Project Details
FOR 5359: KI-FOR: Deep Learning on Sparse Chemical Process Data
Subject Area
Computer Science, Systems and Electrical Engineering
Thermal Engineering/Process Engineering
Thermal Engineering/Process Engineering
Term
since 2022
Project identifier
Deutsche Forschungsgemeinschaft (DFG) - Project number 459419731
This research unit aims to establish deep-learning methods in chemical process engineering. The central hypothesis of our research is that deep learning opens up previously unexplored avenues in areas critical to chemical process engineering, such as anomaly detection, state prediction, decision making, and autonomous processes. So far, the development of such methods has been hampered because data from chemical plants is generally sparse and, to make matters worse, unavailable in the open literature. This research unit will therefore conduct dedicated experiments (on both continuous and discontinuous chemical processes) to generate the required large datasets. As those experiments are time-consuming and costly, data augmentation is essential, which we will accomplish through a combination of learning-based and knowledge-based methods, including process simulation. The new algorithms and data will be made publicly available, along with the knowledge created by the research unit. During its first funding period, the research unit will focus on the application of deep learning to detect anomalies in chemical processes, a field where anomaly detection is of paramount importance, e.g., for hazard mitigation and environmental protection. Besides detection, we also consider the exploration and explanation of anomalies, as well as the verification of detectors. The novel methods for deep anomaly detection on time series developed by the research unit will be not only useful in chemical engineering but also in many other fields. The research unit builds on a unique structure that has recently been established at TU Kaiserslautern by the appointment of a tandem of junior professors, one in computer science and one in chemical engineering, a collaboration that we want to establish on a long-term basis.
DFG Programme
Research Units
International Connection
USA
Projects
- Coordination Funds (Applicant Kloft, Marius )
- Data Generation and Knowledge-based Augmentation: Batch Distillation (Applicants Bortz, Michael ; Hasse, Hans ; Jirasek, Fabian )
- Data Generation and Knowledge-based Augmentation: Continuous OME Production (Applicant Burger, Jakob )
- Deep Anomaly Detection on Time Series (Applicant Kloft, Marius )
- Deep Time Series Generation Using Domain Knowledge (Applicant Fellenz, Sophie )
- Exploration and Explanation of Anomalies in Multivariate Time Series (Applicant Leitte, Heike )
- Verification of Anomaly Detectors (Applicant Neider, Daniel )
Spokesperson
Professor Dr. Marius Kloft