2022 Spring Meeting and 18th Global Congress on Process Safety Proceedings
(155a) Process Digital Twin As an Enabler for Improving Operational Excellence in Ethylene Production Unit
Conventionally process models and simulation tools have been utilized for design, engineering and offline analysis. Multiple models of the same facility, create model maintenance and quality assurance issues making them futile when needed the most for sensitivity analysis, optimization, or revamp studies. On the other hand Process Digital Twin, a result of streamlined collaboration provided by bridging virtual and physical environments coupled with cognitive data enables engineers and process designers to build an immersive virtual replica for first-hand information on what is happening across the entire plant. Using process digital twins Engineers can solve problems by reasoning alongside process models while they are in-operation, whether they are working on the field or in a remote location. Thus Process Digital Twin not only serve as the single source for design, optimization, process control, virtual testing, predictive maintenance, and on-stream estimation of a physical process plant.
This paper discusses the development of a Process Digital Twin tailored for an Ethylene Production Unit of SABIC that dynamically updates and adjusts in accordance with the real time operating data. Petro-SIM® process modelling and simulation tool has unique functionality to model associated utility systems on a unified platform that makes model development, validation, and updating simple. Integrated process and utility model provided a holistic view of the entire plant in real time. Purpose built utilities enabled plant engineers and operators to configure desired process (yield, losses etc.,) as well as sustainability performance Indicators within the Digital Twin architecture to monitor plant performance against business targets. Key aspect of process digital twin is its flexibility to convert it for conducting various objectives functions like equipment health check, bottleneck identification and overall optimization considering variable feedstock quantity / quality, operating and specific constraints in individual unit operations.