基于神经网络的电阻点焊控制与质量预测

Nenad Ivezic, John D. Allen, Thomas Zacharia
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引用次数: 28

摘要

本文介绍了基于神经网络的工业电阻点焊过程控制和焊接质量评价系统的开发和评价。所开发的系统利用循环神经网络进行过程控制,并利用循环网络和静态网络进行质量预测。第一部分介绍了一个既能控制焊接过程又能实时评估焊接质量的系统。第二部分描述了基于静态神经网络的焊接质量评估系统的开发和评估,该系统依赖于实验设计来限制环境可变性的影响。并讨论了相关的数据分析方法。由分析产生的焊缝分类器成功地平衡了预测能力和解释的简单性。这两个系统的结果清楚地表明,神经网络可以用于解决电阻点焊行业常见的两个重要问题,即过程本身的控制和焊接质量的无损测定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural network-based resistance spot welding control and quality prediction
This paper describes the development and evaluation of neural network-based systems for industrial resistance spot welding process control and weld quality assessment. The developed systems utilize recurrent neural networks for process control and both recurrent networks and static networks for quality prediction. The first section describes a system capable of both welding process control and real-time weld quality assessment. The second describes the development and evaluation of a static neural network-based weld quality assessment system that relied on experimental design to limit the influence of environmental variability. Relevant data analysis methods are also discussed. The weld classifier resulting from the analysis successfully balances predictive power and simplicity of interpretation. The results presented for both systems demonstrate clearly that neural networks can be employed to address two significant problems common to the resistance spot welding industry, control of the process itself, and nondestructive determination of resulting weld quality.
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