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Abstract
A Brüel & Kjaer type 4206 impedance tube is used to create a dataset of sound absorption coefficient (SAC) measurements for porous materials, such as polyethylene terephthalate and melamine foam. The objective is to identify factors contributing to measurement uncertainty and to enhance the repeatability and reliability of impedance tube tests. A total of 864 measurements are performed, focusing on four factors: thickness, diameter, material, and rotation angle. This contribution focuses on the analysis of the factors, employing explainable machine learning techniques, comparing both univariate and multivariate methods. Predictive supervised classification algorithms, including Neural Networks, Decision Trees, k-Nearest Neighbors, Linear Discriminant Analysis, and Random Forests are employed to predict which factor classes are active, based on the SAC measurements. Accurate predictions indicate that variations in the examined factors significantly influence the SAC, particularly within specific frequency ranges. The findings reveal that variations in thickness, porous material type, and diameter introduce significant uncertainties in measurements, especially at low frequencies. In contrast, the rotation angle has minimal impact on the SAC, suggesting that the measurement procedure is robust regarding different angle positions. Notably, multivariate algorithms identified higher classification performance, implying greater measurement uncertainty probably due to the interrelationships among factors under analysis.
Original language | English |
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Publication status | Submitted - Nov 2024 |
Event | NOVEM 2025: Noise and Vibration Emerging Methods - Kongresshaus Garmisch-Partenkirchen, Garmisch-Partenkirchen, Germany Duration: 6 May 2025 → 8 May 2025 https://novem2025.sciencesconf.org/ |
Conference
Conference | NOVEM 2025: Noise and Vibration Emerging Methods |
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Abbreviated title | NOVEM |
Country/Territory | Germany |
City | Garmisch-Partenkirchen |
Period | 6/05/25 → 8/05/25 |
Internet address |
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Alfonso Caiazzo
Adams, C. (Host) & Kraxberger, F. (Host)
1 Apr 2024 → 30 Jun 2024Activity: Hosting a visitor › Hosting a researcher (Inland)