CREATE Lab - Computational Robot Design & Fabrication Lab, EPFL, 1015, Lausanne, Switzerland.
Sci Rep. 2023 Mar 14;13(1):4212. doi: 10.1038/s41598-023-31395-0.
Although often regarded a childhood toy, the design of paper airplanes is subtly complex. The design space and mapping from geometry to distance flown is highly nonlinear and probabilistic where a single airplane design exhibits a multitude of trajectory forms and flight distances. This makes optimization and understanding of their behavior challenging for humans. By understanding the behavior of paper airplanes and predicting flight behavior, there is a potential to improve the design of aerial vehicles that operate at low Reynolds numbers. By developing a robotic system that can fabricate, test, analyze, and model the flight behavior in an unsupervised fashion, a wide design space can be reliably characterized. We find there are discrete behavioral groups that result in different trajectories: nose dive, glide, and recovery glide. Informed by this characterization we propose a method of using Gaussian mixture models to extract the clusters of the design space that map to these different behaviors. This allows us to solve both the forward and reverse design problem for paper airplanes, and also to perform efficient optimization of the geometry for a given target flight distance.
虽然纸飞机通常被视为一种儿童玩具,但它的设计却微妙而复杂。从几何形状到飞行距离的映射空间和设计是高度非线性和概率性的,单一的飞机设计表现出多种轨迹形式和飞行距离。这使得人类难以对其行为进行优化和理解。通过了解纸飞机的行为并预测飞行行为,有可能改善在低雷诺数下运行的飞行器的设计。通过开发一种能够以无人监督的方式制造、测试、分析和模拟飞行行为的机器人系统,可以可靠地描述广泛的设计空间。我们发现存在导致不同轨迹的离散行为组:俯冲、滑翔和恢复滑翔。受此特征的启发,我们提出了一种使用高斯混合模型提取与这些不同行为相对应的设计空间聚类的方法。这使我们能够解决纸飞机的正向和反向设计问题,也能够针对给定的目标飞行距离对几何形状进行有效的优化。