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Enhanced estimation of Autoregressive wind power prediction model using Constriction Factor Particle Swarm Optimization

机译:基于收缩因子粒子群算法的自回归风电预测模型增强估计

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Accurate forecasting is important for cost-effective and efficient monitoring and control of the renewable energy based power generation. Wind based power is one of the most difficult energy to predict accurately, due to the widely varying and unpredictable nature of wind energy. Although Autoregressive (AR) techniques have been widely used to create wind power models, they have shown limited accuracy in forecasting, as well as difficulty in determining the correct parameters for an optimized AR model. In this paper, Constriction Factor Particle Swarm Optimization (CF-PSO) is employed to optimally determine the parameters of an Autoregressive (AR) model for accurate prediction of the wind power output behaviour. Appropriate lag order of the proposed model is selected based on Akaike information criterion. The performance of the proposed PSO based AR model is compared with four well-established approaches; Forward-backward approach, Geometric lattice approach, Least-squares approach and Yule-Walker approach, that are widely used for error minimization of the AR model. To validate the proposed approach, real-life wind power data of Capital Wind Farm was obtained from Australian Energy Market Operator. Experimental evaluation based on a number of different datasets demonstrate that the performance of the AR model is significantly improved compared with benchmark methods.
机译:准确的预测对于以可再生能源为基础的发电具有成本效益和高效的监控非常重要。由于风能的广泛变化和不可预测性,基于风的功率是最难准确预测的能源之一。尽管自回归(AR)技术已被广泛用于创建风能模型,但它们显示的预测精度有限,并且难以确定优化的AR模型的正确参数。在本文中,采用收缩因子粒子群优化(CF-PSO)来最佳地确定自回归(AR)模型的参数,以准确预测风电输出行为。根据Akaike信息准则选择建议模型的适当滞后顺序。将所提出的基于PSO的AR模型的性能与四种公认的方法进行了比较;前向后退方法,几何格子方法,最小二乘法和Yule-Walker方法已广泛用于AR模型的误差最小化。为了验证所提出的方法,从澳大利亚能源市场运营商那里获得了首都风电场的真实风能数据。基于大量不同数据集的实验评估表明,与基准方法相比,AR模型的性能得到了显着改善。

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