
A fast sound power prediction tool for genset noise using machine learning.
This paper investigates the application of machine learning regression algorithms—Kernel Ridge Regression (KRR), Huber Regressor (HR), and Gaussian Process Regression (GPR) for predicting sound power levels of gensets, offering significant value for marketing and sales teams during
the early bidding process. When engine sizes and genset enclosure dimensions are tentative, and measured noise data is unavailable, these algorithms enable reliable noise level estimation for unbuilt gensets. The study utilizes high-fidelity datasets from over 100 experiments conducted at
Cummins Acoustics Technology Center (ATC) in a hemi-anechoic chamber, adhering to ISO 3744 standards. By using readily available information from the bidding and initial design stages, KRR predicts sound power with an average accuracy of ±5 dBA. While HR and GPR show slightly higher
prediction errors, all models effectively capture the overall noise trends across various genset configurations. These findings present a promising method for early-stage noise estimation in genset design.
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Keywords: 12.1.5 Primary power sources (diesel engines, gas turbines); 72.4 Sound power
Document Type: Research Article
Affiliations: Applied Technology, Cummins (United States), URL: https://ror.org/03y28aj90
Publication date: 01 April 2025
NCEJ is the pre-eminent academic journal of noise control. It is the Journal of the Institute of Noise Control Engineering of the USA. Since 1973 NCEJ has served as the primary source for noise control researchers, students, and consultants.
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