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Estimation of the probability density function of renewable power production using a hybrid method of minimum frequency and maximum entropy

机译:使用最小频率和最大熵的混合方法估算可再生能源发电的概率密度函数

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Accurately estimating the probability distribution of renewable power production is a fundamental and challenging task in the probabilistic analysis of power systems with a high penetration of renewable energy. In this study, a novel hybrid method of minimum frequency and maximum entropy (MFME) is proposed for accurately and rapidly estimating the probability density function (PDF) of renewable power production. Based on the maximum entropy (ME) principle, a probability distribution optimization model is built to obtain a PDF estimator with the maximum distribution entropy. For convenience in solving the model, the probability density estimates of actual samples calculated by the minimum frequency (MF) method are introduced as a supplement to the moment constraints of the ME optimization model. The results indicate that the MFME has a higher accuracy compared with the conventional parameter distribution estimation(CPDE) and Gaussian kernel density estimation (GKDE), and its advantages of no boundary effects and a fast sampling speed for a large original sample size are more suitable for the PDF estimation of renewable power production.
机译:准确估计可再生能源发电的概率分布是对具有高可再生能源渗透率的电力系统进行概率分析的一项基本且具有挑战性的任务。在这项研究中,提出了一种新颖的最小频率和最大熵混合方法(MFME),以准确快速地估算可再生能源发电的概率密度函数(PDF)。基于最大熵(ME)原理,建立概率分布优化模型,以获得具有最大分布熵的PDF估计量。为了方便求解模型,引入了通过最小频率(MF)方法计算的实际样本的概率密度估计,作为对ME优化模型的矩约束的补充。结果表明,与常规参数分布估计(CPDE)和高斯核密度估计(GKDE)相比,MFME具有更高的精度,并且对于较大的原始样本量而言,其无边界效应和快速采样的优势更为合适。用于可再生能源发电量的PDF估算。

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