Modification of Amiet's model for turbulence-ingestion noise prediction in rotors

Andrea Piccolo*, Riccardo Zamponi, Francesco Avallone, Daniele Ragni

*Corresponding author for this work

Research output: Contribution to journalArticleScientificpeer-review

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Abstract

Amiet's model for turbulence-ingestion noise prediction for rotors is adapted to incorporate pointwise velocity measurements as input. This is accomplished by using an inverse strip theory approach and transforming the three-dimensional turbulence spectrum, which models inflow conditions, into a one-dimensional term. This latter modification enhances the low-fidelity prediction tool in two key ways. First, it enables its application in cases where turbulence modeling is unavailable, or detailed inflow characterization is impractical. In this way, for example, hot-wire anemometry measurements of the incoming turbulence can be used to compute the acoustic prediction. Second, since the conversion of the turbulence term entails introducing two new functions describing spanwise and axial turbulence correlations; this approach establishes a framework for Amiet's theory in which the contributions to turbulence alteration and noise scattering are separated and represented individually. This “modular” structure enables independent analysis and modeling of these contributions, facilitating the application of Amiet's model to complex flow configurations and rotor geometries. The proposed methodology is successfully validated through experimental measurements of a simplified axial-flight turbulence-interaction setup, where a two-bladed propeller interacts with grid-generated turbulence at three different advance ratios.
Original languageEnglish
Pages (from-to)461-475
Number of pages15
JournalJournal of the Acoustical Society of America
Volume158
Issue number1
DOIs
Publication statusPublished - 2025

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