AI RESEARCH

Batch Distillation Data for Developing Machine Learning Anomaly Detection Methods

arXiv CS.LG

ArXi:2510.18075v2 Announce Type: replace Machine learning (ML) holds great potential to advance anomaly detection (AD) in chemical processes. However, the development of ML-based methods is hindered by the lack of openly available experimental data. To address this gap, we have set up a laboratory-scale batch distillation plant and operated it to generate an extensive experimental database, covering fault-free experiments and experiments in which anomalies were intentionally induced, for