智能电网短期负荷预测模型

Jian Wang, Shuhui Yi, Shao Xing, Hao Liu, Jian Liu, Genrong Wang, Chunzhi Wang
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引用次数: 0

摘要

在电力系统经济调度中。如何合理利用电力负荷的过去和现在来推测其未来价值,具有非常长远的社会经济价值。短期电力负荷预测主要用于预测未来数小时或数天内的电力负荷。天气因素与负荷变化之间的关系对短期预报具有重要意义。短期电力负荷数据具有明显的时序特征,传统的RNN模型越来越多地应用于该领域。然而,RNN模型可能会出现梯度爆炸或梯度消失。因此,基于长短期记忆神经网络(LSTM),提出了一种改进的AM-LSTM短期负荷预测模型。该模型将LSTM单元中的激活函数改进为加权激活函数组,并加入注意机制提高预测精度。
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Short-term Load Forecasting Model for Smart Grid
In the economic dispatch of power system. How to reasonably use the past and present of power load to speculate its future value has very long-term socio-economic value. Short-term power load forecasting is mainly used to predict the power load in the next few hours or days. The relationship between weather factors and load changes is very important for short-term forecasting. Short-term power load data has obvious temporal characteristics, and the traditional RNN model is more and more applied in this field. However, the RNN model may have gradient explosion or gradient disappearance. Therefore, based on the long-term and short-term memory neural network (LSTM), an improved AM-LSTM short-term load forecasting model is presented. The model improves the activation function in LSTM unit into weighted activation function group, and adds attention mechanism to improve the prediction accuracy.
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