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A basic neural traffic noise prediction model for Tehran's roads

机译:德黑兰道路的基本神经交通噪声预测模型

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We present an artificial neural network model to predict hourly A-weighted equivalent sound pressure levels (L_(Aeq,1h)) for roads in Tehran at distances less than 4 m from the nearside carriageway edge. Our model uses the UK Calculation of Road Traffic Noise (CORTN) approach. Data were obtained from 50 sampling locations near five roads in Tehran at nearside carriageway edge distances of less than 4 m. The data were randomly assigned to training, testing, and holdout subsets. Model training was carried out using the training and testing subsets and comprised 60% and 20% of the data, respectively. Model validation was performed using the remaining 20% of data as a holdout subset. We examine the overall model efficiency using non-parametric tests, such as the Wilcoxon matched-pairs signed-rank test for the training step and the Kolmogorov-Smirnov test for two independent samples for the validation step. Our results indicate that a neural network approach can be applied for traffic noise prediction in Tehran in a statistically sound manner. The Wilcoxon matched-pairs signed-ranks test detects no significant difference between the absolute testing set errors of the developed neural network and a calibrated version of the CORTN model.
机译:我们提出了一个人工神经网络模型,以预测德黑兰在距近车行道边缘不到4 m的道路上的每小时A加权等效声压级(L_(Aeq,1h))。我们的模型使用英国道路交通噪声计算(CORTN)方法。数据是从德黑兰5条道路附近的50个采样点获得的,行车道边缘距离小于4 m。将数据随机分配给训练,测试和坚持子集。使用训练和测试子集进行模型训练,分别包含60%和20%的数据。使用其余20%的数据作为保留子集执行模型验证。我们使用非参数检验来检验整体模型的效率,例如用于训练步骤的Wilcoxon配对配对有序秩检验和用于验证步骤的两个独立样本的Kolmogorov-Smirnov检验。我们的结果表明,神经网络方法可以以统计上合理的方式应用于德黑兰的交通噪声预测。 Wilcoxon配对对带符号秩检验未检测到已开发的神经网络的绝对测试设置误差与CORTN模型的校准版本之间的显着差异。

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