Knowledge Graph Learning for Vehicle Additive Manufacturing of Recycled Metal Powder

IF 2.6 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Yuan Fang, Mingzhang Chen, Weida Liang, Zijian Zhou, Xunchen Liu
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引用次数: 0

Abstract

Research on manufacturing components for electric vehicles plays a vital role in their development. Furthermore, significant advancements in additive manufacturing processes have revolutionized the production of various parts. By establishing a system that enables the recovery, processing, and reuse of metal powders essential for additive manufacturing, we can achieve sustainable production of electric vehicles. This approach holds immense importance in terms of reducing manufacturing costs, expanding the market, and safeguarding the environment. In this study, we developed an additive manufacturing system for recycled metal powders, encompassing powder variety, properties, processing, manufacturing, component properties, and applications. This system was used to create a knowledge graph providing a convenient resource for researchers to understand the entire procedure from recycling to application. To improve the graph’s accuracy, we employed ChatGPT and BERT training. We also demonstrated the knowledge graph’s utility by processing recycled 316 L stainless steel powders and assessing their quality through image processing. This experiment serves as a practical example of recycling and analyzing powders using the established knowledge graph.
基于知识图谱学习的再生金属粉末汽车增材制造
电动汽车零部件的研究对电动汽车的发展至关重要。此外,增材制造工艺的重大进步已经彻底改变了各种零件的生产。通过建立一个能够回收、加工和再利用增材制造所需金属粉末的系统,我们可以实现电动汽车的可持续生产。这种方法在降低制造成本、扩大市场和保护环境方面具有巨大的重要性。在这项研究中,我们开发了一个再生金属粉末的增材制造系统,包括粉末的种类、性能、加工、制造、成分性能和应用。该系统用于创建知识图谱,为研究人员了解从回收到应用的整个过程提供了方便的资源。为了提高图的准确性,我们采用了ChatGPT和BERT训练。我们还通过处理回收的316l不锈钢粉末并通过图像处理评估其质量来展示知识图谱的效用。本实验是利用所建立的知识图谱对粉末进行回收和分析的一个实例。
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来源期刊
World Electric Vehicle Journal
World Electric Vehicle Journal Engineering-Automotive Engineering
CiteScore
4.50
自引率
8.70%
发文量
196
审稿时长
8 weeks
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