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电力用户异常用电模式检测分析 被引量:1

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摘要 随着电网智能化的深入,电力用户异常用电模式的检测面临着新的挑战。一直以来,非技术性损失(NTL)在电网配电损失中占比居高不下,电网也一直在寻求各种解决途径。从理论上分析,NTL部分是可以避免的,这部分损失主要是由于窃电等用户异常用电导致的。通过加强监测和管理,可以在很大程度上降低这部分损失。本文主要从基础模型、指标选取、模型选取和关键技术等方面对电力用户异常用电行为的检测进行了分析。
机构地区 乌海电业局
出处 《科技创新导报》 2019年第11期83-83,85,共2页 Science and Technology Innovation Herald
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