Research Article

MACHINE LEARNING-BASED ASSESSMENT AND PREDICTION OF PSYCHOACOUSTIC INDICATORS OF ROAD TRAFFIC NOISE

Volume: 13 Number: 3 September 30, 2025
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MACHINE LEARNING-BASED ASSESSMENT AND PREDICTION OF PSYCHOACOUSTIC INDICATORS OF ROAD TRAFFIC NOISE

Abstract

This study explores the use of machine learning techniques to evaluate and predict psychoacoustic noise characteristics associated with pass-by road traffic events. Using a dataset comprising various acoustic and psychoacoustic parameters such as LAeq, FS50, L10, L90, and spectral indicators, a comprehensive analysis was conducted to assess their predictive potential. Gradient Boosting, Random Forest, and ARIMA models were employed for different tasks, including both classification and time-series forecasting. In addition, feature engineering techniques were used to create composite variables and enhance model input quality, while sequence-based learning methods allowed for temporal dynamics to be captured. The best-performing Gradient Boosting model achieved R² = 0.63 and MAE = 0.122 in predicting LAeq and FS50 indicators. The dataset used consisted of 1,200 pass-by noise events from an open-access repository, including both acoustic (LAeq, L10, L90) and psychoacoustic (FS50, R50, N50, S50) metrics. The results highlight the capability of machine learning not only to improve the accuracy of psychoacoustic modeling but also to support real-time, perception-aware urban noise monitoring systems. Such approaches can enable more responsive and adaptive noise management strategies in smart city planning. These findings demonstrate the potential of ML-based models to inform proactive urban noise management and public health strategies.

Keywords

References

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Details

Primary Language

English

Subjects

Transportation and Traffic, Transportation Engineering

Journal Section

Research Article

Publication Date

September 30, 2025

Submission Date

April 14, 2025

Acceptance Date

September 2, 2025

Published in Issue

Year 2025 Volume: 13 Number: 3

APA
Karahançer, Ş. (2025). MACHINE LEARNING-BASED ASSESSMENT AND PREDICTION OF PSYCHOACOUSTIC INDICATORS OF ROAD TRAFFIC NOISE. Mühendislik Bilimleri Ve Tasarım Dergisi, 13(3), 675-686. https://doi.org/10.21923/jesd.1675666
AMA
1.Karahançer Ş. MACHINE LEARNING-BASED ASSESSMENT AND PREDICTION OF PSYCHOACOUSTIC INDICATORS OF ROAD TRAFFIC NOISE. JESD. 2025;13(3):675-686. doi:10.21923/jesd.1675666
Chicago
Karahançer, Şebnem. 2025. “MACHINE LEARNING-BASED ASSESSMENT AND PREDICTION OF PSYCHOACOUSTIC INDICATORS OF ROAD TRAFFIC NOISE”. Mühendislik Bilimleri Ve Tasarım Dergisi 13 (3): 675-86. https://doi.org/10.21923/jesd.1675666.
EndNote
Karahançer Ş (September 1, 2025) MACHINE LEARNING-BASED ASSESSMENT AND PREDICTION OF PSYCHOACOUSTIC INDICATORS OF ROAD TRAFFIC NOISE. Mühendislik Bilimleri ve Tasarım Dergisi 13 3 675–686.
IEEE
[1]Ş. Karahançer, “MACHINE LEARNING-BASED ASSESSMENT AND PREDICTION OF PSYCHOACOUSTIC INDICATORS OF ROAD TRAFFIC NOISE”, JESD, vol. 13, no. 3, pp. 675–686, Sept. 2025, doi: 10.21923/jesd.1675666.
ISNAD
Karahançer, Şebnem. “MACHINE LEARNING-BASED ASSESSMENT AND PREDICTION OF PSYCHOACOUSTIC INDICATORS OF ROAD TRAFFIC NOISE”. Mühendislik Bilimleri ve Tasarım Dergisi 13/3 (September 1, 2025): 675-686. https://doi.org/10.21923/jesd.1675666.
JAMA
1.Karahançer Ş. MACHINE LEARNING-BASED ASSESSMENT AND PREDICTION OF PSYCHOACOUSTIC INDICATORS OF ROAD TRAFFIC NOISE. JESD. 2025;13:675–686.
MLA
Karahançer, Şebnem. “MACHINE LEARNING-BASED ASSESSMENT AND PREDICTION OF PSYCHOACOUSTIC INDICATORS OF ROAD TRAFFIC NOISE”. Mühendislik Bilimleri Ve Tasarım Dergisi, vol. 13, no. 3, Sept. 2025, pp. 675-86, doi:10.21923/jesd.1675666.
Vancouver
1.Şebnem Karahançer. MACHINE LEARNING-BASED ASSESSMENT AND PREDICTION OF PSYCHOACOUSTIC INDICATORS OF ROAD TRAFFIC NOISE. JESD. 2025 Sep. 1;13(3):675-86. doi:10.21923/jesd.1675666