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基于改进智能用电优化算法的家庭智能用电管理系统
引用本文:郭伟,迪里达尔·库尔班,姬彦君.基于改进智能用电优化算法的家庭智能用电管理系统[J].现代科学仪器,2022(1).
作者姓名:郭伟  迪里达尔·库尔班  姬彦君
作者单位:国网新疆营销服务中心
摘    要:为了提升家庭智能用电管理系统的计算效能,使用时序分析算法,将远程抄表实时费控电能表采集的1s步长的电流、电压数据序列,整理成5列录波图,并利用线性重投影算法形成可供神经网络识别的时序序列,使用加权卷积多列神经网络进行挖掘,将用户每1s步长的用电量信息分解成空调、插座、照明等负荷用电量信息,最终形成家庭智能用电管理系统的数据分解展示功能。经过与针对上述负荷单独安装电能表的实测数据进行对比,发现该改进智能用电优化算法得到的用电量分解结果,与实测结果的误差率均为5.8~6.0%之间。

关 键 词:用电优化算法  家庭智能用电管理系统  神经网络算法  时序分析算法  用电负荷分解

Home Intelligent Power Management System Based on Improved Intelligent Power Optimization Algorithm
Guo Wei,Dilidaer Kuerban,Ji Yanjun.Home Intelligent Power Management System Based on Improved Intelligent Power Optimization Algorithm[J].Modern Scientific Instruments,2022(1).
Authors:Guo Wei  Dilidaer Kuerban  Ji Yanjun
Affiliation:(State Grid Xinjiang Marketing Service Centre,Urumqi Xinjiang 830000,China)
Abstract:In order to improve the calculation efficiency of the home intelligent power consumption management system,the current and voltage data sequences of 1s steps collected by the remote meter reading real-time fee controlled electric energy meter are sorted into 5-column oscillograms by using the time sequence analysis algorithm,and the linear re projection algorithm is used to form the time sequence that can be recognized by the neural network,and the weighted convolution multi column neural network is used for mining,The power consumption information of users per 1s step is decomposed into load power consumption information such as air conditioning,socket and lighting,and finally the data decomposition and display function of home intelligent power consumption management system is formed.By comparing with the measured data of the electric energy meter installed separately for the above load,it is found that the error rate between the power consumption decomposition results obtained by the improved intelligent power consumption optimization algorithm and the measured results is 5.8~6.0%.
Keywords:Power Optimization Algorithm  Home Intelligent Power Management System  Neural Network Algorithm  Time Series Analysis Algorithm  Power Load Decomposition
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