通过混合集合学习架构实现基于多模型融合的风力发电预测

IF 0.7 4区 工程技术 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Electronics Letters Pub Date : 2024-08-21 DOI:10.1049/ell2.13314
Jian Wang, Yanpeng Hou, Zhiqi Ma, Jianming Qi
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引用次数: 0

摘要

由于风力发电的间歇性和随机性,构建精确的风力发电预测模型对于现代电力系统的稳定运行和优化调度具有极大的必要性。考虑到单一学习器模型的性能不尽如人意,以及不同机器学习算法的学习能力各不相同,通过混合集合架构将 XGBoost 模型、KNN 算法、SVM 算法和 CNN-BiLSTM-Attention 神经网络集成在一起,构建了多模型融合的短期风力发电预测模型。应用皮尔逊相关分析揭示气象因素与风力之间的相互关系。此外,还对基础学习器的训练样本进行了重构,以确保所有数据都能得到利用。通过混合集合学习框架,将每个学习器的优势协调地结合起来。在同一场景下,比较了集合学习模型和单一学习模型的预测结果。仿真结果表明,集合学习模型能有效提取输入信息的潜在特征,实现更高的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Wind power generation forecasting based on multi-model fusion via blending ensemble learning architecture

Because of the intermittency and randomness of wind power generation, constructing an accurate wind power generation forecasting model is of great necessity for stable operation and optimal scheduling of modern power systems. Considering the unsatisfied performance of the single learner model and the diverse learning abilities of different machine learning algorithms, XGBoost model, KNN algorithm, SVM algorithm, and CNN-BiLSTM-Attention neural network are integrated via blending ensemble architecture to construct the multi-model fusion short-term wind power forecasting model. Pearson correlation analysis is applied to reveal the interrelation between meteorological factors and wind power. Additionally, the training samples of base learners are reconstructed for ensuring all data can be utilized. The advantages of each learner are combined co-ordinately via blending ensemble learning framework. Prediction results of ensemble learning model and single learner model are compared in the same scenario. Simulation results indicate that the ensemble learning model can effectively extract potential features of input information and realize higher prediction accuracy.

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来源期刊
Electronics Letters
Electronics Letters 工程技术-工程:电子与电气
CiteScore
2.70
自引率
0.00%
发文量
268
审稿时长
3.6 months
期刊介绍: Electronics Letters is an internationally renowned peer-reviewed rapid-communication journal that publishes short original research papers every two weeks. Its broad and interdisciplinary scope covers the latest developments in all electronic engineering related fields including communication, biomedical, optical and device technologies. Electronics Letters also provides further insight into some of the latest developments through special features and interviews. Scope As a journal at the forefront of its field, Electronics Letters publishes papers covering all themes of electronic and electrical engineering. The major themes of the journal are listed below. Antennas and Propagation Biomedical and Bioinspired Technologies, Signal Processing and Applications Control Engineering Electromagnetism: Theory, Materials and Devices Electronic Circuits and Systems Image, Video and Vision Processing and Applications Information, Computing and Communications Instrumentation and Measurement Microwave Technology Optical Communications Photonics and Opto-Electronics Power Electronics, Energy and Sustainability Radar, Sonar and Navigation Semiconductor Technology Signal Processing MIMO
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