Learning nonlinear dynamics in physical modelling synthesis using neural ordinary differential equations

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Abstract

Modal synthesis methods are a long-standing approach for modelling distributed musical systems. In some cases extensions are possible in order to handle geometric nonlinearities. One such case is the high-amplitude vibration of a string, where geometric nonlinear effects lead to perceptually important effects including pitch glides and a dependence of brightness on striking amplitude. A modal decomposition leads to a coupled nonlinear system of ordinary differential equations. Recent work in applied machine learning approaches (in particular neural ordinary differential equations) has been used to model lumped dynamic systems such as electronic circuits automatically from data. In this work, we examine how modal decomposition can be combined with neural ordinary differential equations for modelling distributed musical systems. The proposed model leverages the analytical solution for linear vibration of system's modes and employs a neural network to account for nonlinear dynamic behaviour. Physical parameters of a system remain easily accessible after the training without the need for a parameter encoder in the network architecture. As an initial proof of concept, we generate synthetic data for a nonlinear transverse string and show that the model can be trained to reproduce the nonlinear dynamics of the system. Sound examples are presented.
Original languageEnglish
Title of host publicationProceedings of the 28th International Conference on Digital Audio Effects (DAFx25)
Pages1-8
Number of pages8
Publication statusAccepted/In press - 6 May 2025
Event28th International Conference on Digital Audio Effects - Ancona, Italy
Duration: 2 Sept 20255 Sept 2025
https://dafx25.dii.univpm.it/

Publication series

NameProceedings of the International Conference on Digital Audio Effects
ISSN (Print)2413-6700
ISSN (Electronic)2413-6689

Conference

Conference28th International Conference on Digital Audio Effects
Abbreviated titleDAFx25
Country/TerritoryItaly
CityAncona
Period2/09/255/09/25
Internet address

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