In this paper, we present a novel interdisciplinary approach to study the relationship between diffusive surface structures and their acoustic performance. Using computational design, surface structures are iteratively generated and 3D printed at 1:10 model scale. They originate from different fabrication typologies and are designed to have acoustic diffusion and absorption effects. An automated robotic process measures the impulse responses of these surfaces by positioning a microphone and a speaker at multiple locations. The collected data serves two purposes: first, as an exploratory catalogue of different spatio-temporal-acoustic scenarios and second, as data set for predicting the acoustic response of digitally designed surface geometries using machine learning. In this paper, we present the automated data acquisition setup, the data processing and the computational generation of diffusive surface structures. We describe first results of comparative studies of measured surface panels and conclude with steps of future research.
翻译:在本文中,我们提出一种新的跨学科方法,研究地表悬浮结构及其声学性能之间的关系。利用计算设计,地表结构是迭代生成的,以1:10的模型比例打印为3D。这些结构来自不同的制造类型,设计时具有声学扩散和吸收效应。自动化机器人程序通过定位麦克风和多个地点的发言者测量这些表面的脉冲反应。所收集的数据有两个目的:第一,作为不同地表-时声学情景的探索目录;第二,作为利用机器学习预测数字设计的地表地形的声学反应的数据集。在本论文中,我们介绍了自动数据采集结构、数据处理和悬浮地表结构的计算生成。我们描述了测量的表面面板的比较研究的初步结果,并以未来研究步骤结束。