Machine Learning-Based Design Concept Evaluation

Author:

Camburn Bradley1,He Yuejun2,Raviselvam Sujithra2,Luo Jianxi2,Wood Kristin2

Affiliation:

1. Department of Mechanical Industrial and Manufacturing Engineering, Oregon State University, 2000 SW Monroe Avenue, Corvallis, OR 97331

2. International Design Centre, Singapore University of Technology and Design, 8 Somapah Road, Singapore 487372

Abstract

Abstract In order to develop novel solutions for complex systems and in increasingly competitive markets, it may be advantageous to generate large numbers of design concepts and then to identify the most novel and valuable ideas. However, it can be difficult to process, review, and assess thousands of design concepts. Based on this need, we develop and demonstrate an automated method for design concept assessment. In the method, machine learning technologies are first applied to extract ontological data from design concepts. Then, a filtering strategy and quantitative metrics are introduced that enable creativity rating based on the ontological data. This method is tested empirically. Design concepts are crowd-generated for a variety of actual industry design problems/opportunities. Over 4000 design concepts were generated by humans for assessment. Empirical evaluation assesses: (1) correspondence of the automated ratings with human creativity ratings; (2) whether concepts selected using the method are highly scored by another set of crowd raters; and finally (3) if high scoring designs have a positive correlation or relationship to industrial technology development. The method provides a possible avenue to rate design concepts deterministically. A highlight is that a subset of designs selected automatically out of a large set of candidates was scored higher than a subset selected by humans when evaluated by a set of third-party raters. The results hint at bias in human design concept selection and encourage further study in this topic.

Funder

SUTD-MIT International Design Centre

Publisher

ASME International

Subject

Computer Graphics and Computer-Aided Design,Computer Science Applications,Mechanical Engineering,Mechanics of Materials

Reference56 articles.

1. Assessing the Quality of Ideas From Prolific, Early-Stage Product Ideation;Kudrowitz;J. Eng. Des.,2013

2. An Experimental Study of Group Idea Generation Techniques: Understanding the Roles of Idea Representation and Viewing Methods;Linsey;ASME J. Mech. Des.,2011

3. Design Concept Structures in Massive Group Ideation;Lim,2016

4. Deep Learning for Design in Concept Clustering;Zhang,2017

5. Mining Patent Precedents for Data-Driven Design: The Case of Spherical Rolling Robots;Song;ASME J. Mech. Des.,2017

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