Identification of Key Factors Influencing Sound Insulation Performance of High-Speed Train Composite Floor Based on Machine Learning

Acoustics Pub Date : 2023-12-20 DOI:10.3390/acoustics6010001
Rui-qian Wang, Dan Yao, Jie Zhang, Xinbiao Xiao, Ziyan Xu
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Abstract

The body of a high-speed train is a composite structure composed of different materials and structures. This makes the design of a noise-reduction scheme for a car body very complex. Therefore, it is important to clarify the key factors influencing sound insulation in the composite structure of a car body. This study uses machine learning to evaluate the key factors influencing the sound insulation performance of the composite floor of a high-speed train. First, a comprehensive feature database is constructed using sound insulation test results from a large number of samples obtained from laboratory acoustic measurements. Subsequently, a machine learning model for predicting the sound insulation of a composite floor is developed based on the random forest method. The model is used to analyze the sound insulation contributions of different materials and structures to the composite floor. Finally, the key factors influencing the sound insulation performance of composite floors are identified. The results indicate that, when all material characteristics are considered, the sound insulation and surface density of the aluminum profiles and the sound insulation of the interior panels are the three most important factors affecting the sound insulation of the composite floor. Their contributions are 8.5%, 7.3%, and 6.9%, respectively. If only the influence of the core material is considered, the sound insulation contribution of layer 1 exceeds 15% in most frequency bands, particularly at 250 and 500 Hz. The damping slurry contributed to 20% of the total sound insulation above 1000 Hz. The results of this study can provide a reference for the acoustic design of composite structures.
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基于机器学习的高速列车复合地板隔音性能关键影响因素识别
高速列车的车身是由不同材料和结构组成的复合结构。这使得车身降噪方案的设计非常复杂。因此,明确影响车体复合结构隔音性能的关键因素非常重要。本研究利用机器学习评估影响高速列车复合材料地板隔音性能的关键因素。首先,利用从实验室声学测量中获得的大量样本的隔声测试结果构建了一个综合特征数据库。随后,基于随机森林方法建立了预测复合材料地板隔声性能的机器学习模型。该模型用于分析不同材料和结构对复合地板隔音性能的贡献。最后,确定了影响复合地板隔音性能的关键因素。结果表明,在考虑所有材料特性的情况下,铝型材的隔音性能和表面密度以及内饰板的隔音性能是影响复合地板隔音性能的三个最重要因素。它们的贡献率分别为 8.5%、7.3% 和 6.9%。如果只考虑芯材的影响,第 1 层的隔音贡献率在大多数频段都超过了 15%,尤其是在 250 赫兹和 500 赫兹。阻尼浆料在 1000 赫兹以上的总隔声量中占 20%。这项研究的结果可为复合材料结构的隔音设计提供参考。
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