Failure Detection
Failure detection research focuses on reliably identifying malfunctions in diverse systems, from spacecraft to autonomous vehicles, aiming to improve safety and efficiency. Current efforts leverage machine learning, particularly deep learning architectures like convolutional neural networks (CNNs) and recurrent neural networks (RNNs, such as LSTMs), along with ensemble methods and novel approaches like leveraging large language models for improved interpretability and failure explanation. This field is crucial for ensuring the safe and reliable operation of complex systems across various sectors, impacting areas such as aerospace, manufacturing, and healthcare through improved system monitoring and predictive maintenance.
Papers
PCAPVision: PCAP-Based High-Velocity and Large-Volume Network Failure Detection
Lukasz Tulczyjew, Ihor Biruk, Murat Bilgic, Charles Abondo, Nathanael Weill
Evaluating the Role of Data Enrichment Approaches Towards Rare Event Analysis in Manufacturing
Chathurangi Shyalika, Ruwan Wickramarachchi, Fadi El Kalach, Ramy Harik, Amit Sheth