Apr 7: Introduction to PHM basics (Samir)
Apr 14: The role of data in PHM (Samir)
Apr 21: PHM standards and architectures/frameworks: (Samir)
Apr 28: Machine learning methods - basics, supervised/unsupervised, Bayesian inference (Yairi)
May 12: Deep learning methods - NN, CNN, RNN (Samir)
May 19: Model based methods 1 - Inference for dynamical systems : Kalman filtering, Sequential Monte Carlo (Yairi)
May 26: Anomaly detection - Mahalanobis, SVM, GMM, isolation forest (Samir)
(Jun 2): Model based methods 2 - Learning dynamical systems: EM algorithm, subspace method, Deep neural networks (Yairi)
Jun 9: Fault diagnostics - data-driven vs model based (Samir)
Jun 16: Fault prognostics - data drive vs model based (Samir)
Jun 23: Cost analysis of PHM (Samir)
Jun 30: RUL Regression (Yairi)
Jul 7: The ‘No fault found’ problem (Samir)
Jul 14: Future of PHM technology (Samir)