金属热处理 ›› 2026, Vol. 51 ›› Issue (2): 340-346.DOI: 10.13251/j.issn.0254-6051.2026.02.051

• 教学与实践 • 上一篇    

新工科背景下AI赋能《金属材料及热处理》实验教学改革探索

谢芋江, 周培山, 文雄, 冷曼希   

  1. 西南石油大学 新能源与材料学院, 四川 成都 610500
  • 收稿日期:2025-11-18 修回日期:2025-12-03 发布日期:2026-03-05
  • 作者简介:谢芋江(1985—),男,副教授,硕士生导师,博士,主要研究方向为金属材料加工工程的教学和科学研究,E-mail:xyj_0212@163.com
  • 基金资助:
    国家自然科学基金(52376076);四川省高等学校创新性实验项目(川教函[2025]199号-66);西南石油大学2024-2026年校级本科教育教学改革研究项目(X2024JGYB35)

An exploration of AI-empowered experimental teaching reform in "Metallic Materials and Heat Treatment" under background of emerging engineering education

Xie Yujiang, Zhou Peishan, Wen Xiong, Leng Manxi   

  1. School of New Energy and Materials, Southwest Petroleum University, Chengdu Sichuan 610500, China
  • Received:2025-11-18 Revised:2025-12-03 Published:2026-03-05

摘要: 新工科建设背景下,《金属材料及热处理》课程传统的实验教学面临安全隐患、时空限制、组织转变过程抽象、分析浅层化等瓶颈,难以适配复合型工程技术人才培养需求。立足“虚实结合、人机协同、数据驱动、深度探究”的核心理念,探索构建AI赋能的实验教学新体系。通过整合机器学习与数据预测、虚拟仿真与数字孪生、计算机视觉与图像识别等技术模块,重构“课前-课中-课后”三段式教学模式,同时以“碳钢热处理综合实验”“钢的淬透性及淬硬性实验”为案例,探索工艺参数智能推荐、过程虚拟可视化、数据自动分析等融合路径,并基于AI建立多元评价体系,解决传统实验教学的瓶颈问题。

关键词: 新工科, AI赋能, 《金属材料及热处理》, 实验教学改革

Abstract: Under the background of emerging engineering education, the traditional experimental teaching of the "Metallic Materials and Heat Treatment" faces bottlenecks such as potential safety hazards, time and space constraints, the abstract nature of microstructure evolution, and superficial analysis, making it difficult to meet the training needs of compound engineering and technical talents. Based on the core concepts of "combination of virtual and real, human-machine collaboration, data-driven approach, and in-depth inquiry", the construction of a new AI-empowered experimental teaching system is explored. By integrating technical modules including machine learning and data prediction, virtual simulation and digital twin, and computer vision and image recognition, the three-stage teaching model of "pre-class - in-class - post-class" is reconstructed. Meanwhile, using "comprehensive experiment of carbon steel heat treatment" and "experiment of hardenability and hardenability of steel" as examples, integration paths including intelligent process parameter recommendations, virtual process visualization, and automatic data analysis are explored, and a multi-dimensional evaluation system based on AI is established. These measures address the bottleneck problems of traditional experimental teaching.

Key words: emerging engineering education, AI-empowered, Metallic Materials and Heat Treatment, experimental teaching reform

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