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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers >Optimum design of perforated plug mufflers using a neural network and a genetic algorithm
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Optimum design of perforated plug mufflers using a neural network and a genetic algorithm

机译:基于神经网络和遗传算法的带孔消音器优化设计

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摘要

Research on new techniques of perforated plug silencers has been well addressed. Most researchers have explored noise reduction effects based on a pure plane wave theory. However, the maximum noise reduction of a silencer under a space constraint, which frequently occurs in engineering problems, is rarely addressed. Therefore, the optimum design of mufflers becomes an essential issue. In this paper, to save the design time during the flexible optimum process, a simplified mathematical model of a muffler is constructed with a neural network with a series of real data - input design data (muffle dimensions) and output data (theoretical sound transmission loss (STL)) were approximated by a theoretical mathematical model (TMM) in advance. To assess the optimal mufflers, the neural network model (NNM) is used as an objective function in conjunction with a genetic algorithm (GA). Moreover, the numerical cases of sound elimination with respect to various parameter sets and pure tones (500, 1000, and 2000 Hz) are exemplified and discussed. Before the GA operation is carried out, the approximation between TMM and real data is checked. In addition, both the TMM and NNM are compared. It is found that the TMM and the experimental data are in agreement. Moreover, the TMM and NNM conform. Optimal results reveal that the maximum amount of the STL can be optimally obtained at the desired frequencies. Consequently, the optimum algorithm proposed in this study can provide an efficient method to develop optimal silencers in industry. [PUBLICATION ABSTRACT]
机译:多孔塞式消音器新技术的研究已经得到很好的解决。大多数研究人员已经基于纯平面波理论探索了降噪效果。然而,很少解决在工程问题中经常发生的在空间限制下的消音器的最大降噪。因此,消声器的优化设计成为必不可少的问题。在本文中,为了节省灵活的优化过程中的设计时间,利用神经网络构造了一个消声器的简化数学模型,该神经网络具有一系列实际数据-输入设计数据(消声器尺寸)和输出数据(理论声传递损失) (STL))预先通过理论数学模型(TMM)进行估算。为了评估最佳消声器,将神经网络模型(NNM)与遗传算法(GA)结合用作目标函数。此外,举例说明并讨论了针对各种参数集和纯音(500、1000和2000 Hz)消音的数值情况。在执行GA操作之前,请检查TMM与实际数据之间的近似值。此外,将TMM和NNM进行了比较。发现TMM与实验数据吻合。而且,TMM和NNM一致。最佳结果表明,可以在所需频率下最佳地获得最大数量的STL。因此,本研究提出的最优算法可以为工业上开发最优消音器提供有效的方法。 [出版物摘要]

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