Publication | Open Access
Analysis of Different Neural Networks and a New Architecture for Short-Term Load Forecasting
18
Citations
42
References
2019
Year
Forecasting MethodologyEngineeringMachine LearningNeural Networks (Machine Learning)Different Neural NetworksRecurrent Neural NetworkSocial SciencesData ScienceSystems EngineeringCommon Neural NetworksPower SystemsNonlinear Time SeriesPredictive AnalyticsDemand ForecastingEnergy ForecastingComputer EngineeringNeural Networks (Computational Neuroscience)Computer ScienceForecastingNeural NetworksEnergy PredictionIntelligent ForecastingNew ArchitectureSmart GridShort-term Load ForecastingIntelligent Systems Engineering
Short-term load forecasting (STLF) has been widely studied because it plays a very important role in improving the economy and security of electric system operations. Many types of neural networks have been successfully used for STLF. In most of these methods, common neural networks were used, but without a systematic comparative analysis. In this paper, we first compare the most frequently used neural networks’ performance on the load dataset from the State Grid Sichuan Electric Power Company (China). Then, considering the current neural networks’ disadvantages, we propose a new architecture called a gate-recurrent neural network (RNN) based on an RNN for STLF. By evaluating all the methods on our dataset, the results demonstrate that the performance of different neural network methods are related to the data time scale, and our proposed method is more accurate on a much shorter time scale, particularly when the time scale is smaller than 20 min.
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