增量成形中的数据驱动方法:利用数据采集揭示提高制造效率的途径

Q1 Engineering
S. Pratheesh Kumar, V. Joseph Stanley, S. Nimesha
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引用次数: 0

摘要

增量成形是一种用途广泛、成本效益高的钣金成形技术,广泛应用于各种行业的小批量制造和原型制造。数据驱动方法的最新进展,包括机器视觉、神经网络和3D重建方法,大大提高了增量成形过程的精度和效率。本研究探讨了先进数据采集和处理技术的集成,以提高增量成形的精度、自动化和缺陷检测能力。关键的进展,如机器人辅助成形,计算机控制的刀具路径生成从CAD模型,和实时质量监测使用机器视觉进行了讨论。研究了单视图和多视图三维重建方法在优化刀具路径策略和提高成形性方面的潜力。研究结果强调了增量成形完全自动化的机会,展示了其通过降低成本、增加定制和提高产品质量来彻底改变现代制造业的潜力。这些进步将使航空航天、汽车和医疗设备制造等行业受益,这些行业的精度和灵活性至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven approaches in incremental forming: Unravelling the path to enhanced manufacturing efficiency using data acquisition
Incremental forming is a versatile and cost-effective sheet metal forming technique widely adopted in low-volume manufacturing and prototyping across various industries. Recent advancements in data-driven approaches, including machine vision, neural networks, and 3D reconstruction methods, have significantly enhanced the precision and efficiency of incremental forming processes. This study explores the integration of advanced data acquisition and processing techniques to improve the accuracy, automation, and defect detection capabilities in incremental forming. Key advancements such as robot-assisted forming, computer-controlled toolpath generation from CAD models, and real-time quality monitoring using machine vision are discussed. The potential of single- and multi-view 3D reconstruction methods for optimizing toolpath strategies and enhancing formability is also examined. The findings highlight opportunities for full automation in incremental forming, demonstrating its potential to revolutionize modern manufacturing by reducing costs, increasing customization, and improving product quality. These advancements could benefit industries such as aerospace, automotive, and medical device manufacturing, where precision and flexibility are critical.
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来源期刊
International Journal of Lightweight Materials and Manufacture
International Journal of Lightweight Materials and Manufacture Engineering-Industrial and Manufacturing Engineering
CiteScore
9.90
自引率
0.00%
发文量
52
审稿时长
48 days
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