Compensation of Modeling Errors for the Aeroacoustic Inverse Problem with Tools from Deep Learning

IF 1.3 Q3 ACOUSTICS
Hans-Georg Raumer, D. Ernst, C. Spehr
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引用次数: 1

Abstract

In the field of aeroacoustic source imaging, one seeks to reconstruct acoustic source powers from microphone array measurements. For most setups, one cannot expect a perfect reconstruction. The main effects that contribute to this reconstruction error are data noise and modeling errors. While the data noise is accounted for in most advanced reconstruction methods, e.g., by a proper regularization strategy, the modeling error is usually neglected. This article proposes an approach that extends regularized inverse methods with a mechanism that takes the modeling error into account. The presented algorithmic framework utilizes the representation of the Fast Iterative Shrinkage Thresholding Algorithm (FISTA) algorithm by a neural network and uses standard gradient schemes from the field of deep learning. It is directly applicable to a single measurement, i.e., a prior training phase on previously generated data is not required. The capabilities of the method are illustrated by several numerical examples.
利用深度学习工具补偿气动声学逆问题的建模误差
在气动声源成像领域,人们试图从麦克风阵列测量中重建声源功率。对于大多数设置,人们不能期望完美的重建。造成这种重构误差的主要影响是数据噪声和建模误差。虽然在大多数先进的重建方法中,例如通过适当的正则化策略考虑了数据噪声,但通常忽略了建模误差。本文提出了一种扩展正则化逆方法的方法,该方法采用了一种考虑建模误差的机制。所提出的算法框架利用神经网络表示快速迭代收缩阈值算法(FISTA)算法,并使用来自深度学习领域的标准梯度方案。它直接适用于单个测量,即不需要对先前生成的数据进行先前的训练阶段。通过几个数值算例说明了该方法的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.70
自引率
0.00%
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0
审稿时长
11 weeks
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