Skip to main content

Research Repository

Advanced Search

Enabling parametric design space exploration by non-designers

Castro e Costa, Eduardo; Jorge, Joaquim; Knochel, Aaron D.; Duarte, Jos� Pinto

Authors

Profile Image

Eduardo Costa Eduardo.Costa@uwe.ac.uk
Senior Lecturer in Computational Architecture

Joaquim Jorge

Aaron D. Knochel

Jos� Pinto Duarte



Abstract

In mass customization, software configurators enable novice end-users to design customized products and services according to their needs and preferences. However, traditional configurators hardly provide an engaging experience while avoiding the burden of choice. We propose a Design Participation Model to facilitate navigating the design space, based on two modules. Modeler enables designers to create customizable designs as parametric models, and Navigator subsequently permits novice end-users to explore these designs. While most parametric designs support direct manipulation of low-level features, we propose interpolation features to give customers more flexibility. In this paper, we focus on the implementation of such interpolation features into Navigator and its user interface. To assess our approach, we designed and performed user experiments to test and compare Modeler and Navigator, thus providing insights for further developments of our approach. Our results suggest that barycentric interpolation between qualitative parameters provides a more easily understandable interface that empowers novice customers to explore the design space expeditiously.

Citation

Castro e Costa, E., Jorge, J., Knochel, A. D., & Duarte, J. P. (2020). Enabling parametric design space exploration by non-designers. AI EDAM, 34(2), 160-175. https://doi.org/10.1017/S0890060420000177

Journal Article Type Article
Acceptance Date Jan 11, 2020
Online Publication Date Apr 16, 2020
Publication Date 2020-05
Deposit Date Apr 8, 2022
Journal Artificial Intelligence for Engineering Design, Analysis and Manufacturing: AIEDAM
Print ISSN 0890-0604
Electronic ISSN 1469-1760
Publisher Cambridge University Press (CUP)
Peer Reviewed Peer Reviewed
Volume 34
Issue 2
Pages 160-175
DOI https://doi.org/10.1017/S0890060420000177
Keywords Artificial Intelligence; Industrial and Manufacturing Engineering
Public URL https://uwe-repository.worktribe.com/output/9303688