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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Artificial Neural Network Controlled GMAW System: Penetration and Quality Assurance in a Multi-Pass Butt Weld Application
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Artificial Neural Network Controlled GMAW System: Penetration and Quality Assurance in a Multi-Pass Butt Weld Application

机译:人工神经网络控制的GMAW系统:多通道对接焊接应用中的渗透和质量保证

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摘要

Intelligent welding parameter control is fast becoming a key instrument for attaining quality consistency in automated welding. Recent scientific breakthroughs in intelligent systems have turned the focus of adaptive welding control to artificial intelligence-based welding parameter control. The aim of this study is to combine artificial neural network (ANN) decision-making software and a machine vision system to develop an adaptive artificial intelligence (AI)-based gas metal arc welding (GMAW) parameter control system. The machine vision system uses a laser sensor to scan the upcoming seam and gather seam profile data. Based on further processing of the seam profile data, welding parameters are optimized by the decision-making system. In this work, the developed system is tested in a multivariable welding condition environment and its performance is evaluated. The quality of the welds was consistent and surpassed the required quality level. Additionally, the heat-affected zone (HAZ) was evaluated by microscopy, X-ray, and scanning electron microscope (SEM) imaging. It is concluded that the developed ANN system is suitable for implementation in automated applications, can improve quality consistency and cost efficiency, and reduce required workpiece preparation and handling.
机译:智能焊接参数控制快速成为实现自动焊接质量一致性的关键仪器。最近在智能系统中的科学突破使自适应焊接控制对基于人工智能的焊接参数控制的重点。本研究的目的是将人工神经网络(ANN)决策软件和机器视觉系统结合起来,以开发自适应人工智能(AI)基础的气体金属弧焊(GMAW)参数控制系统。机器视觉系统使用激光传感器扫描即将到来的接缝并收集缝线型材数据。基于接缝数据的进一步处理,通过决策系统优化焊接参数。在这项工作中,开发系统在多变量焊接条件环境中进行测试,并评估其性能。焊缝的质量一致并超越所需的质量水平。另外,通过显微镜,X射线和扫描电子显微镜(SEM)成像评估热影响区域(HAZ)。结论是,发达的ANN系统适用于自动化应用中的实施,可以提高质量一致性和成本效益,并减少所需的工件准备和处理。

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