From ancient to modern times, acoustic structures have been used to control the propagation of acoustic waves. However, the design of the acoustic structures has remained widely a time-consuming and computational resource-consuming iterative process. In recent years, Deep Learning has attracted unprecedented attention for its ability to tackle hard problems with huge datasets, which has achieved state-of-the-art results in various tasks. In this work, an acoustic structure design method is proposed based on deep learning. Taking the design of multi-order Helmholtz resonator for instance, we experimentally demonstrate the effectiveness of the proposed method. Our method is not only able to give a very accurate prediction of the geometry of the acoustic structures with multiple strong-coupling parameters, but also capable of improving the performance of evolutionary approaches in optimization for a desired property. Compared with the conventional numerical methods, our method is more efficient, universal and automatic, which has a wide range of potential applications, such as speech enhancement, sound absorption and insulation.
翻译:从古到现代,声学结构一直被用来控制声波的传播,然而,声学结构的设计仍然广泛是一个耗时和计算资源耗时的迭代过程。近年来,深学习吸引了前所未有的注意力,以其有能力解决庞大数据集的难题,在各种任务中取得了最先进的成果。在这项工作中,根据深层次的学习,提出了声学结构设计方法。例如,我们实验地展示了拟议方法的有效性。我们的方法不仅能够非常准确地预测具有多重强相联参数的声学结构的几何性,而且还能够改进对理想属性进行优化的进化方法的性能。与常规的数值方法相比,我们的方法效率更高、普遍性和自动性,具有广泛的潜在应用,如语音增强、声音吸收和隔热等。