Generative AI-based Prompt Evolution Engineering Design Optimization With Vision-Language Model
Melvin Wong, Thiago Rios, Stefan Menzel, Yew Soon Ong

TL;DR
This paper introduces a prompt evolution framework for vehicle design optimization that combines vision-language models with evolutionary strategies to generate practical, diverse, and high-performance car designs efficiently.
Contribution
It presents a novel integration of vision-language models into an evolutionary design process, enhancing practicality assessment and user-guided specification in vehicle shape optimization.
Findings
Over 20% increase in practical design generation probability
High diversity of initial design populations
Effective natural language interface for design specifications
Abstract
Engineering design optimization requires an efficient combination of a 3D shape representation, an optimization algorithm, and a design performance evaluation method, which is often computationally expensive. We present a prompt evolution design optimization (PEDO) framework contextualized in a vehicle design scenario that leverages a vision-language model for penalizing impractical car designs synthesized by a generative model. The backbone of our framework is an evolutionary strategy coupled with an optimization objective function that comprises a physics-based solver and a vision-language model for practical or functional guidance in the generated car designs. In the prompt evolutionary search, the optimizer iteratively generates a population of text prompts, which embed user specifications on the aerodynamic performance and visual preferences of the 3D car designs. Then, in addition…
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Taxonomy
TopicsBIM and Construction Integration · Manufacturing Process and Optimization
