Litcius/Paper detail

A hybrid framework for process monitoring: Enhancing data-driven methodologies with state and parameter estimation

Francesco Destro, Pierantonio Facco, Salvador García‐Muñoz, Fabrizio Bezzo, Massimiliano Barolo

2020Journal of Process Control41 citationsDOIOpen Access PDF

Abstract

In this study we bridge traditional standalone data-driven and knowledge-driven process monitoring approaches by proposing a novel hybrid framework that exploits the advantages of both simultaneously. Namely, we design a process monitoring system based on a data-driven model that includes two different data types: i) “actual” data coming from sensor measurements, and ii) “virtual” data coming from a state estimator, based on a first-principles model of the system under investigation. We test the proposed approach on two simulated case studies: a continuous polycondensation process for the synthesis of poly-ethylene terephthalate, and a fed-batch fermentation process for the manufacturing of penicillin. The hybrid monitoring model shows superior fault detection and diagnosis performances with respect to conventional monitoring techniques, even when the first-principles model is relatively simple and process/model mismatch exists.

Topics & Concepts

Process (computing)ExploitProcess modelingFault detection and isolationComputer scienceEstimatorBridge (graph theory)State (computer science)Control engineeringWork in processData miningEngineeringArtificial intelligenceAlgorithmMathematicsInternal medicineComputer securityActuatorStatisticsOperating systemMedicineOperations managementFault Detection and Control SystemsAdvanced Control Systems OptimizationControl Systems and Identification