TY - DATA T1 - Data underlying chapter 3 of the PhD dissertation: Multi-fidelity probabilistic design framework for early-stage design of novel vessels PY - 2024/11/25 AU - Nikoleta Dimitra Charisi AU - Hans Hopman AU - Austin Kana UR - DO - 10.4121/1dcda9bd-4ce6-4e0c-9b84-9292d4e101d0.v1 KW - conceptual design KW - data-driven design KW - design space exploration KW - multi-fidelity Gaussian processes KW - compositional kernels N2 -

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.

ER -