Zhu Ruijin, Li Tingyu, Tang Bo
Electric Engineering College, Tibet Agriculture and Husbandry College, Nyingchi, 860000, China.
Daqing Power Supply Company of State Grid Heilongjiang Electric Power Co., Ltd, China, DaQing, 163000, China.
Sci Rep. 2024 Jun 21;14(1):14348. doi: 10.1038/s41598-024-65159-1.
Solar photovoltaic (PV) power generation is susceptible to environmental factors, and redundant features can disrupt prediction accuracy. To achieve rapid and accurate online prediction, we propose a method that combines Principal Component Analysis (PCA) with a multi-strategy improved Squirrel Search Algorithm (SSA) to optimize Support Vector Machine (MISSA-SVM) for prediction. Initially, to mitigate the impact of redundant features on prediction accuracy, KPCA is employed for feature dimensionality reduction. Subsequently, SVM is suggested as the foundational algorithm for constructing the prediction model. Furthermore, to address the influence of hyperparameter selection on model performance, SSA is introduced for optimizing SVM hyperparameters, with the aim of establishing the optimal prediction model. Moreover, to enhance solution efficiency and accuracy, a multi-strategy approach termed MISSA is proposed, which integrates Population Initialization based on the Tent map, Nonlinear Predator Presence Probability, Chaotic-based Dynamic Opposition-based Learning, and Selection Strategy, to refine SSA. Finally, through case studies, the performance of MISSA optimization is assessed using challenging CEC2021 test functions, demonstrating its high optimization performance, stability, and significance. Subsequently, the performance of the prediction model is validated using two datasets, showcasing that the proposed prediction method achieves high accuracy and robust prediction stability.
太阳能光伏发电易受环境因素影响,冗余特征会干扰预测精度。为实现快速准确的在线预测,我们提出一种将主成分分析(PCA)与多策略改进松鼠搜索算法(SSA)相结合的方法,以优化支持向量机(MISSA-SVM)进行预测。首先,为减轻冗余特征对预测精度的影响,采用核主成分分析(KPCA)进行特征降维。随后,建议将支持向量机(SVM)作为构建预测模型的基础算法。此外,为解决超参数选择对模型性能的影响,引入松鼠搜索算法(SSA)来优化支持向量机的超参数,旨在建立最优预测模型。而且,为提高求解效率和精度,提出一种称为MISSA的多策略方法,该方法集成了基于帐篷映射的种群初始化、非线性捕食者存在概率、基于混沌的动态反向学习和选择策略,以改进松鼠搜索算法(SSA)。最后,通过案例研究,使用具有挑战性的CEC2021测试函数评估MISSA优化的性能,证明其具有较高的优化性能、稳定性和重要性。随后,使用两个数据集验证了预测模型的性能,表明所提出的预测方法具有高精度和强大的预测稳定性。