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Research on intelligent recognition of axis orbit based on Hu moment invariants and fractal box dimension

机译:基于胡时刻不变的轴轨道智能识别研究与分形箱尺寸

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The shape feature of axis orbit is very important to judge the fault of rotor system. After the sampling and quantization of the image of axis orbit, the edge of the image will be inaccurate. Therefore, the discretization of image has a great influence on the calculation of higher order moments of the moment invariants. High order moments are mainly used to describe image details. The fractal dimension is sensitive to the details and complexity of the image. Therefore, this paper proposes a method of combining fractal dimension with moment invariants. And Canny operator is used to detect the edge of axis orbit image. The Hu invariant moments of the image and the fractal box dimension are used as the feature vectors of BP neural networks. The 40 groups of samples of the typical fault axis orbit of the experiment are trained and sampled to test. The recognition rate of the 8 groups of axis orbit is up to 100%, and the recognition effect is satisfactory. The results show that the method has high recognition speed and high recognition accuracy, and has good practical value for the intelligent fault diagnosis of the rotor system by using the axis orbit.
机译:轴轨道的形状特征对于判断转子系统的故障非常重要。在轴轨道图像的采样和量化之后,图像的边缘将不准确。因此,图像的离散化对当时不变的时刻的计算的计算有很大的影响。高阶矩主要用于描述图像细节。分形尺寸对图像的细节和复杂性敏感。因此,本文提出了一种将分形维数与力矩不变的方法组合。和罐头运算符用于检测轴轨道图像的边缘。图像的HU不变矩和分形箱尺寸用作BP神经网络的特征向量。培训并采样40组典型故障轴轨道的典型故障轴轨道以进行测试。 8组轴轨道的识别率高达100 %,并且识别效果是令人满意的。结果表明,该方法具有高识别速度和高识别精度,通过使用轴轨道具有良好的智能故障诊断良好的实用价值。

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