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Identification of cavitation intensity for high-speed aviation hydraulic pumps using 2D convolutional neural networks with an input of RGB-based vibration data

机译:使用2D卷积神经网络对基于RGB的振动数据输入的高速航空液压泵空化强度的识别

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摘要

Power density is an important attribute for aviation hydraulic pumps, which can greatly benefit from improving rotational speed. However, cavitation tends to occur in the pump at high rotational speeds, thus decreasing its volumetric efficiency and lifetime. Therefore, cavitation identification is essential and urgent for high-speed aviation hydraulic pumps. In this paper, we propose a real-time method for identifying the cavitation conditions based on the vibration signals measured at the pump housing. The collected three-channel vibration data are cut into frames to be transformed into RGB images and then these images are fed into a 2D convolutional neural network (CNN) to identify the levels of cavitation intensity. The experimental results show that the CNN model can achieve high accuracy rates when it accepts optimal RGB images. In addition, RGB images are found to be more robust against noise than their gray counterparts in the case of vibration-based cavitation identification.
机译:功率密度是航空液压泵的重要属性,这可以极大地受益于提高旋转速度。 然而,气相倾向于在泵中以高旋转速度发生,从而降低其体积效率和寿命。 因此,空化识别对于高速航空液压泵是必不可少的和迫切的。 在本文中,我们提出了一种基于在泵壳体上测量的振动信号来识别空化条件的实时方法。 将收集的三声道振动数据切割成帧以将其变换为RGB图像,然后将这些图像馈入2D卷积神经网络(CNN)以识别空化强度的水平。 实验结果表明,当它接受最佳RGB图像时,CNN模型可以实现高精度率。 另外,在基于振动的空化识别的情况下,发现RGB图像比其灰色对应物更加稳健。

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