LAPSE:2025.0582
Conference Presentation
LAPSE:2025.0582
Nonmyopic Bayesian process optimization with a finite budget
July 11, 2025
Abstract
Optimization under uncertainty is inherent to many PSE applications ranging from process design to RTO. Reaching process true optima often involves learning from experimentation, but actual experiments involve a cost (economic, resources, time) and a budget limit usually exists. Finding the best trade-off on cumulative process performance and experimental cost over a finite budget is a Partially Observable Markov Decision Process (POMDP), known to be computationally intractable. This paper follows the nonmyopic Bayesian optimization (BO) approximation to POMDPs developed by the machine-learning community, that naturally enables the use of hybrid plant surrogate models formed by fundamental laws and Gaussian processes (GP). Although nonmyopic BO using GPs may look more tractable, evaluating multi-step decision trees to find the best first-stage candidate action to apply is still expensive with evolutionary or NLP optimizers. Hence, we propose modelling the value function of the first-stage decision also with a GP, whose data will correspond to virtual evaluations of second-stage decision trees build upon myopic rollouts. Thus, the nonmyopic initial decision can be efficiently optimized via BO and the virtually learned value function. Effectiveness of the approach is demonstrated in a wide benchmark with synthetically generated functions as well as to optimize small batch production with a chemical reactor.
Suggested Citation
Pitarch JL, Armesto L, Sala A. Nonmyopic Bayesian process optimization with a finite budget. (2025). LAPSE:2025.0582
Author Affiliations
Pitarch JL: Universitat Politècnica de Valencia [ORCID] [Google Scholar]
Armesto L: Universitat Politècnica de Valencia [ORCID] [Google Scholar]
Sala A: Universitat Politècnica de Valencia [ORCID] [Google Scholar]
[Login] to see author email addresses.
Conference Title
ESCAPE 35 - European Symposium on Computer Aided Process Engineering
Conference Place
Gent (Belgium)
Year
2025
Publication Date
2025-07-09
ISSN
2818-4734
Version Comments
Original Submission
Record Map
Conference Presentation

LAPSE:2025.0582
This Record
Published Article

LAPSE:2025.0398
Nonmyopic Bayesian process optimiza...
Download
Files
Jul 11, 2025
Presentation
License
CC BY-SA 4.0
Meta
Record Statistics
Record Views
407
Version History
[v1] (Original Submission)
Jul 11, 2025
 
Verified by curator on
Jul 12, 2025
This Version Number
v1
Citations
Most Recent
This Version
URL Here
https://psecommunity.org/LAPSE:2025.0582
 
Record Owner
Jose Luis
Links to Related Works
Directly Related to This Work
Conference paper