Development and Application of Welding Database System
- Vol. 52, Issue 3, Pages: 36-45(2022)
DOI: 10.7512/j.issn.1001-2303.2022.03.05
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朱昱颖,孙宏伟,朱加雷,等.焊接数据库系统发展应用现状及趋势[J].电焊机,2022,52(3):36-45.
ZHU Yuying, SUN Hongwei, ZHU Jialei, et al.Development and Application of Welding Database System[J].Electric Welding Machine, 2022, 52(3): 36-45.
焊接是制造部件和组装部件的基本方法,企业在长期的焊接加工过程中会产生大量过程文件,对此传统人工数据管理已不适应现代化生产需求,将大量纸质和零碎的电子文档物以类聚,并以统一格式存储在不同的焊接数据库中,可以实现数据的高效存储与管理。焊接数据库根据大量工程经验和专家知识面对复杂的焊接生产过程可以自行生成专家级焊接工艺卡,实现降本增效。随着多学科与新技术向着数据库系统的涌入,多个焊接数据库集成统一成为一个功能丰富的焊接数据库系统,一方面为智能焊接生产提供强大支持,焊接过程的决策、焊接疲劳区的定位、焊接性能预测以及焊接顺序的优化等都开始在焊接领域得到应用;另一方面为资源共享、多并发处理以及工程维护、评估等提供极大的便利。综述了国内外焊接数据库系统的发展与应用现状,总结了数据库在焊接领域的主要功能应用,并对其发展趋势进行了展望。
Welding is the basic method of manufacturing and assembling parts ,in the long-term welding process, enterprises will generate a large number of process documents. For this, traditional manual data management is no longer suitable for modern production needs. A large number of paper and fragmented electronic documents are grouped together and stored in a unified format in different welding processes. In the database, efficient storage and management of data can be achieved. Based on a large amount of engineering experience and expert knowledge, the welding database can generate expert-level welding process cards by itself to reduce costs and increase efficiency in the face of complex welding production processes. With the influx of multi-disciplinary and new technologies towards the database system, multiple welding databases are integrated and unified into a feature-rich welding database system. Welding performance prediction and welding sequence optimization have begun to be applied in the welding field. On the other hand, it provides great convenience for resource sharing, multi-concurrency processing, engineering maintenance, and evaluation. This paper summarizes the development and application status of welding database systems at home and abroad, summarizes the main functions and applications of the database in the field of welding, and forecasts its development trend.
智能化焊接数据库系统降本增效专家级焊接工艺卡
intelligent weldingdatabase systemcost reduction and efficiency increaseexpert-level welding process cards
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