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Medium-term Load Forecasting Method with Improved Deep Belief Network for Renewable Energy
Author(s) -
Lianshan Yan,
Zhi Li,
Yu Haiwei
Publication year - 2021
Publication title -
distributed generation and alternative energy journal
Language(s) - English
Resource type - Journals
eISSN - 2156-3306
pISSN - 2156-6550
DOI - 10.13052/dgaej2156-3306.3735
Subject(s) - renewable energy , computer science , bernoulli's principle , wind power , electric power system , deep belief network , artificial intelligence , term (time) , power (physics) , artificial neural network , engineering , electrical engineering , physics , quantum mechanics , aerospace engineering
With the continuous transition of the traditional power system to the newpower system, the composition of the power generation side in the powersystem has gradually begun to be dominated by renewable energy (at leastmore than 50%). Among the renewable energy sources, wind power is themost susceptible to weather and environmental inuences. These factorsincrease the complexity of the power generation mode, and put forwardhigher requirements for the accuracy and stability of load forecasting. Thispaper proposes a medium-term renewable energy load forecasting methodbased on an improved deep belief network (IDBN-NN). The method includesthe construction of a deep belief network, the layer-by-layer pre-trainingand ne-tuning of model parameters, and the application of the model.In the process of model parameter pre-training, Gauss-Bernoulli RestrictedBoltzmann Machine (GB-RBM) is used as the rst part of the stacked deepbelief network, so that it can process multiple types of real-valued input data more effectively. In addition, IDBN-NN uses a combination of unsupervisedtraining and supervised training for pre-training. Finally, the actual load datais used to analyze the calculation example. When the number of RBM layersis 3, the number of fully connected layers is 1, and Dropout is equal to0.2, the MSE and loss values are optimal, which are 0.0037 and 0.0104,respectively. The experimental results show that the proposed method hashigher prediction accuracy when the training sample is large and the loadinuencing factors are complex.

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