|Table of Contents|

Optimized Wavelet Transform Neural Networks for Accurat Distributed Renewable Energy Information Prediction(PDF)

南京师范大学学报(工程技术版)[ISSN:1006-6977/CN:61-1281/TN]

Issue:
2024年02期
Page:
11-19
Research Field:
电气工程
Publishing date:

Info

Title:
Optimized Wavelet Transform Neural Networks for Accurat Distributed Renewable Energy Information Prediction
Author(s):
Luan Kaining1Zhuang Zhong2Yang Shihai2Duan Meimei2Kong Yueping2Zhou Yuqi2Zhang Tingquan2Ding Zecheng2
(1.State Grid Jiangsu Electric Power Co.,Ltd.,Nanjing 210019,China)
(2.Marketing Service Center of State Grid Jiangsu Electric Power Co.,Ltd.,Nanjing 210019,China)
Keywords:
distributed renewable energyload predictionirradiation intensity predictionurban power gridwavelet transform neural network
PACS:
TM615
DOI:
10.3969/j.issn.1672-1292.2024.02.002
Abstract:
Distributed renewable energy generation is a crucial component of low-carbon power systems. As the proportion of distributed renewable energy in urban power grids is gradually increasing,and the impacts of random load fluctuations and random weather changes on urban power grids are increasing,placing higher demands on the accuracy of distributed renewable energy information forecasting. Currently,the primary generation methods of distributed renewable energy are distributed photovoltaic power generation and distributed wind power generation. The changes of urban electricity load are both cyclical and random,while factors such as wind speed and solar irradiance have significant impacts on distributed wind power generation and distributed photovoltaic power generation,respectively. Therefore,based on wavelet transform neural network,a distributed renewable energy information prediction method is constructed. Firstly,the model of distributed renewable energy is established by analyzing the working principle of distributed renewable energy. Then,the wavelet transform neural network is optimized to predict the parameters that play a significant role in the renewable energy grid,such as the load power change and the irradiation intensity,using wind power generation and photovoltaic power generation as examples. Finally,the example verifies that the proposed model can accurately predict the information of distributed renewable energy.

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Last Update: 2024-06-15