Identification of Turbomachinery Noise Sources via Processing Beamforming Data Using Principal Component Analysis

IF 1.3 Q3 ENGINEERING, MECHANICAL PERIODICA POLYTECHNICA-MECHANICAL ENGINEERING Pub Date : 2021-12-14 DOI:10.3311/ppme.18555
B. Fenyvesi, Csaba Horváth
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引用次数: 1

Abstract

Complex turbomachinery systems produce a wide range of noise components. The goal is to identify noise source categories, determine their characteristic noise patterns and locations. Researchers can then use this information to quantify the impact of these noise sources, based on which new design guidelines can be proposed. Phased array microphone measurements processed with acoustic beamforming technology provide noise source maps for pre-determined frequency bands (i.e., bins) of the investigated spectrum. However, multiple noise generation mechanisms can be active in any given frequency bin. Therefore, the identification of individual noise sources is difficult and time consuming when using conventional methods, such as manual sorting. This study presents a method for combining beamforming with Principal Component Analysis (PCA) methods in order to identify and separate apart turbomachinery noise sources with strong harmonics. The method is presented through the investigation of Counter-Rotating Open Rotor (CROR) noise sources. It has been found that the proposed semi-automatic method was able to extract even weak noise source patterns that repeat throughout the data set of the beamforming maps. The analysis yields results that are easy to comprehend without special prior knowledge and is an effective tool for identifying and localizing noise sources for the acoustic investigation of various turbomachinery applications.
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利用主成分分析处理波束形成数据识别涡轮机械噪声源
复杂的涡轮机械系统会产生各种各样的噪声成分。目标是识别噪声源类别,确定其特征噪声模式和位置。然后,研究人员可以使用这些信息来量化这些噪声源的影响,并在此基础上提出新的设计准则。用声波束形成技术处理的相控阵麦克风测量提供了所研究频谱的预定频带(即箱)的噪声源图。然而,在任何给定的频率域中,多种噪声产生机制都是有效的。因此,使用人工分类等传统方法识别单个噪声源既困难又耗时。提出了一种将波束形成与主成分分析(PCA)相结合的方法来识别和分离强谐波涡轮机械噪声源。通过对开转子(CROR)噪声源的研究,提出了该方法。研究发现,所提出的半自动方法能够提取出在波束形成图的整个数据集中重复出现的微弱噪声源模式。分析结果很容易理解,不需要特殊的先验知识,是识别和定位噪声源的有效工具,用于各种涡轮机械应用的声学研究。
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来源期刊
CiteScore
2.80
自引率
7.70%
发文量
33
审稿时长
20 weeks
期刊介绍: Periodica Polytechnica is a publisher of the Budapest University of Technology and Economics. It publishes seven international journals (Architecture, Chemical Engineering, Civil Engineering, Electrical Engineering, Mechanical Engineering, Social and Management Sciences, Transportation Engineering). The journals have free electronic versions.
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