Periodic Reporting for period 1 - FAULT-LEARNING (Online Class Imbalance Learning for Fault Diagnosis of Critical Infrastructure Systems)
Período documentado: 2019-10-01 hasta 2021-09-30
- A novel supervised learning method called Adaptive REBAlancing (AREBA) that is robust to class imbalance and effective under concept drift conditions.
- A novel semi-supervised learning method called ActiSiamese that uses a specific type of semi-supervised learning called active learning, and a special type of neural networks called Siamese networks. ActiSiamese not only it addresses imbalance and drift, but it requires considerably less human input / supervision.
- A novel unsupervised learning method called AE-STREAM that uses a special type of a neural network called AutoEncoder (AE). The proposed AE-STREAM addresses imbalance and drift without any supervision.
- The proposed methods have been tested under realistic operating conditions using physical CI Testbeds for road anomalies detection and water leakage detection.