Jiang Xiaoyu, Meng Dexin, Zheng Yanpeng, Jiang Zhaolin
School of Information Science and Engineering, Linyi University, Linyi, 276000, China.
School of Mathematics and Statistics, Linyi University, Linyi, 276000, China.
Sci Rep. 2025 Feb 12;15(1):5222. doi: 10.1038/s41598-025-89471-6.
Resistor networks are crucial in various fields, and solving problems on these is challenging. Existing numerical methods often suffer from limitations in accuracy and computational efficiency. In this paper, a structured zeroing neural network (SZNNCRN) for solving the mathematical model of time-varying cobweb resistance networks is proposed to address these challenges. Firstly, a SZNNCRN model is designed to solve the time-varying Laplacian equation system, which is a mathematical model representing the relationship between voltage and current in a cobweb resistance network. By leveraging the hidden structural attributes of a Laplacian matrix, the study devises optimized algorithms for the neural network models, which markedly improve computational efficiency. Subsequently, theoretical analyses validate the model's global exponential convergence, while numerical simulation results further corroborate its convergence and accuracy. Finally, the model is applied to calculate the equivalent resistance within a cobweb resistive network and for path planning on cobweb maps.
电阻网络在各个领域都至关重要,解决与之相关的问题具有挑战性。现有的数值方法在准确性和计算效率方面常常存在局限性。本文提出一种用于求解时变蛛网电阻网络数学模型的结构化归零神经网络(SZNNCRN),以应对这些挑战。首先,设计了一个SZNNCRN模型来求解时变拉普拉斯方程组,该方程组是表示蛛网电阻网络中电压与电流关系的数学模型。通过利用拉普拉斯矩阵的隐藏结构属性,该研究为神经网络模型设计了优化算法,显著提高了计算效率。随后,理论分析验证了模型的全局指数收敛性,而数值模拟结果进一步证实了其收敛性和准确性。最后,该模型被应用于计算蛛网电阻网络内的等效电阻以及蛛网地图上的路径规划。