适用于可再生能源技术经济建模的随机参数三点逼近

V. O. Kostiuk, M. Fedosenko, Abdessamad Mesbahi
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引用次数: 0

摘要

本文研究的是一类具有不确定技术经济参数的大范围实物仿真结果的精度提高问题。各种确定性和随机建模技术似乎成功地用于经济和数学问题的解决,特别是由于开发实用的模拟概率方法,如蒙特卡洛模拟和点估计方法的便利。两者都被广泛用于解决能源系统建模时的不确定性。用三点估计技术对模型随机参数的分布函数进行了分析,得到了代表模型随机参数的标准函数。基于标准正态分布解析构造了适合于可再生能源系统不确定模型参数预测和(或)统计随机抽样解析表示的综合偏态概率密度函数,并得到了综合概率函数矩的解析表达式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Three-Point Approximation of the Stochastic Parameter applicable for Technical and Economic Modeling of Renewable Sources
The research refers to the problem of the accuracy increase of simulation results for a wide class of physical objects with uncertain technical and economic parameters. Various deterministic and stochastic modeling techniques appear to be successfully used for economic and mathematical problems solution, particularly due to exploiting expedient for practical simulation probabilistic methods like Monte Carlo Simulation and Point Estimate methods. Both are extensively used to tackle uncertainties when modeling energy systems as well. The standard functions to represent the stochastic (random) parameters of the model are analyzed with the use of three-point estimation technique for the distribution functions of their probable values. A synthetic skewed probability density function was analytically constructed basing on the standard normal distribution, which is suitable for analytic representation of the predicted and/or statistical random sampling of the uncertain model parameters of energy system with renewables, and analytical expressions were obtained to compute the moments of proposed synthetic probability function.
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