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Application of Improved Back Propagation Neural Network for the Recognition of Composite Insulator Hydrophobicity Grade

机译:改进的背传播神经网络在复合绝缘子疏水性等级识别中的应用

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The detection of hydrophobicity is an important way to evaluate the performance of composite insulator, which is helpful to the safe operation of composite insulator. In this paper, the image processing technology and Back Propagation neural network is introduced to recognize the composite insulator hydrophobicity grade. First, hydrophobic image is preprocessed by histogram equalization and adaptive median filter, then the image was segmented by Ostu threshold method, and four features associated with hydrophobicity are extracted. Finally, the improved Back Propagation neural network is adopted to recognize composite insulator hydrophobicity grade. The experimental results show that the improved Back Propagation neural network can accurately recognize the composite insulator hydrophobicity.
机译:疏水性的检测是评估复合绝缘体性能的重要途径,这有助于复合绝缘体的安全操作。 在本文中,引入了图像处理技术和后传播神经网络以识别复合绝缘体疏水性等级。 首先,通过直方图均衡和自适应中值滤波器预处理疏水图像,然后通过OSTU阈值方法分割图像,提取与疏水性相关的四个特征。 最后,采用改进的背部传播神经网络来识别复合绝缘体疏水性等级。 实验结果表明,改进的背部传播神经网络可以准确地识别复合绝缘体疏水性。

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