太阳能、水电和负荷需求置信区间模型的构建研究

Jiaoyiling Zhu, Weihao Hu, Xiao Xu, Shihua Luo, Haoming Liu, Chenbin Hu, Wei Zhan, Qiming Yan, Qi Huang
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引用次数: 0

摘要

可再生能源出力和负荷需求具有波动性和随机性,将影响电力系统的安全可靠运行。由于传统的电力点预测方法不能很好地描述其不确定性,区间预测可以为电力系统的运行提供更全面、更有价值的决策信息。在此基础上,采用无预假设模型的非参数核密度估计方法分析了可再生能源输出和负荷需求的概率分布特征。利用该方法对概率分布曲线进行拟合,推导出不同置信水平下的置信区间。以光伏(PV)数据为例,计算PV概率密度函数,拟合概率分布曲线,得到不同置信水平下的产量预测区间。以预测区间覆盖概率作为区间估计的评价指标,分析和衡量可再生能源出力和负荷需求建模估计的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Research on the Construction of Confidence Interval Model for Solar, Hydropower and Load Demand
The renewable energy output and load demand are accompanied by volatility and randomness, which will affect the safe and reliable operation of the power system. Since the traditional power point prediction method cannot describe their uncertainty well, interval prediction can provide more comprehensive and valuable decision information for the operation of the power system. Based on this, a non-parametric kernel density estimation method without pre-assumption model is used to analyze the probability distribution characteristics of renewable energy output and load demand. The probability distribution curves are also fitted by this method, and then confidence intervals at different confidence levels are derived. Using the photovoltaic (PV) data as an example, the PV probability density function is calculated and the probability distribution curve is fitted to obtain the output prediction intervals at different confidence levels. The prediction interval coverage probability is used as an evaluation index of interval estimation to analyze and measure the effect of modeling estimation of renewable energy output and load demand.
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