创新创业理论研究与实践 ›› 2026, Vol. 9 ›› Issue (10): 157-159.

• 创新方法 • 上一篇    下一篇

AI助力下污染土壤修复技术课程知识图谱的构建与应用

王慧峰, 胡晓钧, 刘馥雯   

  1. 上海应用技术大学 化工与能源技术学部,上海 201418
  • 出版日期:2026-05-25 发布日期:2026-07-01
  • 通讯作者: 胡晓钧(1977—),男,浙江淳安人,博士研究生,教授,研究方向:污染土壤修复、环境材料研制,电子邮箱:hu-xj@sit.edu.cn。
  • 作者简介:王慧峰(1991—),女,山西忻州人,博士研究生,副教授,研究方向:污染土壤治理、污染物环境行为与效应。
  • 基金资助:
    2024年校级课程项目“基于知识图谱的专业认知构建‘污染土壤修复技术’课程体系”(10110M240152-A22); 2025年校级课程项目“AI赋能 + 课程思政:污染土壤修复技术教学模式的融合创新与实践”(1021ZK250002003001-A22); 2024年度上海高校市级一流本科课程建设“污染土壤修复技术”; 2025年校级课程项目—立德树人专项“环境领域全链条—协同式课程思政示范课程群的创新与实践”(1021ZK250002003026-A22)

Construction and Application of Knowledge Graph for Polluted Soil Remediation Technology Course Assisted by AI

WANG Huifeng, HU Xiaojun, LIU Fuwen   

  1. Faculty of Chemical Engineering and Energy Technology, Shanghai Institute of Technology, Shanghai, 201418, China
  • Online:2026-05-25 Published:2026-07-01

摘要: 在“双碳”战略实施与行业绿色转型背景下,当前污染土壤修复技术课程教学面临结构性挑战。作为环境工程专业的核心专业课程,污染土壤修复技术课程涉及物理、化学、生物学及环境工程等领域,其知识体系呈现高度跨学科特点。结合此特点,针对污染土壤修复技术课程知识碎片化、与实践脱节、行业需求动态化等问题,该文提出借助AI技术高效构建污染土壤修复技术课程知识图谱,通过智能分析识别关键知识点与技能点,形成结构化知识体系,助力学生更好地理解和掌握课程内容。课程改革成效显著,验证了该模式在提升工程决策力与生态使命感方面的有效性,为新工科教育数字化转型提供范式。

关键词: 知识图谱, 环境工程, 产教融合, 人工智能, 个性化教学, 高效教学

Abstract: Under the background of the“dual carbon”strategy implement and industry green transformation, the current teaching of polluted soil remediation technology courses is facing structural challenges. As a core professional course in environmental engineering, the course of polluted soil remediation technology involves multiple fields such as physics, chemistry, biology, and environmental engineering, and its knowledge system presents highly interdisciplinary characteristics. Based on this characteristic, in response to the problems of fragmented knowledge, disconnected practice, and dynamic industry demand in the course of polluted soil remediation technology, this article proposes to efficiently construct a knowledge graph of polluted soil remediation technology course using AI technology. Through intelligent analysis and identification of key knowledge and skill points, a structured knowledge system is formed to help students better understand and master the course content. The significant achievements of curriculum reform have verified the effectiveness of this model in enhancing engineering decision-making power and ecological mission, providing a paradigm for the digital transformation of new engineering education.

Key words: Knowledge graph, Environmental engineering, Integration of industry and education, Artificial intelligence, Personalized teaching, Efficient teaching

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