基于 IDBO-BPNN 的短期风速预测方法

IF 1.5 Q2 ENGINEERING, MULTIDISCIPLINARY
Lingzhi Wang, Cheng Li, Chenyang Li, Ling Zhao
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引用次数: 0

摘要

众所周知,风能具有不确定性和波动性,因此需要准确的风速预测来保证风电场的稳定运行。为提高风速预测精度,本研究提出了一种基于改进蜣螂优化(IDBO)算法的 BP 神经网络(BPNN)短期风速预测模型。针对蜣螂优化(DBO)算法优化的 BPNN 存在局部优化和精度降低的问题,利用圆混沌映射进行种群初始化,以实现更均匀的初始分布。然后采用改进的正余弦算法、三角游走策略和自适应权重系数来优化蜣螂位置,平衡了全局探索和局部开发能力,提高了算法的搜索性能。最后,改进的 DBO 算法优化了 BPNN 的权重和阈值,构建了 IDBO-BPNN 预测模型。仿真实验基于美国俄亥俄州一个风电场的风速数据。将 IDBO-BPNN 模型与其他预测模型进行了比较,并引入了误差评估指标来评价实验结果。研究结果表明,所建议的模型能得出最准确的预测结果,并达到最佳误差评估指标。数据集 1 的 MAE、MSE、RMSE、NSE 和 R2 分别为 0.42247、0.28775、0.53642、88.8785%、89.161%;数据集 2 的 MAE、MSE、RMSE、NSE 和 R2 分别为 0.28283、0.14952、0.38668、85.7383%、86.577%;数据集 3 的 MAE、MSE、RMSE、NSE 和 R2 分别为 0.45406、0.39268、0.62664、84.3859%、84.931%。其中,在数据集 3 中,与 BPNN 模型相比,IDBO-BPNN 模型的五项评价指标分别提高了 41.53%、57.38%、34.71%、24.91% 和 11.44%。因此,所提出的 IDBO-BPNN 模型在短期风速预测中表现出更高的准确性,表明其在风能领域的可行性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A short-term wind speed prediction method based on the IDBO-BPNN
Wind energy is known for its uncertainty and volatility, necessitating accurate wind speed prediction for stable wind farm operations. To enhance wind speed prediction accuracy, this study proposes a BP neural network (BPNN) short-term wind speed prediction model based on the Improved Dung Beetle Optimization (IDBO) algorithm. Addressing the issue of local optimization and reduced accuracy in the BPNN optimized by the Dung Beetle Optimization (DBO) algorithm, the circle chaotic mapping is utilized for population initialization to achieve a more uniform initial distribution. The improved sine-cosine algorithm, triangle wandering strategy, and adaptive weight coefficient are then employed to optimize dung beetle positions, balancing global exploration and local development capabilities and improving the algorithm’s search performance. Finally, the improved DBO algorithm optimizes the weights and thresholds of the BPNN, and the IDBO-BPNN prediction model was constructed. Simulation experiments were conducted based on wind speed data from a wind farm in Ohio, USA. The IDBO-BPNN model was compared with other prediction models, and error evaluation indexes were introduced to evaluate the experimental results. The findings demonstrate that the suggested model yields the most accurate predictions and achieves the optimal error evaluation indexes. MAE, MSE, RMSE, NSE and R2 of dataset 1 are 0.42247, 0.28775, 0.53642, 88.8785%, 89.161%, those of dataset 2 are 0.28283, 0.14952, 0.38668, 85.7383%, 86.577%, and those of dataset 3 are 0.45406, 0.39268, 0.62664, 84.3859%, 84.931%. In particular, compared with BPNN model, the five evaluation indexes of the IDBO-BPNN model promoted by 41.53%, 57.38%, 34.71%, 24.91%, and 11.44%, respectively in dataset 3. Therefore, that the proposed IDBO-BPNN model exhibits higher accuracy in short-term wind speed prediction, indicating its feasibility and superiority in the realm of wind energy.
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来源期刊
Engineering Research Express
Engineering Research Express Engineering-Engineering (all)
CiteScore
2.20
自引率
5.90%
发文量
192
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