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Prediction of outdoor sound transmission loss with an artificial neural network

机译:用人工神经网络预测室外声传输损耗

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An artificial neural network is developed for rapid prediction of sound transmission loss (TL) during propagation outdoors. The network predicts TL for a nonturbulent atmosphere from inputs involving the source/receiver propagation geometry (height range: 0-5 m, horizontal separation distance; 100-900 m), source frequency (range: 20-200 Hz), ground properties, and atmospheric refractive profile characteristics. A parabolic equation (PE) code generates the training and test data sets for the network. To ensure that a minimal set of input parameters is used in the network training, a nondimensional version of the PE and accompanying boundary, initial, and atmospheric conditions is developed. A total of 10 independent, nondimensional input parameters are found to be necessary for the training. Approximately 27,000 random cases involving these 10 parameters are generated used to train networks with varying numbers of neurons. The root mean square (RMS) error between random test cases solved by the PE and corresponding neural network predictions was 2.42 dB when a sufficient number of neurons (about 44) are included in the hidden layer. Also, only 18% of the cases resulted in RMS errors that were greater than 2 dB.
机译:开发了一种人工神经网络,用于快速预测户外传播过程中的声音传输损耗(TL)。网络会根据涉及源/接收器传播几何形状(高度范围:0-5 m,水平分隔距离; 100-900 m),源频率(范围:20-200 Hz),地面特性,和大气折射率分布特征。抛物线方程(PE)代码生成网络的训练和测试数据集。为了确保在网络训练中使用最少的输入参数集,开发了PE的无量纲形式以及相应的边界,初始和大气条件。总共需要10个独立的无量纲输入参数进行训练。生成涉及这10个参数的大约27,000个随机案例,用于训练具有不同数量神经元的网络。当在隐藏层中包含足够数量的神经元(约44个)时,由PE解决的随机测试用例与相应的神经网络预测之间的均方根(RMS)误差为2.42 dB。同样,只有18%的情况导致RMS误差大于2 dB。

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