AI 赋能的项目制材料力学教学改革探索——以雪荷载概率分析为例

Exploring AI-Empowered Project-Based Teaching Reform in Materials Mechanics: A Case Study of Snow Load Probabilistic Analysis

  • 摘要: 在材料力学本科教学体系中,如何在保持课程知识结构与理论主线相对稳定的前提下,引导学生认识并理解工程问题中广泛存在的不确定性因素,是拔尖创新人才培养过程中亟需回应的重要教学议题。本文构建了人工智能赋能的项目制教学任务框架,将随机分析方法与结构可靠度理论有机融入具体工程问题的求解过程。以一阶可靠度方法(First-Order Reliability Method, FORM)为核心分析工具,选取雪荷载作为典型工程情境,建立荷载—抗力概率模型,并结合双重迭代算法实现结构失效概率的数值求解。教学实践结果表明,该项目制教学模式在不削弱材料力学基础知识教学目标的前提下,有助于提升学生在复杂工程情境中的建模能力与工程决策意识。

     

    Abstract: Within the undergraduate curriculum of Mechanics of Materials, a central pedagogical challenge in cultivating top-tier innovative engineering talents lies in guiding students to recognize and comprehend the pervasive uncertainties inherent in real-world engineering problems, while maintaining the relative stability of the course’s knowledge structure and theoretical framework. This study develops an artificial intelligence–empowered project-based instructional framework that systematically integrates stochastic analysis and structural reliability theory into the solution process of specific engineering problems. Employing the First-Order Reliability Method (FORM) as the primary analytical tool, snow load is selected as a representative engineering scenario to establish a load–resistance probabilistic model. A double-iteration algorithm is further implemented to achieve numerical evaluation of structural failure probability. Teaching practice indicates that, without compromising the foundational learning objectives of Mechanics of Materials, the proposed project-based instructional model effectively enhances students’ modeling competence and engineering decision-making awareness in complex engineering contexts.

     

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