AlShafeey Mutaz, Csaki Csaba
Institute of Data Analytics and Information Systems, Corvinus University of Budapest, Budapest, Fővám tér 13-15, H-1093, Hungary.
Heliyon. 2024 Jul 25;10(15):e34807. doi: 10.1016/j.heliyon.2024.e34807. eCollection 2024 Aug 15.
This study elucidates the formulation and validation of a dynamic hybrid model for wind energy forecasting, with a particular emphasis on its capability for both short-term and long-term predictive accuracy. The model is predicated on the assimilation of time-series data from past wind energy generation and employs a triad of machine learning algorithms: Artificial Neural Network (ANN), Support Vector Machine (SVM), and K-Nearest Neighbors (K-NN). Empirical data, harvested from a 2 MW grid-connected wind turbine, served as the basis for the training and validation phases. A comparative evaluation methodology was devised to scrutinize the performance of each constituent algorithm across a diverse array of metrics. This evaluation framework facilitated the identification of individual algorithmic limitations, which were subsequently mitigated through the implementation of a dynamic switching mechanism within the hybrid model. This innovative feature enables the model to adaptively select the most efficacious forecasting technique based on historical performance data. The hybrid model demonstrated superior forecasting accuracy in both, short-term energy forecasts at 15-min intervals over a day, and in broad, long-term. It recorded a Normalized Mean Absolute Error (NMAE) of 5.54 %, which is notably lower than the NMAE range of 5.65 %-9.22 % observed in other tested models, and significantly better than the average NMAE found in the literature, which spans from 6.73 % to 10.07 %. Such versatility renders it invaluable for grid operators and wind farm management, aiding in both operational and strategic planning. The study's findings not only contribute to the existing body of knowledge in renewable energy forecasting but also suggest the hybrid model's broader applicability in various other predictive analytics domains.
本研究阐明了一种用于风能预测的动态混合模型的构建与验证,特别强调其在短期和长期预测准确性方面的能力。该模型基于对过去风能发电时间序列数据的同化,并采用了三种机器学习算法:人工神经网络(ANN)、支持向量机(SVM)和K近邻算法(K-NN)。从一台2兆瓦并网风力涡轮机收集的经验数据,作为训练和验证阶段的基础。设计了一种比较评估方法,以在各种指标下仔细审查每个组成算法的性能。该评估框架有助于识别各个算法的局限性,随后通过在混合模型中实施动态切换机制来缓解这些局限性。这一创新特性使模型能够根据历史性能数据自适应地选择最有效的预测技术。该混合模型在一天内15分钟间隔的短期能源预测以及广泛的长期预测中均表现出卓越的预测准确性。它记录的归一化平均绝对误差(NMAE)为5.54%,明显低于其他测试模型中观察到的5.65%-9.22%的NMAE范围,并且显著优于文献中发现的平均NMAE,后者范围为6.73%-10.07%。这种多功能性使其对电网运营商和风电场管理具有极高的价值,有助于运营和战略规划。该研究结果不仅为可再生能源预测的现有知识体系做出了贡献,还表明了混合模型在其他各种预测分析领域的更广泛适用性。