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Ultra-Short-Term Wind-Power Forecasting Based on the Weighted Random Forest Optimized by the Niche Immune Lion Algorithm

机译:基于利基免疫狮子算法优化的加权随机林的超短期风力预测

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摘要

The continuous increase in energy consumption has made the potential of wind-power generation tremendous. However, the obvious intermittency and randomness of wind speed results in the fluctuation of the output power in a wind farm, seriously affecting the power quality. Therefore, the accurate prediction of wind power in advance can improve the ability of wind-power integration and enhance the reliability of the power system. In this paper, a model of wavelet decomposition (WD) and weighted random forest (WRF) optimized by the niche immune lion algorithm (NILA-WRF) is presented for ultra-short-term wind power prediction. Firstly, the original serials of wind speed and power are decomposed into several sub-serials by WD because the original serials have no obvious day characteristics. Then, the model parameters are set and the model trained with the sub-serials of wind speed and wind power decomposed. Finally, the WD-NILA-WRF model is used to predict the wind power of the relative sub-serials and the result is reconstructed to obtain the final prediction result. The WD-NILA-WRF model combines the advantage of each single model, which uses WD for signal de-noising, and uses the niche immune lion algorithm (NILA) to improve the model’s optimization efficiency. In this paper, two empirical analyses are carried out to prove the accuracy of the model, and the experimental results verify the proposed model’s validity and superiority compared with the back propagation neural network (BP neural network), support vector machine (SVM), RF and NILA-RF, indicating that the proposed method is superior in cases influenced by noise and unstable factors, and possesses an excellent generalization ability and robustness.
机译:在能源消耗的不断增加,取得了风力发电的潜力巨大。然而,明显的间歇性,并在风电场输出功率的波动风速结果的随机性,严重影响电能质量。因此,风力发电的预先准确预测可以提高风力发电整合能力,提高电力系统的可靠性。在本文中,由小生免疫狮子算法(尼拉-WRF)优化的小波分解(WD)和加权随机森林(WRF)的模型被呈现为超短期风电功率预测。首先,风的速度和力量的原始连续通过WD因为原来的连续无明显天特性分解成若干个子连续。然后,将模型参数被设定,并与风速和风力发电的子连续训练模型分解。最后,WD-尼拉-WRF模型被用于预测的相对子连续的风力发电,其结果被重构,以获得最终的预测结果。在WD-尼拉-WRF模式结合每个单一的模式,它使用WD信号去噪的优势,并采用小生免疫狮子算法(尼拉),以提高模型的优化效率。在本文中,两个经验分析被进行,以证明该模型的准确度,与实验结果验证了该模型的有效性和优越性与反向传播神经网络(BP神经网络),支持向量机(SVM),RF相比和尼拉-RF,表明所提出的方法是在通过噪声和不稳定因素的影响的情况下优异的,并具有优异的泛化能力和鲁棒性。

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