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A research of Monte Carlo optimized neural network for electricity load forecast

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posted on 2024-11-15, 09:01 authored by Binbin Yong, Liang Huang, Fucun Li, Jun ShenJun Shen, Xin Wang, Qingguo Zhou
In this paper, we apply the Monte Carlo neural network (MCNN), a type of neural network optimized by Monte Carlo algorithm, to electricity load forecast. Meanwhile, deep MCNNs with one, two and three hidden layers are designed. Results have demonstrated that three-layer MCNN improves 70.35% accuracy for 7-week electricity load forecast, compared with traditional neural network. And five-layer MCNN improves 17.24% accuracy for 7-week forecast. This proves that MCNN has great potential in electricity load forecast.

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Citation

Yong, B., Huang, L., Li, F., Shen, J., Wang, X. & Zhou, Q. (2019). A research of Monte Carlo optimized neural network for electricity load forecast. The Journal of Supercomputing, Online First 1-14.

Journal title

Journal of Supercomputing

Volume

76

Issue

8

Pagination

6330-6343

Language

English

RIS ID

115375

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