IT in Manufacturing


Digital twin for refinery production

June 2021 IT in Manufacturing

Digitalisation is fundamental to Repsol’s strategy for the future. To meet emerging challenges, the company has developed an ambitious program comprising a multitude of projects.

Cristina Aguilar Garcia, Optimization and Simulation advisor at Repsol, described the project, in which a digital twin has improved the accuracy and scope of the refinery linear programming (LP) model that makes decisions regarding crude feedstock purchasing and refinery unit operations.

Key objectives

Repsol devised the project to improve the accuracy and frequency of updates for its planning models in order to improve decision-making. A cross-functional team consisting of personnel from Repsol and KBC (a Yokogawa company) developed the technology. The initial project took place at a refinery in northern Spain.

The team deployed a digital twin that combines KBC’s Petro-SIM first principles model with the OSIsoft PI System historian and dashboards. Key objectives included simplifications in terms of workflow, the planning model and model evaluation. By automating data collection and processing, the digital twin enables more focus on analysing results rather than generating data. It also provides indicators that can be monitored at a glance to check the health of LP vectors and the simulation model compared to actual process conditions.

To simplify the planning model, the digital twin can, if necessary, update the LP vectors based on the rigorous Petro-SIM model. The digital twin also provides model assurance through early detection and notification of relevant deviations between actual data and LP vector results.

A ‘single version of the truth’ was another key objective. The digital twin provides access not only to the process and laboratory data, but also to derived indicators that can be used throughout the organisation.

Implementing the solution

The key technologies are Petro-SIM and PI Vision. Petro-SIM is a digital twin that is based on a first principles model originally used for process simulation. Deployed in a back-casting prediction mode, it provides the calculation of critical operating parameters that allow an improved understanding and monitoring of the process. It is sensitive to changes in feeds, operating conditions, catalyst used and fractionation. It also provides updated calibration generation for the digital twin.

Petro-SIM generates indicators to monitor input data quality, reality vs. model results (LP vector and simulation model) and health of the tool. If there are deviations, it also generates new LP vectors based on monitoring criteria. The model is automatically run on a regular basis as required, typically daily or weekly. Data transfers between Petro-SIM and the PI System are bi-directional.

The differences between a digital twin and a traditional simulator are worthy of review. The digital twin is a replication of the actual process and it allows for improved operation and understanding of the facility. While a simulator provides an accurate representation of a particular operating case, the digital twin is an accurate representation of the asset over its full range of operation. Rather than a snapshot in time, the digital twin captures the full history and the future of the asset.

Instead of being built on an ad-hoc basis to answer a particular question, the digital twin is automated. As a centralised, single version of the truth, the twin is used by everyone. Outputs are delivered directly to the business and enable strong corporate governance. The simulator, on the other hand, is typically owned and used only by isolated departments or groups.

PI Vision provides dashboards that can incorporate results from Petro-SIM alongside other PI data. The displays were developed to allow users to best follow the desired workflow. The digital twin generates a great deal of information that various stakeholders could use in many ways.

Conclusion

Aside from the experience of subject matter experts, most decision-making activities related to improving plant profitability – such as scheduling, planning, real-time operations and retrofitting – rely on a process model. Changing from traditional simulation to a digital twin solution assures the best decision-making over time.

The digital twin can accelerate the identification and resolution of unit issues and improve productivity. The centralised solution provides information to all stakeholders throughout the organisation with no need for advanced knowledge of the simulation model. The digital twin provides a unified template from which all teams and business units can discuss issues such as model updates and data quality. It constitutes a single source of the truth that drives the alignment of decisions and actions across the value chain.


Credit(s)



Share this article:
Share via emailShare via LinkedInPrint this page

Further reading:

Why choose between Capex and Opex if you can Totex?
Schneider Electric South Africa IT in Manufacturing
In a sector marked by cyclical demand, high capital intensity, and increasing regulatory and sustainability pressures, mining, minerals and metals (MMM) companies are re-evaluating how they approach procurement and investment.

Read more...
AI and the smart factory
Schneider Electric South Africa IT in Manufacturing
Imagine walking into a factory where machines can think ahead, predict problems before they happen and automatically make adjustments to realise peak performance. This isn’t science fiction, it’s happening right now as AI continues to transform how we run industrial operations.

Read more...
Why your supply chain should be a competitive advantage
Schneider Electric South Africa IT in Manufacturing
The last five years have placed unprecedented strain on global supply chains. Leading companies are turning the challenge into an opportunity to transform their supply chains into a competitive advantage.

Read more...
Why AI will never truly understand machines
Wearcheck IT in Manufacturing
Cutting-edge technology and solutions powered by AI are embraced by specialist condition monitoring company, WearCheck, where the extreme accuracy of data used to assess and diagnose machine health is paramount.

Read more...
Buildings and microgrids for a greener future
Schneider Electric South Africa IT in Manufacturing
Buildings are no longer passive consumers of power. Structures of almost every size are evolving into dynamic energy ecosystems capable of generating, storing and distributing their own electricity. Forming part of this exciting transformation are microgrids.

Read more...
Traditional data centres are not fit for purpose
IT in Manufacturing
Traditional data centre designs are falling short, with nearly half of IT leaders admitting their current infrastructure does not support energy or carbon-reduction goals. New research commissioned by Lenovo reveals that data centre design must evolve to future-proof businesses.

Read more...
AI agents for digital environment management in SA
IT in Manufacturing
The conversation about artificial intelligence in South Africa has shifted rapidly over the past year. Among the technologies changing the pace of business are AI agents - autonomous, task-driven systems designed to operate with limited human input.

Read more...
AI-powered maintenance in future-ready data centres
Schneider Electric South Africa IT in Manufacturing
The data centre marketplace often still relies on outdated maintenance methods to manage mission-critical equipment. Condition-Based Maintenance (CBM) is powered by AI and is fast becoming a necessity in ensuring both competitiveness and resilience.

Read more...
Powering up data centre mega development
IT in Manufacturing
Parker Hannifin has secured a major contract to supply key equipment for nearly 30 aeroderivative gas turbines powering a new hyperscale data centre in Texas.

Read more...
Building resilient supply chains through smarter e-procurement
RS South Africa IT in Manufacturing
In a time of constant disruption, from supply chain uncertainty to rising operational costs, businesses that embrace digital procurement are better positioned to stay competitive and resilient.

Read more...









While every effort has been made to ensure the accuracy of the information contained herein, the publisher and its agents cannot be held responsible for any errors contained, or any loss incurred as a result. Articles published do not necessarily reflect the views of the publishers. The editor reserves the right to alter or cut copy. Articles submitted are deemed to have been cleared for publication. Advertisements and company contact details are published as provided by the advertiser. Technews Publishing (Pty) Ltd cannot be held responsible for the accuracy or veracity of supplied material.




© Technews Publishing (Pty) Ltd | All Rights Reserved