Constrained Form-Finding of Tension-Compression Structures using Automatic Differentiation

11/04/2021
by   Rafael Pastrana, et al.
0

This paper proposes a computational approach to form-find pin-jointed, bar structures subjected to combinations of tension and compression forces. The generated equilibrium states can meet force and geometric constraints via gradient-based optimization. We achieve this by extending the Combinatorial Equilibrium Modeling (CEM) framework in three important ways. Firstly, we introduce a new topological object, the auxiliary trail, to expand the range of structures that can be form-found with the framework. Secondly, we leverage automatic differentiation (AD) to obtain an exact value of the gradient of the sequential and iterative calculations of the CEM form-finding algorithm, instead of a numerical approximation. We finally encapsulate our research developments into an open-source design tool written in Python that is usable across different CAD platforms and operating systems. After studying four different structures – a self-stressed planar tensegrity, a tree canopy, a curved suspension bridge, and a spiral staircase – we show that our approach allows solving constrained form-finding problems on a diverse range of structures more efficiently than in previous work.

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