Denoising diffusion models for inverse design of inflatable structures with programmable deformations

Computer Vision & MultiModal AI
Published: arXiv: 2508.13097v1
Authors

Sara Karimi Nikolaos N. Vlassis

Abstract

Programmable structures are systems whose undeformed geometries and material property distributions are deliberately designed to achieve prescribed deformed configurations under specific loading conditions. Inflatable structures are a prominent example, using internal pressurization to realize large, nonlinear deformations in applications ranging from soft robotics and deployable aerospace systems to biomedical devices and adaptive architecture. We present a generative design framework based on denoising diffusion probabilistic models (DDPMs) for the inverse design of elastic structures undergoing large, nonlinear deformations under pressure-driven actuation. The method formulates the inverse design as a conditional generation task, using geometric descriptors of target deformed states as inputs and outputting image-based representations of the undeformed configuration. Representing these configurations as simple images is achieved by establishing a pre- and postprocessing pipeline that involves a fixed image processing, simulation setup, and descriptor extraction methods. Numerical experiments with scalar and higher-dimensional descriptors show that the framework can quickly produce diverse undeformed configurations that achieve the desired deformations when inflated, enabling parallel exploration of viable design candidates while accommodating complex constraints.

Paper Summary

Problem
The paper addresses the challenge of designing inflatable structures that can deform into specific shapes under pressure-driven actuation. This is a crucial problem in various fields, such as soft robotics, deployable aerospace systems, biomedical devices, and adaptive architecture.
Key Innovation
The researchers present a generative design framework based on denoising diffusion probabilistic models (DDPMs) to tackle this inverse design problem. The framework generates structural designs that deform into prescribed geometries when inflated under fixed boundary conditions. Unlike traditional methods, this approach uses simple images as inputs and outputs, making it more efficient and flexible.
Practical Impact
This research has significant practical implications for the development of inflatable structures with programmable deformations. The proposed framework can be used to quickly generate diverse undeformed configurations that achieve the desired deformations when inflated, enabling parallel exploration of viable design candidates while accommodating complex constraints. This can lead to breakthroughs in various applications, such as soft robotics, deployable aerospace systems, and biomedical devices.
Analogy / Intuitive Explanation
Imagine trying to draw a specific shape with playdough. You need to start with the right initial shape and then gradually mold it into the desired form. The DDPM framework works similarly, but instead of using your hands, it uses mathematical equations to generate images that represent the undeformed structure. These images are then used as inputs to predict how the structure will deform when inflated under specific conditions. Note: As a summary for a general audience, I've tried to focus on the main ideas and avoid technical jargon whenever possible. If you'd like me to add or clarify anything, please let me know!
Paper Information
Categories:
cs.CE cs.LG
Published Date:

arXiv ID:

2508.13097v1

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