恒功率心理声学频谱优化在汽车内饰上的应用

IF 2.8 Q2 TRANSPORTATION SCIENCE & TECHNOLOGY
Yunge Li, Ryan Monroe, B. Geist
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引用次数: 0

摘要

良好的质量评估是车辆设计的一个组成部分。特别是现在,随着制造商向电气化迈进,汽车的声音正在发生根本性的变化。通过提高车内声音的质量,可以提高消费者对车内声音的主观评价。因此,研究人类声音感知的心理声学领域在这里是广泛适用的。事实上,声音信号的感知质量受到几个心理声学指标的影响,包括响度、清晰度和粗糙度。其中一项特别的功能是预先确定如何以优化心理声学指标的方式分配可听频率内容,因为这可以帮助汽车工程师获得优化车辆噪声、振动和粗糙度(NVH)的特定设计目标。本文提出了一种改进的基于梯度的优化技术(MGOT)来优化心理声学响度和锐度。这项新技术被应用于确定对测量的车辆内部声音信号进行有针对性的调整,以保持信号能量恒定,但降低响度和/或清晰度。MGOT数值逼近目标函数梯度的信号功率分布的小变化,使总信号功率保持恒定。这些梯度计算确定功率谱三分之一倍频带交易,最小化声音信号度量,即响度和清晰度的加权总和,同时保留总信号功率。交易包括从指定为源的三分之一倍频带减少功率含量,同时将该功率添加到另一个接收机的三分之一倍频带。在MGOT中,在任何时候被识别为源的三分之一倍频带以后永远不会成为功率的接收器。将MGOT结果和执行时间与两个广泛可用的通用优化例程(标准的基于梯度的优化器和“遗传的”非梯度优化器)进行比较,这两个例程用于实现相同的优化目标。与现有的优化技术相比,MGOT可以识别频谱修改,从而在相当甚至更少的执行时间内产生更优的目标函数最小化。由此产生的声音频谱修改可以指导车辆结构或校准设计建议,以实现首选的频率分布,以增强车辆的驾驶体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Constant Power Psychoacoustic Spectrum Optimization for Loudness and Sharpness with Application to Vehicle Interiors
Sound quality assessments are an integral part of vehicle design. Especially now, as manufacturers move towards electrification, vehicle sounds are fundamentally changing. By improving the quality of the interior sounds of a vehicle, consumers’ subjective evaluation of it can be increased. Therefore, the field of psychoacoustics, which is the study of human perception of sound, is broadly applicable here. In fact, the perceived quality of a sound signal is influenced by several psychoacoustic indicators, including loudness, sharpness, and roughness. Of particular utility is identifying in advance how to distribute audible frequency content in a way that optimizes psychoacoustic metrics as this can help automotive engineers obtain specific design targets that optimize vehicle noise, vibration, and harshness (NVH). In this article, a novel modified gradient-based optimization technique (MGOT) is developed to optimize psychoacoustic loudness and sharpness. The new technique is applied to identify targeted adjustments to a measured vehicle interior sound signal that keep the signal energy constant but reduce loudness and/or sharpness. The MGOT numerically approximates the objective function gradient for small changes in the signal power distribution for which constant overall signal power is maintained. These gradient calculations identify power spectrum one-third octave band trades that minimize a sound signal metric that is a weighted sum of loudness and sharpness while conserving the total signal power. A trade consists of a reduction of power content from a one-third octave band designated as a source together with a simultaneous addition of that power to another receiver one-third octave band. In the MGOT, a one-third octave band that is at any time identified as a source can never later become a receiver of power. The MGOT results and execution times are compared with two widely available general-purpose optimization routines (a standard gradient-based optimizer and a “genetic,” non-gradient optimizer) are used to achieve identical optimization objectives. In comparison to existing optimization techniques, MGOT is found to identify spectrum modifications that produce a superior minimization of the objective function for comparable or even reduced execution times. The resultant sound spectrum modifications can guide vehicle structural or calibration design recommendations that realize a preferred frequency distribution for enhancing the vehicle driving experience.
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CiteScore
6.40
自引率
41.20%
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