首页> 外文会议>Seventeenth National Conference on Manufacturing Research, 17th, Sep 4-6, 2001, Cardiff University, UK >A novel, on-line, three-dimensional image analysis control approach for non-destructive testing of spot welds and a discussion of a current off-line testing technique
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A novel, on-line, three-dimensional image analysis control approach for non-destructive testing of spot welds and a discussion of a current off-line testing technique

机译:用于点焊无损检测的新颖的在线三维图像分析控制方法,以及当前离线测试技术的讨论

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At present, the quality of spot welds on a production line is monitored by the use of an off-line ultrasonic non-destructive testing technique. This work describes the use of a novel feed back on-line non-destructive control technique that is based on the examination and analysis of the three dimentional shape, features and area of the spot weld. This novel technique also requires the use of a neural network modelling and an intelligent system's analysis. Experimental data, from a design of experiments on the performance of the spot welds and their shapes, have been selected and analysed using the neural network model. The predictions of the neural network model using the test data compare favourably with the experimental data. The correlation coefficient was found to be better than 0.9 with a root mean square (r.m.s.) error of less than 0.065. With most spot-welds, the predictions of the ultrasonic compare unfavourably with the experimental data and those of the neural network. However, the predictions of the neural network give a more reliable diagnosis of the spot weld's mechanical strength. Hence, the on-line method of analysing the shape of a spot weld seems to offer maximum scope for predicting and controlling the quality of the spot weld.
机译:当前,通过使用离线超声无损检测技术来监控生产线上的点焊质量。这项工作描述了一种新颖的反馈在线无损控制技术的使用,该技术基于对点焊的三个三维形状,特征和面积的检查和分析。这项新技术还需要使用神经网络建模和智能系统的分析。使用神经网络模型从点焊性能及其形状的实验设计中选择并分析了实验数据。使用测试数据对神经网络模型的预测与实验数据相比具有优势。发现相关系数优于0.9,且均方根(r.m.s.)误差小于0.065。对于大多数点焊,超声波的预测与实验数据和神经网络的预测相比均不利。但是,神经网络的预测可以更可靠地诊断点焊的机械强度。因此,分析点焊形状的在线方法似乎为预测和控制点焊质量提供了最大的范围。

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