递归神经网络(RNN)与向量自回归模型(VAR)预测电力负荷需求的比较分析

R. Hasanah, R. P. Ravie O.M.P., H. Suyono
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引用次数: 1

摘要

电在现代人类的日常生活活动中起着非常重要的作用。电力公司必须保证电力供应的连续性和充足性。因此,它必须始终能够通过考虑各种影响因素来预测未来的电力需求。研究人员已经研究并提出了许多预测方法,以帮助预测未来的电力需求,这是规划输配电基础设施和发电厂建设的重要信息。在本研究中,对两种预测方法进行了描述、探讨和比较,为选择方法提供了备选考虑。一种基于人工智能的预测方法,递归神经网络(RNN),将与传统的预测方法,向量自回归(VAR)进行比较。比较是基于均方根误差(RMSE)和平均绝对误差(MAE)的参数。这两种方法都被用于预测印尼东爪哇省仅次于泗水的第二大城市玛琅市的短期电力负荷需求。现有负荷数据来自当地电力公司,而天气数据来自NOAA的Meteoblue Climatology。对RNN和VAR方法进行了体系结构建模,以获得准确的预测结果。基于RMSE和MAE值,采用隐含神经元变化的RNN方法对麻郎市短期电力负荷的预测结果表明,RMSE和MAE值较低,比使用具有滞后值变化的VAR方法具有更好的准确性和性能。
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Comparison Analysis of Electricity Load Demand Prediction using Recurrent Neural Network (RNN) and Vector Autoregressive Model (VAR)
Electricity plays a very important role in daily modern human-life activities. An electricity company must always guarantee the continuity and adequate supply to its customers. Consequently, it must always be able to predict the future electricity demand to be supplied by considering various influencing factors. Many forecasting methods have been investigated and proposed by researchers to help in predicting the future electricity demand to be fulfilled, which is a paramount information in planning the transmission and distribution infrastructure and the generation plants to be built. In this study, two forecasting methods are described, explored and compared to provide alternative consideration in choosing the method. An artificial intelligence-based forecasting method, the Recurrent Neural Network (RNN), is to be compared to a conventional forecasting method, the Vector Autoregressive (VAR). The comparison is based on the parameters of Root Mean Square Error (RMSE) and the Mean Absolute Error (MAE). Both methods are implemented to predict the shortterm electricity load demand in Malang City, the second largest city after Surabaya in East Java province of Indonesia. The existing load data have been obtained from local electricity company, whereas the weather data have been taken from the Meteoblue Climatology NOAA. The architecture modelling of the RNN and VAR methods are performed in such a way to produce an accurate forecasting result. Based on the RMSE and MAE values, the prediction results of short-term electricity load in Malang city using the RNN method with hidden neuron variations indicate the lower values of RMSE and MAE, indicating better accuracy and performance, than the use of the VAR method with lag value variation.
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