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Auralization of simulated tyre noise: Psychoacoustic validation of a combined model

机译:模拟轮胎噪声的听觉化:组合模型的心理声学验证

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摘要

Due to improvements on combustion-engines and electric-engines for cars, tyre noise has become the prominent noise source at low and medium speeds. Models exist that simulate the noise produced by a rolling tyre, as do models that auralize different traffic situations from a basic data set. In this paper, an established model for tyre noise (SPERoN) is combined with an auralization tool. The combined model can predict the spectrum of the sound at 7.5 m, as well as reproduce the sound for a given listener position. The auralization uses a methodology where recorded sounds are converted to source signals for engine and tyre/road-interaction. These can be shaped by the spectra estimated in SPERoN and synthesized back into a pass-by signal. Psychoacoustic judgements were used to compare the modelled signals with recorded signals. To see how well the modelled signals match the real recorded signals for perception, two listening-tests were performed. The simulated and recorded signals were rated by pleasantness, loudness, roughness and sharpness using semantic differentials. It was found that responses for simulated and recorded signals correlate for all cases, but rankings could not be reproduced exactly. The model can be further improved to be more applicable for listening tests. (C) 2018 Elsevier Ltd. All rights reserved.
机译:由于汽车的内燃机和电动发动机的改进,轮胎噪声已成为中低速时的主要噪声源。存在模拟轮胎滚动产生的噪声的模型,以及从基本数据集中听取不同交通情况的模型。本文将建立的轮胎噪声模型(SPERoN)与可听化工具相结合。组合模型可以预测7.5 m处的声音频谱,并在给定的听众位置再现声音。听觉化使用一种方法,将录制的声音转换为用于发动机和轮胎/道路相互作用的源信号。这些可以通过SPERoN中估计的频谱进行整形,然后合成回通过信号。使用心理声学判断将模拟信号与记录信号进行比较。为了了解建模信号与真实记录信号的感知程度如何,进行了两次听觉测试。模拟和记录的信号使用语义差异通过愉悦性,响度,粗糙度和清晰度进行评级。发现在所有情况下,模拟信号和记录信号的响应都相关,但是排名无法准确再现。该模型可以进一步改进以更适用于听力测试。 (C)2018 Elsevier Ltd.保留所有权利。

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