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Automatic gap tracking during high power laser welding based on particle filtering method and BP neural network

机译:基于粒子滤波法和BP神经网络的高功率激光焊接过程中自动间隙跟踪

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摘要

A numerical simulation model was established to investigate characteristics of keyhole and molten pool during the laser butt welding. The sharp point in front of the keyhole and molten pool revealed the position of the gap, and its deviation in transversal direction between the centroid of the keyhole demonstrated the real-time deviation between the laser beam and real gap. A visual system was designed to capture real-time infrared images of keyhole and molten pool, and the real-time deviation data between the laser beam and gap was extracted from these images. The state and measurement equations of real gap position prediction were developed based on the welding system. The particle filtering (PF) method was employed to improve the accuracy of the prediction of the gap position. Considering the non-linear and unknown distribution of system error and measurement error, a Back Propagation (BP) neural network was developed to compensate for these errors. The effectiveness of the established PF method combined with BP network was validated by experimental results, and higher prediction accuracy of gap position tracking was achieved.
机译:建立了数值模拟模型,以研究激光对接焊接期间锁孔和熔池的特性。钥匙孔和熔池前面的尖锐点揭示了间隙的位置,并且锁孔的质心之间的横向偏差证明了激光束与实际间隙之间的实时偏差。设计用于捕获锁孔和熔池的实时红外图像的视觉系统,并且从这些图像中提取激光束和间隙之间的实时偏差数据。基于焊接系统开发了实际间隙位置预测的状态和测量方程。采用颗粒滤波(PF)方法来提高间隙位置预测的准确性。考虑到系统错误和测量误差的非线性和未知分布,开发了反向传播(BP)神经网络以补偿这些错误。通过实验结果验证了已建立的PF方法与BP网络结合的有效性,实现了差距位置跟踪的更高预测精度。

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