基于 RBF 神经网络和多岛遗传算法的水力节流阀降噪研究

Machines Pub Date : 2024-05-13 DOI:10.3390/machines12050333
Huawei Wang, Linjia Nan, Xin Zhou, Yaozhong Wu, Bo Wang, Li Hu, Xiaohui Luo
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引用次数: 0

摘要

水力节流阀内部流道的压降过大会产生严重的噪声。为了降低节流阀的噪声,本文建立了节流阀的模型,并对节流阀的流动特性和声学特性进行了仿真。仿真结果表明,半角、喉管入口角和喉管长度等喉管结构参数对节流阀的噪声有显著影响。然后,以这三个主要结构参数为优化变量,采用径向基函数(RBF)神经网络和多岛遗传算法(MIGA)来降低阀门的噪声。通过 RBF 神经网络建立了阀门结构参数与噪声之间关系的近似模型,并使用 MIGA 对近似模型进行优化。最后,根据获得的最优参数建立了最优阀门模型,并通过仿真和实验对其噪声进行了分析。研究结果表明,结合 RBF 神经网络和 MIGA 的优化方法能有效降低液压节流阀的噪声。
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Research on Noise Reduction of Water Hydraulic Throttle Valve Based on RBF Neural Network and Multi-Island Genetic Algorithm
Excessive pressure drop within the internal flow channel of the water hydraulic throttle valve will generate severe noise. In order to reduce the noise of the throttle valve, in this paper, the model of the throttle valve was established, and the flow characteristics and acoustic characteristics of the valve were simulated. The simulation results showed that the parameters of the throat structure, such as the half angle, throat inlet angle and throat length, have a significant effect on the noise of the valve. Then, the three main structural parameters were used as optimization variables, and radial basis function (RBF) neural networks and multi-island genetic algorithms (MIGA) were used to reduce the noise of the valve. The approximate model of the relationship between the structural parameters of the valve and noise was established by RBF neural networks, and MIGA was used to optimize the approximate model. Finally, the optimal valve model was established based on the obtained optimal parameters, and its noise was analyzed through simulation and experiment. The research results indicated that the optimization method, which combines RBF Neural Network and MIGA, can effectively reduce the noise of hydraulic throttle valves.
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