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首页> 外文期刊>The Journal of the Acoustical Society of America >Comparisons between physics-based, engineering, and statistical learning models for outdoor sound propagation
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Comparisons between physics-based, engineering, and statistical learning models for outdoor sound propagation

机译:基于物理,工程和统计学习模型的室外声音传播比较

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摘要

Many outdoor sound propagation models exist, ranging from highly complex physics-based simulations to simplified engineering calculations, and more recently, highly flexible statistical learning methods. Several engineering and statistical learning models are evaluated by using a particular physics-based model, namely, a Crank-Nicholson parabolic equation (CNPE), as a benchmark. Narrowband transmission loss values predicted with the CNPE, based upon a simulated data set of meteorological, boundary, and source conditions, act as simulated observations. In the simulated data set sound propagation conditions span from downward refracting to upward refracting, for acoustically hard and soft boundaries, and low frequencies. Engineering models used in the comparisons include the ISO 9613-2 method, Harmonoise, and Nord2000 propagation models. Statistical learning methods used in the comparisons include bagged decision tree regression, random forest regression, boosting regression, and artificial neural network models. Computed skill scores are relative to sound propagation in a homogeneous atmosphere over a rigid ground. Overall skill scores for the engineering noise models are 0.6%, -7.1%, and 83.8% for the ISO 9613-2, Harmonoise, and Nord2000 models, respectively. Overall skill scores for the statistical learning models are 99.5%, 99.5%, 99.6%, and 99.6% for bagged decision tree, random forest, boosting, and artificial neural network regression models, respectively.
机译:存在许多室外声音传播模型,范围从基于物理的高度复杂的模拟到简化的工程计算,以及最近的高度灵活的统计学习方法。通过使用特定的基于物理的模型(即Crank-Nicholson抛物线方程(CNPE))作为基准,可以评估几种工程和统计学习模型。基于气象,边界和源条件的模拟数据集,CNPE预测的窄带传输损耗值充当模拟观测值。在模拟的数据集中,对于声学上的硬边界和软边界以及低频,声音的传播条件从向下折射到向上折射。比较中使用的工程模型包括ISO 9613-2方法,Harmonoise和Nord2000传播模型。比较中使用的统计学习方法包括袋装决策树回归,随机森林回归,boosting回归和人工神经网络模型。计算出的技能得分与声音在刚性地面上均匀大气中的传播有关。对于ISO 9613-2,Harmonoise和Nord2000模型,工程噪声模型的总体技能得分分别为0.6%,-7.1%和83.8%。对于袋装决策树,随机森林,boost和人工神经网络回归模型,统计学习模型的总体技能得分分别为99.5%,99.5%,99.6%和99.6%。

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