MENG Chengzhen, HAO Fangzhou, LI Huanhuan, LUO Qi, WEI Zhijun, MA Yihang
Control Engineering of China. 2025, 32(11): 2073-2080.
The increase in electrical equipment will lead to an increased risk of misoperation. A power grid error prevention regulation control system based on edge computing and improved support vector machine is proposed. Combining deep learning with error prevention analysis theory, a stack sparse autoencoder is introduced to construct an error prevention analysis neural network model. The experimental results show that when the dataset size is 1 000, the accuracy of the kernel ridge regression model, gradient boosting machine model, support vector machine model, and improved support vector machine model are 0.91, 0.93, 0.96, and 0.98, respectively. The improved support vector machine model has a judgment accuracy of 98.1%, 98.6%, 96.7%, and 89.4% for controllable operations, erroneous operations, pending confirmation operations, and all operations, respectively. The research results indicate that the proposed model can effectively achieve optimization of power grid error prevention and control, providing a reliable and feasible method for the field of power grid error prevention.