Data-Based Design of Multi-Model Inferential Sensors
This work addresses the need for more accurate linear inferential sensors in industrial settings like petrochemical refineries, representing an incremental advancement over existing design techniques.
The paper tackles the problem of designing accurate inferential sensors for nonlinear industrial processes by proposing two novel multi-model approaches, demonstrating substantial improvements over state-of-the-art single- and multi-model sensors on a real-world petrochemical refinery unit.
This paper deals with the problem of inferential (soft) sensor design. The nonlinear character of industrial processes is usually the main limitation to designing simple linear inferential sensors with sufficient accuracy. In order to increase the inferential sensor predictive performance and yet to maintain its linear structure, multi-model inferential sensors represent a straightforward option. In this contribution, we propose two novel approaches for the design of multi-model inferential sensors aiming to mitigate some drawbacks of the state-of-the-art approaches. For a demonstration of the developed techniques, we design inferential sensors for a Vacuum Gasoil Hydrogenation unit, which is a real-world petrochemical refinery unit. The performance of the multi-model inferential sensor is compared against various single-model inferential sensors and the current (referential) inferential sensor used in the refinery. The results show substantial improvements over the state-of-the-art design techniques for single-/multi-model inferential sensors.