Simulasi Penggunaan Listrik Tarif Sosial Menggunakan Algoritma ERNN

Titik Rahmawati, Landung Sudarmana, A. Priyanto
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Abstract

The use of electricity under the social tariff category has increased significantly each year, both purely social and commercial social use. The use of social tariff electricity is intended for public interest activities for both the lower and upper middle social strata which are oriented towards fulfilling growth and development facilities for the public interest, so that a simulation of social electricity usage is needed to map a picture of the condition of the amount of social electricity usage in the future. The research was conducted to determine the estimation of how much electricity is used by using the Elman Recurrent Neural Network (ERNN) algorithm by reducing the input dimensions. The ERNN algorithm is used to simulate network parameters formed from complex input-output relationships, so that data patterns can be found. The factors of the input dimensions of this study are demographic data, electricity usage, social customers, population, gross regional domestic product (GRDP) and industrial growth. The results showed that the ERNN algorithm is capable of simulating formed network parameters that can be used for training and validation so that the value of the network Mean Square Error (MSE) can be determined, with prediction accuracy using the Mean Absolute Percentage Error (MAPE) for forecast in sample in the forecast period of 5 years obtained an average of 0.77%, and able to know the dominant factors that influence the use of social tariff electricity.
利用ERNN算法模拟社会费率电的使用
在社会关税类别下的电力使用每年都有显著增加,无论是纯社会用途还是商业社会用途。社会电费的使用是为了满足社会下层和中上层的公共利益活动,以实现公共利益的增长和发展设施为导向,因此需要模拟社会用电量,以描绘未来社会用电量的状况。该研究通过减少输入维数,利用Elman递归神经网络(ERNN)算法来确定电量的估计。利用ERNN算法模拟复杂输入输出关系形成的网络参数,从而发现数据模式。本研究的输入维度的因素是人口统计数据、用电量、社会客户、人口、地区生产总值(GRDP)和工业增长。结果表明,ERNN算法能够模拟已形成的网络参数,可用于训练和验证,从而确定网络均方误差(MSE)的值,使用平均绝对百分比误差(MAPE)对5年预测期内的样本进行预测,预测精度平均为0.77%,能够了解影响社会电价使用的主导因素。
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