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Improved Chicken Swarm Algorithms Based on Chaos Theory and Its Application in Wind Power Interval Prediction

机译:基于混沌理论的改进鸡群算法及其在风电间隔预测中的应用

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摘要

Probabilistic interval prediction can be used to quantitatively analyse the uncertainty of wind energy. In this paper, a wind power interval prediction model based on chaotic chicken swarm optimization and extreme learning machine (CCSO-ELM) is proposed. Traditional optimization has limitations of low population diversity and a tendency to easily fall into local minima. To address these limitations, chaos theory is adopted in the chicken swarm optimization (CSO), which improves its performance and efficiency. In addition, the traditional cost function does not reflect the deviation degree of off-interval points; hence, an evaluation index considering the relative deviation of off-interval points is proposed in this paper. Finally, the new cost function is taken as the fitness function, the output layer weight of ELM is optimized using CCSO, and the lower upper bound estimation (LUBE) is adopted to output the prediction interval directly. The simulation result shows that the proposed method can effectively reduce the average bandwidth, improve the quality of interval prediction, and guarantee the interval coverage.
机译:概率区间预测可用于定量分析风能的不确定性。提出了一种基于混沌鸡群优化和极限学习机(CCSO-ELM)的风电区间预测模型。传统的优化方法存在种群多样性低的局限性,并且容易陷入局部极小的趋势。为了解决这些限制,在鸡群优化(CSO)中采用了混沌理论,从而提高了其性能和效率。此外,传统的成本函数不能反映出间隔时间点的偏离程度。因此,本文提出了一种考虑间隔时间点相对偏差的评价指标。最后,将新的成本函数作为适应度函数,使用CCSO优化ELM的输出层权重,并采用下上限估计(LUBE)直接输出预测间隔。仿真结果表明,该方法可以有效降低平均带宽,提高区间预测的质量,保证区间覆盖。

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