A Neural Network Quality Classifier For Tig Welding Without Filler

P. Li, M. Fang, J. Lucas
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Abstract

A neural network based on error back propagation learning algorithm has been successfully trained and tested as a quality classifier for TIG welding of stainless steel without filler. The classifer consists of two parallelly connected sub-networks, one for the quality of bead penetration and the other for bead profile. The criterion for the termination of training and the decision rule for the network prediction are self-consistent and are both related to the error tolerance used during training. Three types of borders between the desired classes have been predicted. In contrast to conventional understanding, the accuracy of the classifier can be improved and the size of the borders be reduced by choosing a relatively large error tolerance.
无填料Tig焊的神经网络质量分类器
将基于误差反向传播学习算法的神经网络作为无填料不锈钢TIG焊接的质量分类器进行了成功的训练和测试。该分类器由两个平行连接的子网络组成,一个用于检测头部穿透质量,另一个用于检测头部轮廓。训练的终止准则和网络预测的决策规则是自洽的,都与训练时使用的容错性有关。在期望的类之间有三种类型的边界被预测。与传统的理解相反,通过选择相对较大的误差容忍度,可以提高分类器的准确性并减小边界的大小。
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