This dissertation aims at developing a machine learning workflow in solving design-related problems, taking a data-driven structural design method with topological data using graphic statics as an example. It shows the advantages of building machine learning surrogate models for learning the design topology -- the relationship of design elements. It reveals a future tendency of the coexistence of the human designer and the machine, in which the machine learns the appearance and correlation between design data, while the human supervises the learning process. Theoretically, with the commencement of the age of Big Data and Artificial Intelligence, the usage of machine learning in solving design problems is widely applied. The existing researc...
Thesis: Ph. D. in Building Technology, Massachusetts Institute of Technology, Department of Architec...
Mechanical design is one of the essential disciplines in engineering applications, while inspiration...
Some architects struggle to choose the best form of how the building meets the ground and may benefi...
This thesis addresses several opportunities in the development of surrogate models used for structur...
International audienceIn the context of intellectual property in the manufacturing industry, know-ho...
Thesis: Ph. D. in Architecture: Building Technology, Massachusetts Institute of Technology, Departme...
The aim of this research is to introduce a novel structural design process that allows architects an...
This dissertation presents novel approaches and applications of machine learning architectures. In p...
The attached file is the postprint version of the published paper.International audienceTopology is ...
In this dissertation, several machine learning strategies are presented to advance solution capabili...
Engineers widely use topology optimization during the initial process of product development to obta...
The work in this thesis studies some of the potential applications of machine learning in the field ...
Topology optimization methods offer an interesting tool for architects and engineers as a rational b...
Topology optimization is a powerful tool for producing an optimal free-form design from input mechan...
Topology optimization is a powerful tool that, when employed at the preliminary stage of the design ...
Thesis: Ph. D. in Building Technology, Massachusetts Institute of Technology, Department of Architec...
Mechanical design is one of the essential disciplines in engineering applications, while inspiration...
Some architects struggle to choose the best form of how the building meets the ground and may benefi...
This thesis addresses several opportunities in the development of surrogate models used for structur...
International audienceIn the context of intellectual property in the manufacturing industry, know-ho...
Thesis: Ph. D. in Architecture: Building Technology, Massachusetts Institute of Technology, Departme...
The aim of this research is to introduce a novel structural design process that allows architects an...
This dissertation presents novel approaches and applications of machine learning architectures. In p...
The attached file is the postprint version of the published paper.International audienceTopology is ...
In this dissertation, several machine learning strategies are presented to advance solution capabili...
Engineers widely use topology optimization during the initial process of product development to obta...
The work in this thesis studies some of the potential applications of machine learning in the field ...
Topology optimization methods offer an interesting tool for architects and engineers as a rational b...
Topology optimization is a powerful tool for producing an optimal free-form design from input mechan...
Topology optimization is a powerful tool that, when employed at the preliminary stage of the design ...
Thesis: Ph. D. in Building Technology, Massachusetts Institute of Technology, Department of Architec...
Mechanical design is one of the essential disciplines in engineering applications, while inspiration...
Some architects struggle to choose the best form of how the building meets the ground and may benefi...