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A generalized inverse cascade method to identify and optimize vehicle interior noise sources

机译:一种识别和优化车辆内部噪声源的广义逆级联方法

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The noise, vibration and harshness (NVH) emitted by a vehicle are very important to a customer's perception of the vehicle quality. A vehicle's NVH can be improved by considering the three following facets: the noise source, transfer path, and receiver. The identification and optimization of vehicle interior noise sources is crucial when attempting to reduce noise levels and improve sound quality. Although traditional methods, such as those utilizing sound pressure levels, nearfield acoustic holography, and transfer path analysis, can provide the magnitudes and contributions of noise sources, they cannot present specific methods for optimizing those noise sources. This study proposes a new method, the generalized inverse cascade method (GICM), to solve this problem. The GICM combines systems engineering with the interval optimization technique to identify and optimize vehicle noise sources. Applying the GICM to a decision problem involves the following three steps: (1) constructing the decision problem as a cascade tree; (2) developing a numerical model to quantify the cascade tree; and (3) solving the numerical model using the interval optimization method. A Volkswagen sedan is used in this study as an example, and a vehicular road test and subjective evaluation are implemented to record and evaluate the interior noise. The GICM, identifies potential abnormal interior noise sources, and a modified method is presented to optimize the abnormal noise sources by calculating the feasible intervals of design variables. A verification experiment shows that the vehicle interior noise is successfully optimized, thereby validating the proposed GICM. (C) 2019 Elsevier Ltd. All rights reserved.
机译:车辆发出的噪音,振动和粗糙度(NVH)对客户对车辆质量的看法非常重要。通过考虑以下三个方面可以提高车辆的NVH:噪声源,传输路径和接收器。当试图降低噪声水平并提高音质时,车辆内部噪声源的识别和优化是至关重要的。虽然传统方法,例如利用声压水平,近场声学全息术和转移路径分析的方法,但是可以提供噪声源的大小和贡献,但它们不能呈现用于优化这些噪声源的特定方法。本研究提出了一种新方法,概述逆级联方法(GICM)来解决这个问题。 GICM将系统工程与间隔优化技术相结合,以识别和优化车辆噪声源。将GICM应用于决策问题涉及以下三个步骤:(1)构建决策问题作为级联树; (2)开发数值模型以量化级联树; (3)使用间隔优化方法求解数值模型。本研究中使用大众轿车作为示例,实施车辆道路测试和主观评估以记录和评估内部噪音。 GICM,识别电位异常内部噪声源,并提出了一种修改的方法,通过计算设计变量的可行间隔来优化异常噪声源。验证实验表明,车辆内部噪声成功优化,从而验证了所提出的GICM。 (c)2019 Elsevier Ltd.保留所有权利。

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