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Parametric Study on the Road Traffic Noise Prediction Models

机译:道路交通噪声预测模型的参数研究

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In order to investigate complex and broad impacts, many studies have been conducted using noise mapping. Noise mapping have used several noise prediction models, but error between measured value and estimated value in applying in Korea have been confirmed. This error depends on properties of noise prediction models or uncertainties of the elements by the model users. This paper was aimed to offer a basic study on intrinsic effect of parameters as comparing assuming scenarios and noise prediction models. The variation in sound power level to changes in the main factors was explored by parametric study and sensitivity analysis. Sound power level of KHTN was increased by increasing each input factor in all scenarios. The pattern of output behavior was also similar for all scenarios. Traffic speed had the most effective on sound power level of KHTN model for all scenarios except for scenario 5. The different units among the main factors could be mentioned as the reason which sensitivities of traffic flow were quite low at all scenarios. In the case of comparison of noise prediction models, RLS90 relatively overestimated the sound power level compared to the other models for all main factors and all scenarios. The variation of PWL of RLS90 model was relatively sensible. This approach will give a better insight on the noise prediction method.
机译:为了研究复杂和广泛的影响,已经使用噪声映射进行了许多研究。噪声映射已经使用了几种噪声预测模型,但是已经证实了在韩国应用中测量值和估计值之间的误差。该误差取决于噪声预测模型的属性或模型用户对元素的不确定性。本文旨在为比较假设情景和噪声预测模型提供参数内在影响的基础研究。通过参数研究和灵敏度分析,探讨了声功率级对主要因素变化的影响。在所有情况下,通过增加每个输入因子可以提高KHTN的声功率级。在所有情况下,输出行为的模式也相似。除情景5以外,在所有情景中,交通速度对KHTN模型的声功率水平最为有效。在所有情景中,可以提及主要因素中的不同单位,这是交通流敏感性很低的原因。在比较噪声预测模型的情况下,与所有其他因素相比,RLS90相对于所有主要因素和所有方案都相对高估了声功率级。 RLS90模型的PWL的变化相对敏感。这种方法可以更好地了解噪声预测方法。

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