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首页> 外文期刊>Noise Control Engineering Journal >Prediction of sound absorption property of metal rubber using general regression neural network
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Prediction of sound absorption property of metal rubber using general regression neural network

机译:一般回归神经网络预测金属橡胶的吸声特性

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Metal rubber (MR) is an excellent sound absorption material which can be utilized in extremely harsh environments. Traditional experimental studies are incomplete for MR with random structural parameters. In this article, the general regression neural network (GRNN) method is developed to comprehensively predict the sound absorption behaviors of MR with random structural parameters. Sixty samples are utilized and divided into training and test set. Training set contains 50 samples to establish the GRNN model. Input training parameters include the porosity, wire diameter and thickness, while the target dates consist of sound absorption coefficients at six central frequencies as well as their average values. The remaining 10 samples constitute the testing set; sound absorption coefficients can be obtained by inputting their structure parameters. Results indicate that the proposed approach is reliable to design and predict the sound absorption properties of MR in engineering field. (C) 2018 Institute of Noise Control Engineering.
机译:金属橡胶(MR)是一种优异的吸声材料,可用于极其恶劣的环境。传统的实验研究对于随机结构参数的MR不完整。在本文中,开发了一般回归神经网络(GRNN)方法以综合预测MR随机结构参数的吸音行为。利用六十个样品并分为训练和测试集。培训集包含50个样本以建立GRNN模型。输入训练参数包括孔隙率,线径和厚度,而目标日期由六个中央频率的吸声系数以及它们的平均值组成。其余10个样本构成测试集;通过输入结构参数可以获得声音吸收系数。结果表明,所提出的方法可靠地设计和预测工程领域MR的吸音特性。 (c)2018年噪声控制工程研究所。

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