High-Precision Modeling and Prediction of Acoustic Comfort for Electric Bus Based on BPNN and XGBoost

E. Zhang, Yi Chen, Xianyi Chen, Junbo Zhang, Pengwu Xu, Jianming Zhuo
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引用次数: 1

Abstract

At present, the A-weighted sound pressure level inside electric buses has generally reached the industry decibel limit, and sound quality research is a considerable way to improve future vehicle performance. In this paper, 64 noise samples from eight electric buses are collected, with acoustic comfort as the evaluation index, the subjective evaluation tests are carried out by rank score comparison (RSC), and nine objective psycho-acoustic parameters of all the samples are calculated to form a basic database. Aiming at the high-precision modeling requirement of electric bus sound quality and taking objective parameters and acoustic comfort as input and output variables, two machine learning algorithms, back propagation neural network (BPNN) and extreme gradient boosting (XGBoost), are respectively performed to establish nonlinear comfort evaluation models through data training, and ultimately, based on sample data test and relative error comparison, the acoustic comfort evaluation model with prediction accuracy of 95.65% and its mathematical formula are determined. This lays a key technical foundation for the future evaluation and optimization of electric bus sound quality.
基于BPNN和XGBoost的电动客车声舒适性高精度建模与预测
目前,电动客车内部a加权声压级已普遍达到行业分贝限值,音质研究是未来提高车辆性能的重要途径。本文采集了8辆电动客车的64个噪声样本,以声学舒适性为评价指标,采用秩分法(RSC)进行主观评价测试,并计算所有样本的9个客观心理声学参数,形成基本数据库。针对电动客车音质的高精度建模要求,以客观参数和声舒适性为输入和输出变量,分别采用back propagation neural network (BPNN)和extreme gradient boost (XGBoost)两种机器学习算法,通过数据训练建立非线性舒适性评价模型,最终基于样本数据测试和相对误差比较,确定了预测精度为95.65%的声舒适性评价模型及其数学公式。这为今后评价和优化电动客车音质奠定了关键的技术基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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