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The intelligent detection method study of PQFP solder joint defects based on improved neural network

机译:基于改进神经网络的PQFP焊点缺陷的智能检测方法研究

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The quality of solder joint has a direct effect on the reliability of products, while the detection of solder joint defects plays an important part in the inspection of solder joint quality. So scientific methods should be selected to achieve the intelligent detection of solder joint defects. In this paper, a forward neural network with BP learning algorithm is introduced according to the relationship between geometric features vector of PQFP solder joint and solder joint defects. During training neural network with standard BP algorithm, there are some problems such as slow convergence and easy to trap into local minimum of the error function, etc. So genetic algorithm is brought in the neural network train ing, the specific approach is that firstly uses genetic algorithm to optimize the connection weights and thresholds of neural network, then trains the network with BP algorithm again. The results show that the improved training method can accelerate the convergence process and reduce the training error to better the network performance. Therefore, it is helpful to improve the classification of solder joint defects by applying this method in the detection of complex solder joint defects
机译:焊点质量对产品的可靠性直接影响,而焊接关节缺陷的检测在焊接关节质量的检查中起着重要的部分。因此,应选择科学方法以实现焊接关节缺陷的智能检测。在本文中,根据PQFP焊点和焊接接头缺陷的几何特征向量之间的关系引入了具有BP学习算法的前向神经网络。在具有标准BP算法的训练神经网络期间,存在一些问题,例如缓慢的收敛性,易于陷入误差功能的局部最小值等。所以遗传算法被带入神经网络训练,具体方法是首先使用遗传算法优化神经网络的连接权重和阈值,然后再次用BP算法列车。结果表明,改进的训练方法可以加速收敛过程并降低训练误差以更好地网络性能。因此,通过在检测到复合焊点缺陷的检测中,通过应用这种方法来改善焊接关节缺陷的分类是有帮助的

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