电力科学与技术学报2024,Vol.39Issue(4) :153-159,186.DOI:10.19781/j.issn.1673-9140.2024.04.018

基于ARIMA-LSTM-RBF组合模型的风机出力短期预测

Short-term output prediction of wind turbine based on ARIMA-LSTM-RBF combined model

郑文杰 谭慧娟 赵瑞锋 徐展强 蔡煜 朱欣悦
电力科学与技术学报2024,Vol.39Issue(4) :153-159,186.DOI:10.19781/j.issn.1673-9140.2024.04.018

基于ARIMA-LSTM-RBF组合模型的风机出力短期预测

Short-term output prediction of wind turbine based on ARIMA-LSTM-RBF combined model

郑文杰 1谭慧娟 1赵瑞锋 1徐展强 1蔡煜 2朱欣悦2
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作者信息

  • 1. 广东电网有限责任公司电力调度控制中心,广东广州 510062
  • 2. 南方电网电力科技股份有限公司,广东广州 510180
  • 折叠

摘要

为响应中国"双碳"目标,以风电为代表的新能源在电网出力中的比重不断提升,有效的风机出力预测对于提前制定电网的调度与发电计划尤为重要.由于风电数据具有不规则性强、季节性强等特点.为此,针对单模型预测方法无法解决风电间歇性的同时保证预测精度的问题,提出一种利用差分自回归移动平均(autoregressive integrated moving average,ARIMA)时间序列、长短期记忆(long short-term memory,LSTM)网络和径向基函数(radial basis function,RBF)神经网络建立组合模型对某地区风机出力进行短期预测.首先,进行数据预处理及序列平稳性分析与处理,得到平稳性序列并通过ARIMA预测,其次,将不满足残差白噪声分析判定的不规则数据通过LSTM预测;然后,使用RBF神经网络学习和模拟得出预测值以提升精度;最后,基于某风电接入系统数据进行仿真.通过与其他单一模型预测方法对比,结果表明:所提出的组合模型预测方法能够对季节性强和不规则性强的风电数据进行预测并且有更好的预测精度,为相应设备的运行与调度提供参考,提升供电可靠性.

Abstract

In response to China's "dual carbon" goals,the proportion of new energy sources,represented by wind power,in the power output for power grids continues to increase. Effective wind turbine output prediction is particularly important for formulating grid scheduling and power generation plans ahead of time. Due to the strong irregularity and seasonality of wind power data,a single model prediction method cannot solve the problem of wind power intermittency while ensuring prediction accuracy. To address this,a combined model using the autoregressive integrated moving average (ARIMA) time series,long-and short-term memory (LSTM) network,and radial basis function (RBF) neural network is proposed for short-term prediction of wind turbine output in a certain region. First,data preprocessing and sequence stationarity analysis are performed to obtain a stationary sequence and predict it through ARIMA. Secondly,irregular data that do not meet the criteria of residual white noise analysis are predicted through LSTM. Then,the RBF neural network is used to learn and simulate the predicted values to improve accuracy. Finally,simulations are conducted based on data from a wind power station. Compared with other single model prediction methods,the results show that the proposed combined model prediction method can predict wind power data with strong seasonality and irregularity and has better prediction accuracy,providing a reference for the operation and scheduling of corresponding equipment and enhancing power supply reliability.

关键词

风机出力短期预测/ARIMA时间序列/LSTM/RBF神经网络

Key words

short-term output prediction of wind turbine/ARIMA time series/long-and short-term memory/RBF neural network

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基金项目

中国南方电网有限责任公司科技项目(036000KK52210054)

中国南方电网有限责任公司科技项目(GDKJXM20210063)

出版年

2024
电力科学与技术学报
长沙理工大学

电力科学与技术学报

CSTPCDCSCD北大核心
影响因子:0.85
ISSN:1673-9140
参考文献量19
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