Short-term load forecasting based on DenseNet-LSTM fusion model

Pan Liyun, Zhuang Wenjun, Wang Sining, Han Lu
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引用次数: 2

Abstract

Short-term load forecasting is of great significance to the smooth operation and safe dispatch of the power grid, and the accuracy and real-time performance of the existing models need to be further improved. Aiming at the shortcomings of existing models that cannot balance prediction accuracy and computational complexity, a fusion model based on dense block network (DenseNet) and long short-term memory network (LSTM) is proposed. First, the improved DenseNet is introduced to mine the potential characteristics of historical load data, and then the data characteristics are dynamically trained through LSTM to reduce the loss of time series characteristics and realize short-term load forecasting of power data. Finally, the public data set is used to analyze the calculation examples. The experimental results show that the fusion model based on DenseNet-LSTM has higher prediction accuracy and generalization ability, while reducing the amount of calculation, and has a good application prospect.
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基于DenseNet-LSTM融合模型的短期负荷预测
短期负荷预测对电网的平稳运行和安全调度具有重要意义,现有模型的准确性和实时性有待进一步提高。针对现有模型无法平衡预测精度和计算复杂度的缺点,提出了一种基于密集块网络(DenseNet)和长短期记忆网络(LSTM)的融合模型。首先引入改进的DenseNet算法挖掘历史负荷数据的潜在特征,然后通过LSTM算法对数据特征进行动态训练,减少时间序列特征的损失,实现电力数据的短期负荷预测。最后,利用公共数据集对计算实例进行分析。实验结果表明,基于DenseNet-LSTM的融合模型具有较高的预测精度和泛化能力,同时减少了计算量,具有良好的应用前景。
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