Intelligent detection method for abnormal electricity consumption behavior of residents based on adaptive RNN
A novel model based on adaptive recurrent neural network(RNN)is proposed to address the issues of low efficiency and poor performance in identifying abnormal electricity consumption behavior among residents.Design a SMOTE-ENN resampling method to in-crease the classification performance of imbalanced datasets.We have established an adaptive RNN detection model,using batch normal-ized RNN as the basic learner,and combining hyperparameter optimization and buffer to dynamically adjust the BNRNN model.In the ex-perimental stage,after improved SMOTE-ENN resampling,the classification performance of the model was significantly improved.At the same time,experiments have verified that the proposed adaptive RNN model with buffering and hyperparameter optimization has the low-est MAE error,indicating that the proposed model has excellent generalization ability.The experimental results validate the practicality and excellent performance of the proposed model,which can provide some reference for the development of abnormal electricity consump-tion behavior detection.
Distribution networkData drivenAbnormal electricity consumptionRecurrent neural networkHyperparameter optimization