TL;DR
This paper introduces syntonets, a novel complex network model inspired by musical harmony, which captures diverse topologies based on consonance and dissonance between notes, reflecting real-world instrument non-linearities.
Contribution
The work presents a new approach to modeling complex networks using musical consonance concepts, incorporating anharmonicity and partial structures, bridging network science and musical theory.
Findings
Syntonets can produce a wide range of network topologies.
Equal temperament shows more regular consonance patterns.
Shifted partials lead to broader consonance/dissonance ranges.
Abstract
We report an approach to obtaining complex networks with diverse topology, here called syntonets, taking into account the consonances and dissonances between notes as defined by scale temperaments. Though the fundamental frequency is usually considered, in real-world sounds several additional frequencies (partials) accompany the respective fundamental, influencing both timber and consonance between simultaneous notes. We use a method based on Helmholtz's consonance approach to quantify the consonances and dissonances between each of the pairs of notes in a given temperament. We adopt two distinct partials structures: (i) harmonic; and (ii) shifted, obtained by taking the harmonic components to a given power , which is henceforth called the anharmonicity index. The latter type of sounds is more realistic in the sense that they reflect non-linearities implied by real-world…
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