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A novel interval analysis method to identify and reduce pure electric vehicle structure-borne noise

机译:一种识别和减少纯电动汽车结构噪声的新型间隔分析方法

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The interior noise of a pure electric vehicle (EV) is quieter than that of a traditional internal combustion engine vehicle (ICEV). However, if the noise masking effect of an ICEV is not employed, structure-borne noise from the suspension in an EV will become prevalent, although the interior noise weakens when the EV is driven at a moderate speed. Identifying the sources of suspension structure-borne noise is necessary to reduce the interior noise in an EV and improve the vehicle sound quality. However, the suspension system comprises many components and noise sources, making the identification and reduction of suspension structure-borne noise in an EV a challenging task. In this paper, a new noise source identification method based on interval analysis is proposed. This method can not only accurately identify the sources of noise but also provide details regarding modification methods for reducing interior noise. To implement this method, a test EV was used for measurement, and 15 tests constructed through experimental design were carried out to record the interior noise and vibrations of suspension components. The results showed that the suspension structure-borne noise of the test vehicle was distributed mainly below a frequency of 400 Hz. The feasible intervals and noise source contributions were calculated via the interval analysis method, and the front spring and rear shock absorber were identified as the major sources of suspension structure-borne noise. In addition, component parameters were optimized through the interval analysis method. In accordance with the suggested modification method, a verification test was implemented, illustrating that the EV interior noise quality was improved and validating the effectiveness of the proposed method. The presented approach may be regarded as a promising method for identifying and optimizing vehicle noise sources. (C) 2020 Elsevier Ltd. All rights reserved.
机译:纯电动汽车(EV)的内部噪音比传统的内燃机车辆(ICEV)更安静。然而,如果没有采用ICEV的噪声掩蔽效果,则来自EV中悬架的结构传承噪声将变得普遍,尽管当EV以适度速度驱动时,内部噪声削弱。识别悬浮结构的源极噪声是必要的,以降低EV中的内部噪音并提高车辆音质。然而,悬架系统包括许多组件和噪声源,在EV充满挑战的任务中,使悬浮结构传播噪声的识别和降低。本文提出了一种基于间隔分析的新噪声源识别方法。该方法不仅可以准确地识别噪声源,还可以提供关于减少内部噪声的修改方法的细节。为了实现该方法,测试EV用于测量,并进行通过实验设计构建的15个测试,以记录悬浮组分的内部噪声和振动。结果表明,试验车辆的悬架结构噪声主要分布在400Hz的频率低于400Hz的频率之下。通过间隔分析方法计算可行的间隔和噪声源贡献,并将前弹簧和后减震器识别为悬架结构噪声的主要来源。此外,通过间隔分析方法优化了组件参数。根据建议的修改方法,实施了验证测试,说明EV内部噪声质量得到改善和验证所提出的方法的有效性。所提出的方法可以被认为是用于识别和优化车辆噪声源的有希望的方法。 (c)2020 elestvier有限公司保留所有权利。

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