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Sound Quality Prediction of Vehicle Interior Noise under Multiple Working Conditions Using Back-Propagation Neural Network Model

机译:反向传播神经网络模型在多种工况下车辆内部噪声的声品质预测

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This paper presents a back-propagation neural network model for sound quality prediction (BPNN-SQP) of multiple working conditions’ vehicle interior noise. According to the standards and regulations, four kinds of vehicle interior noises under operating conditions, including idle, constant speed, accelerating and braking, are acquired. The objective psychoacoustic parameters and subjective annoyance results are respectively used as the input and output of the BPNN-SQP model. With correlation analysis and significance test, some psychoacoustic parameters, such as loudness, A-weighted sound pressure level, roughness, articulation index and sharpness, are selected for modeling. The annoyance values of unknown noise samples estimated by the BPNN-SQP model are highly correlated with the subjective annoyances. Conclusion can be drawn that the proposed BPNN-SQP model has good generalization ability and can be applied in sound quality prediction of vehicle interior noise under multiple working conditions.
机译:本文提出了一种用于多种工作条件下车辆内部噪声的声音质量预测(BPNN-SQP)的反向传播神经网络模型。根据标准和法规,获取了在怠速,恒速,加速和制动等操作条件下的四种车内噪声。客观的心理声学参数和主观的烦恼结果分别用作BPNN-SQP模型的输入和输出。通过相关性分析和显着性检验,选择了一些心理声学参数,例如响度,A加权声压级,粗糙度,清晰度指数和清晰度。 BPNN-SQP模型估计的未知噪声样本的烦恼值与主观烦恼高度相关。结论表明,所提出的BPNN-SQP模型具有良好的泛化能力,可用于多种工况下车辆内部噪声的音质预测。

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