Design of a-based smart meters to monitor electricity usage in the household sector using hybrid particle swarm optimization - neural network

M. Y. Yunus, Marhatang Marhatang, Andareas Pangkung, M. Djalal
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引用次数: 3

Abstract

The procedure is training and testing the nerves that will be made. Matlab software has a Neural Network tool, which in this study will be used. Load sampling data is used as input data for neural network training. As output / target load classification is used. Load classification method, which is 1 for TV load classification, 2 for fan load, 3 for iron load, 4 for water pump load, 5 for lamp load, 6 for dispenser load, and 7 for fan iron load combination. The total load is 6 single loads and 1 combination load. One load combination was chosen because, on the combination load characteristics after the fan has characteristics that are not the same as the others. Data sampling of the current of each load will be used as neural network training. Load data used is 30 samples or for 30 seconds, with every minute the data is taken. From the results of the training, it can be seen that the biggest training error is in the seventh data, namely the identification of the load on the classification of the fan-iron load. This is because the current pattern on the iron and fan with the iron or fan itself has almost the same characteristics. However, for this process networks will be used and then the PSO optimization method is used to reduce the error, in the next study. From the test results, it is shown that by varying the input current data of each load, the network has been able to identify well, even though in the data classification load 7, the load of the iron-fan combination still has a large error. This will be corrected in subsequent studies with Particle Swarm Optimization (PSO) algorithm optimization.
基于混合粒子群优化-神经网络的家庭用电监测智能电表设计
这个过程是训练和测试将要制造的神经。Matlab软件中有一个神经网络工具,在本研究中将会用到。负载采样数据作为神经网络训练的输入数据。使用输出/目标负载分类。负载分类方法,其中1为电视负载分类,2为风机负载,3为铁负载,4为水泵负载,5为灯负载,6为分水器负载,7为风机铁负载组合。总荷载为6个单荷载和1个组合荷载。选择一种负载组合是因为,在组合负载特性上,风机具有与其他负载不相同的特性。每个负载电流的数据采样将被用作神经网络的训练。使用的负载数据为30个样本或30秒,每分钟采集一次数据。从训练结果可以看出,最大的训练误差出现在第7个数据,即对风机-铁负荷分类上的负荷识别。这是因为目前电熨斗上的图案与电扇或电扇本身具有几乎相同的特点。然而,对于这个过程,将使用网络,然后在下一步的研究中使用粒子群优化方法来减小误差。从试验结果来看,通过改变各负载的输入电流数据,网络已经能够很好地识别,即使在数据分类负载7中,铁扇组合的负载仍然存在较大的误差。这将在后续的粒子群优化(PSO)算法优化研究中得到纠正。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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