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S&M2529 Research Paper of Special Issue https://doi.org/10.18494/SAM.2021.3159 Published: April 14, 2021 Intelligent Identification Technology of Attributes of Users’ Transformers Based on Gray Correlation Analysis [PDF] Yan Liu, Hu Yue, Yang Feng, Hongying Miao, Sida Zhen, and Chih-Cheng Chen (Received September 6, 2020; Accepted March 1, 2021) Keywords: attributes of users’ transformer identification, gray correlation analysis, intelligent identification, correlation
Power grid construction and power measurement automation systems are gaining popularity and becoming ever more commonplace in developing countries. However, adoption rates are affected by inaccurate intelligent identification systems that control remote meter reading and line loss management. Local electricity distribution networks also have inconsistent user cable wiring, different geographical topologies, and issues with cable crosstalk, which lead to inaccurate readings of users’ data coming from the intelligent identification system, and sometimes even a failure to read electricity meters. Taking into consideration the voltage required for an intelligent identification system, we propose a new transformer for an intelligent identification system. Our new transformer improves the gray correlation analysis of watt-hour meters, which overcomes the shortcomings of existing identification methods by evaluating line voltages between unidentified and identified watt-hour meters. Experimental results show that our transformer with this method can accurately measure users’ electricity meter readings and perform line loss management.
Corresponding author: Yan Liu, Chih-Cheng ChenThis work is licensed under a Creative Commons Attribution 4.0 International License. Cite this article Yan Liu, Hu Yue, Yang Feng, Hongying Miao, Sida Zhen, and Chih-Cheng Chen, Intelligent Identification Technology of Attributes of Users’ Transformers Based on Gray Correlation Analysis, Sens. Mater., Vol. 33, No. 4, 2021, p. 1219-1230. |