计算机科学                        
                
                                
                        
                            数据挖掘                        
                
                                
                        
                            模式识别(心理学)                        
                
                                
                        
                            分类器(UML)                        
                
                                
                        
                            人工智能                        
                
                                
                        
                            判别式                        
                
                                
                        
                            插补(统计学)                        
                
                                
                        
                            特征提取                        
                
                                
                        
                            自编码                        
                
                                
                        
                            机器学习                        
                
                                
                        
                            缺少数据                        
                
                                
                        
                            深度学习                        
                
                        
                    
            作者
            
                Leijiao燝e,Tianshuo燚u,Zhengyang燲u,Luyang燞ou,Jun燳an,Yuanliang燣i            
         
                    
        
    
            
            标识
            
                                    DOI:10.35833/mpce.2023.000909
                                    
                                
                                 
         
        
                
            摘要
            
            The accurate identification of smart meter (SM) fault types is crucial for enhancing the efficiency of operation and maintenance (O&M) and the reliability of power collection systems. However, the intelligent classification of SM fault types faces significant challenges owing to the complexity of features and the imbalance between fault categories. To address these issues, this study presents a fault diagnosis method for SM incorporating three distinct modules. The first module employs a combination of standardization, data imputation, and feature extraction to enhance the data quality, thereby facilitating improved training and learning by the classifiers. To enhance the classification performance, the data imputation method considers feature correlation measurement and sequential imputation, and the feature extractor utilizes the discriminative enhanced sparse autoencoder. To tackle the interclass imbalance of data with discrete and continuous features, the second module introduces an assisted classifier generative adversarial network, which includes a discrete feature generation module. Finally, a novel Stacking ensemble classifier for SM fault diagnosis is developed. In contrast to previous studies, we construct a two-layer heuristic optimization framework to address the synchronous dynamic optimization problem of the combinations and hyper-parameters of the Stacking ensemble classifier, enabling better handling of complex classification tasks using SM data. The proposed fault diagnosis method for SM via two-layer stacking ensemble optimization and data augmentation is trained and validated using SM fault data collected from 2010 to 2018 in Zhejiang Province, China. Experimental results demonstrate the effectiveness of the proposed method in improving the accuracy of SM fault diagnosis, particularly for minority classes.
         
            
 
                 
                
                    
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