配电自动化中蓄电池在线监测与状态诊断的研究

Yang Zhichun, Shen Yu, Yang Fan, Wang Zilin, Zhang Jun, Wang Dongxu, Cai Wei
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引用次数: 2

摘要

配电自动化终端普遍采用蓄电池作为储能组件,但恶劣的运行环境对蓄电池的性能和使用寿命影响很大,给蓄电池的运维带来很大困难。开发了在线监测与状态诊断技术,通过采集蓄电池实时电压、电流和温度,利用现有的配电自动化通信网络(如光纤、无线等)上传到蓄电池在线监测与状态诊断平台;采用基于Unscented卡尔曼滤波(UKF)的神经网络建立了电池状态诊断模型,该模型通过电池电压、电流和温度实时估计电池荷电状态值;在线监测与状态诊断平台根据电池荷电状态实时值给出合理的方案,为电池状态维护提供技术依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on online monitoring and state diagnosis of battery for distribution automation
Batteries have been generally adopted as energy storage component at distribution automation terminal, however bad operating environment have a great impact on the performance and service life, which is very difficult for operation and maintenance of batteries. Online monitoring and state diagnosis technology is developed, through acquisition battery real time voltage, current and temperature, use of the existing communication network of distribution automation (such as optical fiber, wireless and so on) uploaded to the battery online monitoring and state diagnosis platform; battery state diagnosis model is established using neural network based on the Unscented Kalman filter (UKF), which through battery voltage, current and temperature estimation of SOC real time value; an reasonable plan is given by online monitoring and state diagnosis platform according to SOC real time value, which provide technical basis for state-based maintenance of battery.
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