset)
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Updated
Apr 13, 2023 - Jupyter Notebook
N-CMAPSS data preparation for Machine Learning and Deep Learning models. (Python source code for new CMAPSS dataset)
PyTorch implementation of CNN for remaining useful life prediction. Inspired by Babu, G. S., Zhao, P., & Li, X. L. (2016, April). Deep convolutional neural network-based regression approach for estimation of remaining useful life. In International conference on database systems for advanced applications (pp. 214-228). Springer, Cham.
Remaining Useful Life estimation and sensor data generation by VAE and diffusion model on C-MAPSS dataset.
Evolutionary Neural Architecture Search for Remaining Useful Life Prediction
Bayesian deep learning for remaining useful life estimation via Stein variational gradient descent
Bayesian Deep Learning for Remaining Useful Life Estimation of Machine Tool Components
Multi-Objective Optimization of ELM for RUL Prediction
Feature clustering and XIA for RUL estimation
Fault Detection Of JET Engine with Reccurent Neural networks
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