Metamodel-based simulation optimization: A systematic literature review

JVS do Amaral, JAB Montevechi… - … Modelling Practice and …, 2022 - Elsevier
Over the past few decades, modeling, simulation, and optimization tools have received
attention for their ability to represent and improve complex systems. The use of …

Initialization of metaheuristics: comprehensive review, critical analysis, and research directions

M Sarhani, S Voß, R Jovanovic - International Transactions in …, 2023 - Wiley Online Library
Initialization of metaheuristics is a crucial topic that lacks a comprehensive and systematic
review of the state of the art. Providing such a review requires in‐depth study and …

[HTML][HTML] Physics-informed deep learning for simultaneous surrogate modeling and PDE-constrained optimization of an airfoil geometry

Y Sun, U Sengupta, M Juniper - Computer Methods in Applied Mechanics …, 2023 - Elsevier
We use a physics-informed neural network (PINN) to simultaneously model and optimize the
flow around an airfoil to maximize its lift to drag ratio. The parameters of the airfoil shape are …

Modelling for digital twins—potential role of surrogate models

A Barkanyi, T Chovan, S Nemeth, J Abonyi - Processes, 2021 - mdpi.com
The application of white box models in digital twins is often hindered by missing knowledge,
uncertain information and computational difficulties. Our aim was to overview the difficulties …

A review of image-based simulation applications in high-value manufacturing

LM Evans, E Sözümert, BE Keenan, CE Wood… - … Methods in Engineering, 2023 - Springer
Abstract Image-Based Simulation (IBSim) is the process by which a digital representation of
a real geometry is generated from image data for the purpose of performing a simulation …

Data-driven optimization for process systems engineering applications

D Van De Berg, T Savage, P Petsagkourakis… - Chemical Engineering …, 2022 - Elsevier
Most optimization problems in engineering can be formulated as 'expensive'black box
problems whose solutions are limited by the number of function evaluations. Frequently …

A survey of machine learning techniques in structural and multidisciplinary optimization

P Ramu, P Thananjayan, E Acar, G Bayrak… - Structural and …, 2022 - Springer
Abstract Machine Learning (ML) techniques have been used in an extensive range of
applications in the field of structural and multidisciplinary optimization over the last few …

Real-time artificial intelligence for accelerator control: A study at the Fermilab Booster

J St. John, C Herwig, D Kafkes, J Mitrevski… - … Review Accelerators and …, 2021 - APS
We describe a method for precisely regulating the gradient magnet power supply (GMPS) at
the Fermilab Booster accelerator complex using a neural network trained via reinforcement …

Surrogate-based optimization for mixed-integer nonlinear problems

SH Kim, F Boukouvala - Computers & Chemical Engineering, 2020 - Elsevier
Simulation-based optimization using surrogate models enables decision-making through
the exchange of data from high-fidelity models and development of approximations. Many …

Operability and control in process intensification and modular design: Challenges and opportunities

EN Pistikopoulos, Y Tian, R Bindlish - AIChE Journal, 2021 - Wiley Online Library
In this article, the importance of considering operability and control criteria in the analysis
and design of intensified and modular processes is discussed. We first analyze the impact …