The Helmholtz equation has been used for modelling the sound pressure field under a harmonic load. Computing harmonic sound pressure fields by means of solving Helmholtz equation can quickly become unfeasible if one wants to study many different geometries for ranges of frequencies. We propose a machine learning approach, namely a feedforward dense neural network, for computing the average sound pressure over a frequency range. The data is generated with finite elements, by numerically computing the response of the average sound pressure, by an eigenmode decomposition of the pressure. We analyze the accuracy of the approximation and determine how much training data is needed in order to reach a certain accuracy in the predictions of the average pressure response.
翻译:Helmholtz 等式已被用于在调音负载下模拟声压场。如果有人想研究不同频率范围的多种不同地形,则通过解决赫尔mholtz 等式进行计算机声压场将很快变得不可行。我们提议了一种机器学习方法,即一个向前密集神经网络,用于计算频率范围内的平均声压。数据是用有限的元素生成的,通过数字计算平均声压的响应,通过压力的电源分解产生。我们分析了近似的准确性并确定需要多少培训数据才能在平均压力反应的预测中达到一定的准确性。