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Thresholded Multiple Coherence as a tool for source separation and denoising: Theory and aeroacoustic applications

机译:作为源分离和去噪的工具,阈值多的连贯性:理论和空气声学应用

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The multiple coherence is a spectral analysis tool allowing the estimation of the contribution of several, possibly partially, coherent inputs to one or several outputs. This type of analysis can be conducted using a waterfall substraction approach (Conditioned Spectral Analysis framework) or using an eigenvalue analysis of the input correlation matrix (Virtual Source Analysis approaches). Those techniques are well established when dealing with converged cross-spectral estimates. In practice, this is never the case because of the finite nature of time records, and it can bring interpretation issues, particularly when increasing the number of references. The significance of the estimated coherence plays a central role in the present work. It involves the implementation of an hypothesis test based upon the statistical behavior of the estimated coherence between incoherent signals. This test, whose principle is to put to zero an estimated coherence that is below a significance threshold, is extended in this work to the multiple coherence case. The TMC (Thresholded Multiple Coherence) is first illustrated in the frame of a numerical benchmark, and then validated in a laboratory wind tunnel test where the interest for denoising purpose is demonstrated. The approach is finally applied to signals recorded inside and outside the cabin of an aircraft during a flight test. The TMC is used either from outside to inside microphones, to analyse the contribution of outside noise sources to the interior noise, or alternatively from inside to outside sensors, for flow noise rejection purpose. (C) 2021 Elsevier Ltd. All rights reserved.
机译:多个相干性是光谱分析工具,允许估计几种,可能部分地,相干输入到一个或多个输出的贡献。这种类型的分析可以使用瀑布后退方法(条件光谱分析框架)或使用输入相关矩阵的特征值分析(虚拟源分析方法)进行。在处理融合的交叉谱估计时,这些技术是很好的。在实践中,由于时间记录的有限性,这绝不是这种情况,它可以带来解释问题,特别是在增加参考数时。估计的一致性的重要性在目前的工作中起着核心作用。它涉及基于估计的信号之间的估计相干性的统计行为来实现假设测试。该测试,其原理是归零的估计一致性低于显着性阈值,在这项工作中延伸到多个一致性情况。首先在数值基准的框架中示出了TMC(阈值多相相干),然后在实验室风隧道试验中验证,其中对去噪目的的兴趣进行说明。最终将该方法应用于飞行试验期间在飞机机舱内外记录的信号。从外部到内部麦克风使用TMC,分析外部噪声源到内部噪声的贡献,或者从内部到外部传感器,用于流动噪声抑制目的。 (c)2021 elestvier有限公司保留所有权利。

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