Emerson has announced the deployment of an AI-driven optimisation solution for Aramco. The collaboration commenced with the integration of Emerson’s Aspen Hybrid Models into Aramco’s existing refinery planning framework, resulting in the creation of one of the world’s largest multi-site, multi-period optimisation models.
By combining first-principles models, deep
domain expertise, and purpose-built industrial AI, Aspen Hybrid Models capture
nonlinear relationships in yield and quality responses, significantly enhancing
the accuracy of refinery planning models.
The deployment has already achieved yield
and quality prediction accuracy of up to 98.5 per cent in key refinery units.
These hybrid AI models have been
implemented in Continuous Catalyst Regeneration (CCR) and Platformer Units,
where they are enabling more precise feedstock blending, minimising gaps
between planning and execution, and improving the accuracy of margin
forecasting across Aramco’s global refining network.
Current efforts are focused on expanding
the hybrid modelling approach to hydrocracker units across Aramco’s assets.
This expansion is expected to further
enhance model accuracy and demonstrate the scalability and robustness of this
AI-driven optimisation strategy across the enterprise.
"This deployment represents a
significant milestone in Aramco's AI strategy and our long-standing
relationship with Emerson," said Ahmad Alkudmani, director of the global
optimiser department at Aramco. "We are committed to leveraging innovative
technologies for smarter, more efficient refining optimisation. With improved
model accuracy, we are enhancing planning decisions, reducing the manual
adjustments required from our engineers, and uncovering new value across our
global assets."
Key benefits Aramco aims to achieve with
Aspen Hybrid Models include:
- 98.5 per cent yield and quality prediction
accuracy – Substantially increasing yield volume and enhancing stream quality
across diverse feedstocks, operating conditions, and throughputs
- Efficiency through optimised feedstock
blending – Diversifying feedstock selection and blending recipes to enable more
profitable and sustainable operations
- Reduced planning-execution gaps – Minimising
discrepancies between plans and actual plant performance, reducing the need for
manual adjustments
- Enhanced model accuracy – Capturing complex
non-linearities in critical unit operations such as reactors
- Improved operational efficiency –
Automating model updates and reducing manual tuning requirements
- Scalable global solution – Maintaining
model applicability across a wide range of refinery operations worldwide
Aramco is using Aspen Hybrid Models built
and deployed in Emerson’s AspenTech Performance Engineering and Manufacturing
and Supply Chain product suites.
As a result, Aramco was able to create
highly accurate nonlinear optimisations using thousands of converged simulation
cases built upon rigorous first-principles models calibrated with actual plant
data.
The approach provides Aramco with a
scalable, robust tool for global refinery planning.
"Aramco continues to set the standard
for operational excellence through digital innovation," said Claudio Fayad,
chief technology officer of Emerson's Aspen Technology business. "This
deployment of AI-driven Aspen Hybrid Models to optimise complex, multi-site,
multi-period planning workflows demonstrates the tangible value of combining
deep domain expertise with advanced AI. We're excited to expand our strategic
relationship with Aramco as they advance their digital transformation goals." -OGN/TradeArabia News Service

