Wang Rong, Shen Yanjin, Wang Dongtao, Jiang Yun, Zhang Chao
Hunan Automotive Engineering Vocational University, Zhuzhou, Hunan, China.
PLoS One. 2025 Aug 22;20(8):e0330593. doi: 10.1371/journal.pone.0330593. eCollection 2025.
With the rapid development of smart grids and the Power Internet of Things (PIoT), wireless communication networks are facing the severe threat of dynamic eavesdropping attacks. Traditional detection methods rely on static assumptions or shallow models, which are not capable of dealing with complex topology mutations and high-dimensional nonlinear features. There is an urgent need for efficient and lightweight adaptive solutions. This study proposes a Dynamic Spatiotemporal Fusion Framework (DSTF-GKAN), which integrates the spatiotemporal dynamic modeling capability of Graph Recurrent Neural Networks (GRNN) with the lightweight adaptive spline approximation mechanism of Kolmogorov-Arnold Networks (KAN). By adaptively optimizing the mesh to dynamically adjust the spline control points and introducing hierarchical sparse regularization to compress parameters, the model enhances its sensitivity to channel anomalies through the integration of physical layer security (PLS) feature constraints. Experimental results show that under dynamic scenarios with an attack mutation rate (AMR = 0.5), DSTF-GKAN achieves a detection F1 score of 0.891, which is a 7.1% improvement over GRNN, and reduces the localization error (RMSE = 0.518 m) by 16.2%. After quantization and pruning optimization, the model has a parameter size of only 0.2 MB, with an inference latency of 0.9 ms and energy consumption of 16mJ on edge devices. Ablation experiments have verified the necessity of the GRU-GCN module (contributing 4.9% to the F1 score) and PLS regularization (improving the F1 score by 1.3%). DSTF-GKAN provides an efficient, robust, and interpretable detection framework for smart grid security. Its lightweight design promotes real-time edge defense and lays the theoretical and technical foundation for the construction of a secure energy internet ecosystem.
随着智能电网和电力物联网(PIoT)的快速发展,无线通信网络正面临动态窃听攻击的严峻威胁。传统检测方法依赖于静态假设或浅层模型,无法应对复杂的拓扑突变和高维非线性特征。迫切需要高效且轻量级的自适应解决方案。本研究提出了一种动态时空融合框架(DSTF-GKAN),它将图递归神经网络(GRNN)的时空动态建模能力与柯尔莫哥洛夫-阿诺德网络(KAN)的轻量级自适应样条逼近机制相结合。通过自适应优化网格以动态调整样条控制点,并引入分层稀疏正则化来压缩参数,该模型通过整合物理层安全(PLS)特征约束提高了对信道异常的敏感度。实验结果表明,在攻击突变率(AMR = 0.5)的动态场景下,DSTF-GKAN的检测F1分数达到0.891,比GRNN提高了7.1%,定位误差(RMSE = 0.518 m)降低了16.2%。经过量化和剪枝优化后,该模型在边缘设备上的参数大小仅为0.2 MB,推理延迟为0.9 ms,能耗为16 mJ。消融实验验证了GRU-GCN模块(对F1分数贡献4.9%)和PLS正则化(将F1分数提高1.3%)的必要性。DSTF-GKAN为智能电网安全提供了一个高效、稳健且可解释的检测框架。其轻量级设计促进了实时边缘防御,为构建安全的能源互联网生态系统奠定了理论和技术基础。