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Optimization of Short Load Forecasting in Electricity Market of Iran Using Artificial Neural Networks

机译:基于人工神经网络的伊朗电力市场短期负荷预测优化

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摘要

Accurate short-term load forecasting (STLF) is one of the essential requirements for power systems. In this paper, two different seasonal artificial neural networks (ANNs) are designed and compared in terms of model complexity, robustness, and forecasting accuracy. Furthermore, the performance of ANN partitioning is evaluated. The first model is a daily forecasting model which is used for forecasting hourly load of the next day. The second model is composed of 24 sub-networks which are used for forecasting hourly load of the next day. In fact, the second model is partitioning of the first model. Time, temperature, and historical loads are taken as inputs for ANN models. The neural network models are based on feed-forward back propagation which are trained and tested using data from electricity market of Iran during 2003 to 2005. Results show a good correlation between actual data and ANN outcomes. Moreover, it is shown that the first designed model consisting of single ANN is more appropriate than the second model consisting of 24 distinct ANNs. Finally ANN results are compared to conventional regression models. It is observed that in most cases ANN models are superior to regression models in terms of mean absolute percentage error (MAPE).
机译:准确的短期负荷预测(STLF)是电力系统的基本要求之一。本文设计了两种不同的季节性人工神经网络(ANN),并在模型复杂性,鲁棒性和预测准确性方面进行了比较。此外,评估了ANN分区的性能。第一个模型是每日预测模型,用于预测第二天的每小时负荷。第二种模型由24个子网组成,用于预测第二天的每小时负载。实际上,第二个模型是第一个模型的分区。时间,温度和历史负荷被用作ANN模型的输入。该神经网络模型基于前馈反向传播,使用从2003年至2005年伊朗电力市场的数据进行训练和测试。结果表明,实际数据与人工神经网络结果之间具有良好的相关性。此外,还表明,由单个ANN组成的第一个设计模型比由24个不同ANN组成的第二个模型更为合适。最后,将人工神经网络的结果与常规回归模型进行比较。据观察,在大多数情况下,就平均绝对百分比误差(MAPE)而言,ANN模型优于回归模型。

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