Publication | International Conference on Machine Learning 2020
Learning to Simulate and Design for Structural Engineering
Abstract
Learning to Simulate and Design for Structural Engineering
Kai-Hung Chang, Chin-Yi Cheng
International Conference on Machine Learning 2020
The structural design process for buildings is time consuming and laborious. To automate this process, structural engineers combine optimization methods with simulation tools to find an optimal design with minimal building mass subject to building regulations. However, structural engineers in practice often avoid optimization and compromise on a suboptimal design for the majority of buildings, due to the large size of the design space, the iterative nature of the optimization methods, and the slow simulation tools. In this work, we formulate the building structures as graphs and create an end-to-end pipeline that can learn to propose the optimal cross-sections of columns and beams by training together with a pre-trained differentiable structural simulator. The performance of the proposed structural designs is comparable to the ones optimized by genetic algorithm (GA), with all the constraints satisfied. The optimal structural design with the reduced the building mass can not only lower the material cost, but also decrease the carbon footprint.
Download publicationRelated Resources
2023
Exploring Future Worlds and the Potential of our Digital SelvesRecent workshop explores the digital realm and our place within it…
2023
Outsight Network Resident Coral Maker is Racing to Save Coral ReefsLearn how Australian-based Coral Maker is using technology to restore…
2017
WeBuild: Automatically Distributing Assembly Tasks Among Collocated Workers to Improve CoordinationPhysical construction and assembly tasks are often carried out by…
2010
MouseLight: Bimanual interactions on digital paper using a pen and a spatially-aware mobile projectorMouseLight is a standalone mobile projector with the form factor of a…
Get in touch
Something pique your interest? Get in touch if you’d like to learn more about Autodesk Research, our projects, people, and potential collaboration opportunities.
Contact us