Physically Architected Recurrent Neural Networks for Nonlinear Dynamical Loudspeaker Modeling | IEEE Journals & Magazine | IEEE Xplore

Physically Architected Recurrent Neural Networks for Nonlinear Dynamical Loudspeaker Modeling


Abstract:

The nonlinear behavior of loudspeakers is of great interest in a number of audio processing algorithms, as it may have a detrimental effect on their performance. These al...Show More

Abstract:

The nonlinear behavior of loudspeakers is of great interest in a number of audio processing algorithms, as it may have a detrimental effect on their performance. These algorithms may be further enhanced when an accurate model of the loudspeaker's input-output behavior is available. A variety of approaches has been investigated in the past to solve this task via nonlinear adaptive system identification. Their modeling capabilities are often limited due to a mismatch with electroacoustic principles of real loudspeakers. This paper therefore presents a novel approach using recurrent neural networks (RNN) specifically designed to match the dynamical loudspeaker's physical model behavior. By means of the physical model and its corresponding state-space representation, we derive three conceptually different RNN architectures, which are initially trained on synthetic audio data in order to gain insights into the required training procedure and limitations. Further training and evaluation of the preferred architecture on real loudspeaker recordings shows consistent improvements of the mean-squared modeling error compared to a linear system model and to nonlinear baseline algorithms.
Published in: IEEE Transactions on Signal Processing ( Volume: 72)
Page(s): 5371 - 5387
Date of Publication: 14 October 2024

ISSN Information:


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