基于虚拟仪器的窃电预警系统设计
Design of Early-Warning System for Anti-Stealing Electricity Based on Virtual Instrument
摘要:
针对传统方式下窃电识别困难的现状,本文通过分析窃电预警评价体系,研究窃电预警系统软件设计方案,基于LabVIEW软件完成窃电预警系统的软件设计。通过窃电用户历史数据信息对系统进行了功能测试,验证软件可用于电力窃电预警,有利于提高反窃电效率。
Abstract:
Aimed at the difficulty of stealing electricity in traditional mode, this paper studies the software design of the early-warning system for electricity stealing by analyzing the evaluating indicators of electricity stealing. Software design is completed based on the LabVIEW software. The function test of the system is done through the user data information of the historical electricity stealing. The test results show that early-warning system can be used for early warning of electric larceny, which is beneficial to improve the efficiency of anti-stealing electricity.
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