Real-time design of architectural structures with differentiable simulators and neural networks

Rafael Pastrana, Eder Medina, Isabel M. de Oliveira, Sigrid Adriaenssens, Ryan P. Adams
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Abstract

Designing mechanically efficient geometry for architectural structures like shells, towers, and bridges is an expensive iterative process. Existing techniques for solving such inverse mechanical problems rely on traditional direct optimization methods, which are slow and computationally expensive, limiting iteration speed and design exploration. Neural networks would seem to offer an alternative, via data-driven amortized optimization for specific design tasks, but they often require extensive regularization and cannot ensure that important design criteria, such as mechanical integrity, are met. In this work, we combine neural networks with a differentiable mechanics simulator and develop a model that accelerates the solution of shape approximation problems for architectural structures. This approach allows a neural network to capture the physics of the task directly from the simulation during training, instead of having to discern it from input data and penalty terms in a physics-informed loss function. As a result, we can generate feasible designs on a variety of structural types that satisfy mechanical and geometric constraints a priori, with better accuracy than fully neural alternatives trained with handcrafted losses, while achieving comparable performance to direct optimization, but in real time. We validate our method in two distinct structural shape-matching tasks, the design of masonry shells and cable-net towers, and showcase its real-world potential for design exploration by deploying it as a plugin in commercial 3D modeling software. Our work opens up new opportunities for real-time design enhanced by neural networks of mechanically sound and efficient architectural structures in the built environment.
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利用可微分模拟器和神经网络实时设计建筑结构
为外壳、塔楼和桥梁等建筑结构设计机械高效的几何形状是一个昂贵的迭代过程。解决此类逆机械问题的现有技术依赖于传统的直接优化方法,这种方法速度慢、计算成本高,限制了迭代速度和设计探索。神经网络似乎提供了另一种选择,即通过数据驱动的摊销优化来完成特定的设计任务,但它们通常需要大量的正则化,无法确保满足重要的设计标准,如机械完整性。在这项工作中,我们将神经网络与可微分力学模拟器相结合,开发了一种模型,可以加速解决建筑结构的形状逼近问题。这种方法允许神经网络在训练过程中直接从模拟中捕捉任务的物理特性,而不必从输入数据和物理信息损失函数中的惩罚项中进行辨别。因此,我们可以生成各种结构类型的可行设计,这些设计先验地满足机械和几何约束条件,比使用手工损失函数训练的完全神经替代方法更精确,同时还能实现与直接优化相当的性能,但需要更短的时间。我们在两个不同的结构形状匹配任务(砌体外壳和索网塔楼的设计)中验证了我们的方法,并通过将其部署为商业三维建模软件的插件,展示了该方法在设计探索方面的现实潜力。我们的工作为通过神经网络实时设计建筑环境中机械性能良好且高效的建筑结构提供了新的机遇。
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