%0 Generic %A Charisi, Nikoleta Dimitra %A Hopman, Hans %A Kana, Austin %D 2024 %T Data underlying chapter 3 of the PhD dissertation: Multi-fidelity probabilistic design framework for early-stage design of novel vessels %U %R 10.4121/1dcda9bd-4ce6-4e0c-9b84-9292d4e101d0.v1 %K conceptual design %K data-driven design %K design space exploration %K multi-fidelity Gaussian processes %K compositional kernels %X

This repository contains the code and data supporting the results presented in Chapter 3 of the dissertation "Multi-Fidelity Probabilistic Design Framework for Early-Stage Design of Novel Vessels" and the paper "Multi-fidelity design framework integrating compositional kernels to facilitate early-stage design exploration of complex systems". The research explores the integration of compositional kernels into the autoregressive scheme (AR1) of Multi-Fidelity Gaussian Processes, aiming to enhance the predictive accuracy and reduce uncertainty in design space estimation. The effectiveness of this method is assessed by applying it to 5 benchmark problems and a simplified design scenario of a cantilever beam.


The data include: (1) the Ansys model of the cantilever beam, (2) the simulation data, (3) the data associated with the analyzed cases, and (4)the Python scripts can be found in this gitlab repository.

%I 4TU.ResearchData