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A Method of Load Forecasting Based on Temporal Convolutional Network

机译:一种基于时间卷积网络的负载预测方法

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With the wide application of RNN and the high accuracy of LSTM and GRU, it is more and more popular in the field of load forecasting. However, the stability of the training is always worrying, and the phenomenon of gradient vanishing often occurs. Aiming at the problems, this paper proposes an intelligent load forecasting method which is suitable for medium and long term and short term. The method is based on temporal convolutional network Based on the residual learning idea of RESNET network model, the extended causal convolution and self-attention mechanism are used to build the intelligent load forecasting model of low-voltage substation area, which reflects the timeliness, accuracy and intelligence.
机译:随着RNN的广泛应用和LSTM和GRU的高精度,它在负荷预测领域越来越受欢迎。 然而,培训的稳定性总是令人担忧,并且经常发生梯度消失的现象。 针对问题,本文提出了一种智能负载预测方法,适用于中长期和短期。 该方法基于基于Reset网络模型的剩余学习思想的时间卷积网络,扩展的因果卷积和自我关注机制用于构建低压变电站面积的智能负载预测模型,这反映了及时性,准确性 和智力。

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