基于ARIMA-BP联合模型的风电中长期预测

IF 0.6 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Shan Ruiqing, Niu Jitao, Xuzheng Chai, Qingfa Gu
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引用次数: 0

摘要

提高风电输出功率预测的准确性,有助于提高电力调度的可靠性。本研究旨在提高中长期风电预测的准确性。提出了一种基于ARIMA-BP联合模型的中长期风电预测方法。利用经验模态分解(Empirical Mode Decomposition, EMD)对历史风电功率序列进行分解,得到固有模态函数(Intrinsic Mode Function, IMF)和残差分量,从而得到更规则的分量。然后,基于最小冗余最大相关性(mRAR)获得最优特征集,提高特征提取的预测精度;然后,使用BP神经网络模型预测高频分量,使用自回归综合移动平均模型(ARIMA)预测低频分量。最后,将得到的预测分量进行叠加,推导出最终的中长期风电预测结果。根据典型风电场的实际数据进行了分析。经过对比发现,经过经验模态分解和特征提取分析,基于ARIMA-BP联合模型的智能组合算法的误差小于仅使用BP神经网络或仅使用ARIMA的智能组合算法。通过实际数据分析,验证了本文提出的方法对中长期风电预测的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mid-to-long Term Wind Power Forecasting Based on ARIMA-BP Combined Model
Increasing the accuracy of the output power forecasting for wind power is helpful to the improvement of the reliability of power dispatching. This study aimed to improve the forecasting accuracy of mid-to-long term wind power. A mid-to-long term wind power forecasting based on ARIMA-BP combined model was proposed. The Empirical Mode Decomposition (EMD) was used to decompose the historical wind power series and obtain the Intrinsic Mode Function (IMF) and residual components, thereby obtaining more regular components. Then, the optimum feature set was obtained based on the minimum Redundancy Maximum Relevance (mRAR) to improve the prediction accuracy for feature extraction. After that, the high-frequency components were predicted using the Back Propagation (BP) neural network model, while the low-frequency components were predicted using the Autoregressive Integrated Moving Average model (ARIMA). Finally, the predicted components obtained were superimposed to deduce the final mid- and long-term wind power prediction results. An analysis was conducted according to the actual data from a typical wind farm. After comparison, it was found that, after empirical mode decomposition and feature extraction analysis, the error of the intelligent combination algorithm based on the ARIMA-BP combined model was smaller than that using only the BP neural network or only the ARIMA. By means of actual data analysis, the effectiveness of the method proposed by the study for mid- and long-term wind power prediction was verified.
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来源期刊
Recent Advances in Electrical & Electronic Engineering
Recent Advances in Electrical & Electronic Engineering ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
1.70
自引率
16.70%
发文量
101
期刊介绍: Recent Advances in Electrical & Electronic Engineering publishes full-length/mini reviews and research articles, guest edited thematic issues on electrical and electronic engineering and applications. The journal also covers research in fast emerging applications of electrical power supply, electrical systems, power transmission, electromagnetism, motor control process and technologies involved and related to electrical and electronic engineering. The journal is essential reading for all researchers in electrical and electronic engineering science.
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