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高声强有流管道中的测点声压预测技术

Sound pressure prediction at measurement points in high-intensity sound and flow-through pipeline

  • 摘要: 在高声强有流管道的航空声学试验中,需要实时监测指定测点的声压信号,以确保测试的准确性。然而,直接在测点安装传声器会对管道内薄壁结构的振动响应产生显著影响。因此,有必要利用非关键部位的传声器声压测量值来有效预测关键部位测点的声压。现有相关理论与方法多基于线性、无气流和低声强环境的假设,与文章研究的航空声学场景不符。针对低速气流高声强管道环境内薄壁结构的表面声压预测问题,提出一种基于误差反向传播神经网络的声压预测算法,建立了实际测点与目标测点声压间的时域映射关系。实验结果验证了该方法的可行性。

     

    Abstract: In aviation acoustic tests conducted in high-intensity sound and flow-through pipelines, real-time monitoring of sound pressure signals at designated measurement points is required to ensure test accuracy. However, direct microphone installation at these points significantly perturbs the vibration response of thin-walled pipeline structures. Therefore, it is necessary to predict sound pressure at critical measurement points using measurements acquired from non-critical locations. Most existing theories and methods rely on assumptions of linearity, quiescent (no-flow) conditions, and low-intensity sound environments—assumptions that are fundamentally inconsistent with the actual aviation acoustic testing scenarios addressed in this paper. To address the challenge of predicting surface sound pressure on test specimens under low-speed airflow and high-intensity sound pipeline conditions, this paper proposes a backpropagation neural network–based sound pressure prediction algorithm to establish a time-domain mapping between measured and target point sound pressures. Experimental results validate the feasibility of the proposed method.

     

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