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Short-Term Electric Load Forecasting Using Recurrent Neural Network (Study Case of Load Forecasting in Central Java and Special Region of Yogyakarta)

机译:使用反复性神经网络的短期电负荷预测(中爪哇爪哇省船舶负荷预测的研究案例,日惹特区)

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Short-term load forecasting (STLF) is a very important factor in the planning and operation of power systems. The purpose of load forecasting is to balance the demand and electricity supply. The electrical load is dynamic, changing over the time. The provision of electrical energy is also dynamic following the pattern of load changes. Load forecasting is required to ensure an accurate decision on power plant scheduling, unit commitment, and power delivery. This paper presents a recurrent neural network (RNN) model with Levenberg-Marquardt and Bayesian regularization training algorithms used for short-term electrical load forecasting. The accuracy criterion used is Mean Absolute Percentage of Error (MAPE). The results show that the RNN model can make good predictions. RNN model with the Bayesian regularization training algorithm has better accuracy. Its average MAPE in one week is 1,4792%. It implies that the RNN model is great tool for STLF.
机译:短期负荷预测(STLF)是电力系统规划和运营的一个非常重要的因素。负载预测的目的是平衡需求和电力供应。电负载是动态的,随着时间的推移而变化。载荷变化模式后,提供电能也是动态的。需要负载预测,以确保对电厂调度,单位承​​诺和电力交付的准确决定。本文介绍了一种与Levenberg-Marquardt和贝叶斯正则化训练算法的经常性神经网络(RNN)模型用于短期电负载预测。使用的准确性标准是误差(MAPE)的均值绝对百分比。结果表明,RNN模型可以做出良好的预测。 RNN模型与贝叶斯正则化训练算法具有更好的准确性。它在一周内平均mape是1,4792%。它意味着RNN模型是STLF的伟大工具。

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