| Literature DB >> 30386002 |
Melis Onel1,2, Chris A Kieslich3,1,2, Yannis A Guzman4,1,2, Christodoulos A Floudas1,2, Efstratios N Pistikopoulos1,2.
Abstract
This paper presents a novel data-driven framework for process monitoring in batch processes, a critical task in industry to attain a safe operability and minimize loss of productivity and profit. We exploit high dimensional process data with nonlinear Support Vector Machine-based feature selection algorithm, where we aim to retrieve the most informative process measurements for accurate and simultaneous fault detection and diagnosis. The proposed framework is applied to an extensive benchmark dataset which includes process data describing 22,200 batches with 15 faults. We train fault and time-specific models on the prealigned batch data trajectories via three distinct time horizon approaches: one-step rolling, two-step rolling, and evolving which varies the amount of data incorporation during modeling. The results show that two-step rolling and evolving time horizon approaches perform superior to the other. Regardless of the approach, proposed framework provides a promising decision support tool for online simultaneous fault detection and diagnosis for batch processes.Entities:
Keywords: Big Data; Data-driven Modeling; Feature Selection; Process Monitoring; Support Vector Machines
Year: 2018 PMID: 30386002 PMCID: PMC6205516 DOI: 10.1016/j.compchemeng.2018.03.025
Source DB: PubMed Journal: Comput Chem Eng ISSN: 0098-1354 Impact factor: 3.845