2022
DOI: 10.1155/2022/2784563
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Research on Impulse Power Load Forecasting Based on Improved Recurrent Neural Networks

Abstract: Deep learning is good at extracting the required feature quantity from the massive input information through multiple hidden layers and completing the learning through training to achieve the task of load forecasting. The impulse power load data contain a lot of noise, burrs, and strong randomness. As an improved recurrent neural networks, the output of long short-term memory (LSTM) network is not only related to the current input, but also closely related to the historical information, which can effectively p… Show more

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