基于人工神经网络的焊接质量建模

M. Liukkonen, T. Hiltunen, Elina Havia, H. Leinonen, Y. Hiltunen
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引用次数: 25

摘要

多层感知器(mlp)是众所周知的人工神经网络(ann),用于许多不同的应用。本文以波峰焊为研究对象,利用MLP神经网络对产品质量进行预测。目的是建立工艺模型,并确定该方法是否能够可靠地预测焊接缺陷的形成。此外,研究的范围还包括演示所创建模型的预测性能。采用基于mlp的变量选择程序和反向传播算法建立缺陷形成模型,找出影响检测缺陷数量的最重要因素。过程参数被用作MLP网络的输入,每个缺陷类型依次作为模型输出。总之,结果是有希望的,考虑到数据处理程序在电子或任何其他行业的广泛使用,所使用的方法显示出潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling of Soldering Quality by Using Artificial Neural Networks
Multilayer perceptrons (MLPs ) are well-known artificial neural networks (ANNs) that are used in many different applications. In this paper, MLP neural networks were used to predict product quality in a wave soldering research case. The aims were to construct process models and to determine whether the formation of soldering defects could be predicted reliably by using the method. In addition, the scope of the research included demonstrating the prediction performance of the created models. A MLP-based variable selection procedure with a back-propagation algorithm was used to create defect formation models and to find the most important factors affecting the number of detected defects. The process parameters were used as inputs for the MLP network and each defect type in turn as a model output. In conclusion, the results were promising, and the method used showed potential considering the wider use of the data processing procedure in the electronics or any other industry.
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