A Method of Low Voltage Topology Identification

Chen Xu, Yuan Lei, Yuhang Zou
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引用次数: 7

Abstract

In order to improve the success rate and efficiency of automatic identification of low-voltage distribution topology, this paper proposes a record-based topology identification method. The topology recognition is divided into consumer-transformer relation recognition and hierarchical recognition. High-speed power line carrier (HPLC) automatic networking was used to obtain and judge the equipment information to generate the consumer-transformer relationship in the low voltage area. The topology terminal unit and low-voltage equipment with topology recognition function generate records through specific topology signal exchanging information. Then, the intelligent distribution transformer terminal unit summarizes these records and combines the relationship between power consumers and transformer to generate the hierarchical relationship. This topology identification method has the advantages of simple control logic, fast identification speed and high identification accuracy, which can provide the important basic data for real-time fault location, power line loss analysis and area capacity estimation and other advanced applications of low-voltage distribution.
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一种低压拓扑识别方法
为了提高低压配电拓扑自动识别的成功率和效率,本文提出了一种基于记录的拓扑识别方法。拓扑识别分为消费者-变压器关系识别和层次识别。采用高速电力线载波(HPLC)自动组网技术获取和判断设备信息,生成低压区域的消变关系。拓扑终端单元与具有拓扑识别功能的低压设备通过特定的拓扑信号交换信息产生记录。然后,智能配电变压器终端单元对这些记录进行汇总,并结合电力用户与变压器之间的关系生成层次关系。该拓扑识别方法具有控制逻辑简单、识别速度快、识别精度高等优点,可为低压配电的实时故障定位、电线损分析和面积容量估算等高级应用提供重要的基础数据。
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