Short-term load forecast method for electric power system based on deeply recursive neural network
A recurrent neural network, short-term load forecasting technology, applied in biological neural network models, forecasting, neural architecture, etc., can solve problems such as difficulty in accurate forecasting
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[0044] combined with Figure 1-3 , further explain the technical solution.
[0045] Step 1: Collect and summarize the data collection and summary of power grid load data and meteorological data in historical areas, and import them into the Excel database.
[0046] Step 2: Data preprocessing. In order to avoid the occurrence of neuron saturation, it is necessary to preprocess the original load data. This will help the convergence of the training process and improve the prediction accuracy. The main preprocessing method is to count the maximum and minimum values of the historical load data in the training sample set, and normalize the load data to the [-1,1] interval, which can make the data at the same level and speed up the convergence of the neural network .
[0047] Step 3: Determine the model structure.
[0048]DNN (Deep Neural Network) has a multi-hidden layer structure, and repeatedly trains the input vector of the network to improve the accuracy of classification or...
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