College Physics ›› 2026, Vol. 45 ›› Issue (3): 67-.doi: 10.16854/j.cnki.1000-0712.250393

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Practical exploration of promoting deep learning through knowledge #br# connectivity in mechanics teaching#br#

SHI Yurong, WANG Zhimin, MA Lizhen, SHI Xiaofeng, WANG Feng   

  1. College of physics and Optoelectronic Engineering, Ocean university of China, Qingdao, Shandong 266100, China
  • Received:2025-07-29 Revised:2025-09-03 Online:2026-05-15 Published:2026-06-04

Abstract:  Exercises and example problems are crucial means for consolidating physics learning. In current university physics instruction, exercises are often categorized by knowledge points, with relatively rigid problem-solving approaches. This practice can lead to rigid thinking in students analysis of physics problems, leaving them at a loss when encountering unfamiliar questions and fostering an aversion to physics due to perceived difficulty. Consequently, it hinders the development of students ability to transfer knowledge and innovate. Using mechanics as an example, this paper proposes a teaching design that interconnects multiple knowledge points through example problems and exercises. By integrating multiple knowledge points into a single problem, students can grasp physical concepts holistically, gain a deeper understanding of the inherent logical relationships between theoretical knowledge, broaden their analytical perspectives, promote deeper learning, and enhance their ability to solve practical problems.


Key words:  deep learning, knowledge connectivity, multiple solutions for one problem, problems of variable mass