从级数展开到神经网络:浅谈数学物理方程求解范式的演进——以升力线理论环量方程的求解为例

From Series Expansion to Neural Networks: A Brief Discussion on the Evolution of Solution Paradigms for Mathematical Physics Equations ——A Case Study of Solving the Circulation Equation in Lifting Line Theory

  • 摘要: 以本科《空气动力学》课程中基于升力线理论的环量方程的数值求解为例,讨论了数学物理方程求解范式从级数展开演进到神经网络的内在逻辑。这一演进包含两个维度:在表征方式层面,实现了从线性叠加向层级复合的跨越;在计算机制层面,实现了从刚性约束求解向基于全局物理信息动态寻优的递进。本文形成的教学案例说明,在经典物理问题的教学实践中,引入神经网络与传统级数展开求解范式的对比分析,有助于学生理解“复杂系统的宏观规律可通过简单基元的有序结合得以表征”这一普遍规律,有助于引导学生关注科学研究范式的内在发展逻辑。

     

    Abstract: Taking the numerical solution of the circulation equation based on lifting line theory in the undergraduate Aerodynamics course as an example, this paper discusses the inherent logic underlying the evolution of solution paradigms for mathematical physics equations from series expansion to neural networks. This evolution unfolds along two dimensions: in terms of representation mode, it marks a leap from linear superposition to hierarchical composition; in terms of computational mechanism, it represents a progression from solving under rigid constraints to dynamic optimization guided by global physical information. The teaching case constructed in this paper demonstrates that, in the teaching practice of classical physics problems, introducing the comparative analysis of solution paradigms between neural networks and traditional series expansion helps students understand the universal law that "the macroscopic laws of complex systems can be characterized through the ordered assembly of simple primitives", and facilitates guiding students to focus on the inherent development logic of scientific research paradigms.

     

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