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Fault detection,classification, and location for active distribution network based on neural network and phase angle analysis
Authors:Tong Zhang  Lanxiang Sun  Haibin Yu  Yingwei Zhang
Affiliation:1. College of Information Science and Engineering, Northeastern University, Shenyang, China;2. Chinese Academy of Sciences, Shenyang Institute of Automation, Shenyang, China;3. Key Laboratory of Networked Control System, CAS, Shenyang, China;4. University of Chinese Academy of Sciences, Beijing, China
Abstract:The improved radial basis function (RBF) method utilizes an orthogonal regression matrix to produce an artificial neural network structure based on regularized least square. The phase angle and amplitude signal of fault voltage and current are extracted based on frequency domain analysis. The proposed method adopts the fault signal for fault diagnosis synchronously. The IEEE 13-bus active distribution network (ADN) simulation model is set up in Matlab. Test results demonstrate that accuracy of the fault diagnosis can reach 98.07% and the response time of the fault classification method is less than 0.04s. The wavelet neural network (WNN) model is developed to extract the maximum decomposition level and time series behavior. The WNN method can resist noise effects and improve the fault classification accuracy by 4.3%. The effect of fault type and fault resistance on the fault location method is researched. The fault simulation result shows that the proposed method can locate a fault precisely and synchronously. The improved RBF method can diagnose the fault section, classify the fault type and locate a fault accurately in ADN. The research is significant to maintain system stability against realistic fault and network restore.
Keywords:ANN neural network  phase angle  active distribution network (ADN)  fault diagnosis
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