Application of Artificial Intelligence in Incremental Sheet Metal Forming: A Review

Asmaa Harfoush , Karl R. Haapala , Ali Tabei
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引用次数: 9

Abstract

Artificial Intelligence (AI) has been widely used in manufacturing, healthcare, sports, finance, and other areas to model nonlinearities and make reliable predictions. In manufacturing, AI has been applied to improve processes, reduce costs, and increase reliability. A novel manufacturing process that has been augmented with AI is Incremental Sheet Forming (ISF), a technology that applies a step-by-step incremental feed to a sheet metal or polymer blank using a CNC machine. The quality of the produced part is affected by parameters related to four process elements: the blank, the blank holder, the forming tool, and the CNC machine (applied force). The ISF process is greatly affected by forming process parameters, material property parameters, and geometric parameters. Numerous research efforts have correlated the relationship between the ISF parameters to final product attributes using analytical, experimental, and numerical techniques. However, these techniques are not efficient due to the nonlinearities and complexities of the relationships, the time-consuming nature of the process, and extensive computational time needed to simulate the process. To compensate for these shortcomings, researchers have started to apply AI techniques in analysis of ISF. The aim of this paper is to review the application of AI in the ISF process in forming of metal sheets in order to summarize the contributions of prior research efforts and identify potential opportunities for future research.

人工智能在钣金增量成形中的应用综述
人工智能(AI)已广泛应用于制造业、医疗保健、体育、金融和其他领域,以建模非线性并做出可靠的预测。在制造业中,人工智能已被应用于改进流程、降低成本和提高可靠性。人工智能增强的一种新型制造工艺是增量板成形(ISF),这是一种使用数控机床对金属板或聚合物毛坯进行逐步增量进料的技术。所生产零件的质量受到与四个工艺要素有关的参数的影响:毛坯、毛坯夹头、成形工具和数控机床(施加的力)。成形工艺参数、材料性能参数和几何参数对ISF成形过程影响很大。大量的研究工作利用分析、实验和数值技术将ISF参数与最终产品属性之间的关系联系起来。然而,由于关系的非线性和复杂性、过程的耗时性质以及模拟过程所需的大量计算时间,这些技术效率不高。为了弥补这些不足,研究人员已经开始将人工智能技术应用于ISF分析。本文的目的是回顾人工智能在金属板材成形ISF过程中的应用,以总结先前研究工作的贡献,并确定未来研究的潜在机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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