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Optimized height of noise barrier for non-urban highway using artificial neural network.

机译:使用人工神经网络优化非城市高速公路的噪声屏障高度。

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摘要

This study applies artificial neural network (ANN) for the determination of optimized height of a highway noise barrier. Field measurements were carried out to collect traffic volume, vehicle speed, noise level, and site geometry data. Barrier height was varied from 2 to 5 m in increments of 0.1 m for each measured data set to generate theoretical data for network design. Barrier attenuation was calculated for each height increment using Federal Highway Administration model. For neural network design purpose, classified traffic volume, corresponding traffic speed, and barrier attenuation data have been taken as input parameters, while barrier height was considered as output. ANNs with different architectures were trained, cross validated, and tested using this theoretical data. Results indicate that ANN can be useful to determine the height of noise barrier accurately, which can effectively achieve the desired noise level reduction, for a given set of traffic volume, vehicular speed, highway geometry, and site conditions.
机译:本研究将人工神经网络(ANN)用于确定高速公路隔音屏障的最佳高度。进行现场测量以收集交通量,车速,噪声水平和站点几何数据。对于每个测量数据集,屏障高度从2到5 m不等,以0.1 m为增量变化,以生成用于网络设计的理论数据。使用联邦公路管理局模型为每个高度增量计算障碍物衰减。出于神经网络设计的目的,已将分类的交通量,相应的交通速度和障碍物衰减数据作为输入参数,而将障碍物高度视为输出。使用该理论数据对具有不同架构的人工神经网络进行了训练,交叉验证和测试。结果表明,对于给定的一组交通量,车速,高速公路几何形状和工地条件,人工神经网络可用于准确确定噪声屏障的高度,从而可以有效地实现所需的噪声降低。

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