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Detection of ring gear surface defects of wheel speed sensor based on neural network

机译:基于神经网络的车轮速度传感器齿圈齿轮表面缺陷的检测

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摘要

In view of the low efficiency and slow speed caused by the manual inspection of the wheel speed sensor ring gear in the automotive parts industry, this paper proposes a method for detecting the surface defects of the ring gear of the wheel speed sensor based on the neural network. The method is based on the single hidden layer BP neural network model, and the LM algorithm is used to train the network to achieve stability, the defect types are identified by combining the image feature parameters of various gear ring surface defects. The surface defects detection results of the wheel speed sensor ring gear show that the defects classification accuracy of this method is more than 94%, and the detection time of each ring gear is less than 4s. The detection result is better than the manual visual method.
机译:鉴于汽车零部件行业的车轮速度传感器环形齿轮手动检查的低效率和慢速速度,本文提出了一种用于检测基于神经网络的车轮速度传感器的环形齿轮表面缺陷的方法网络。该方法基于单个隐藏层BP神经网络模型,并且LM算法用于训练网络实现稳定性,通过组合各种齿轮环表面缺陷的图像特征参数来识别缺陷类型。表面缺陷的检测结果是车轮速度传感器环形齿轮齿轮的结果表明该方法的缺陷分类精度大于94%,每个环形齿轮的检测时间小于4s。检测结果优于手动视觉方法。

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