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Distribution network planning based on statistical load modeling applying genetic algorithms and Monte-Carlo simulations

机译:基于应用遗传算法和蒙特卡洛模拟的统计负荷建模的配电网规划

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Two types of load uncertainties for planning studies, namely long term related to economic development and short-term related to time/weather factors, can be identified. In this paper the attempt is made first to establish a probabilistic model of short-term load uncertainties caused by time/weather factors. Then the algorithm able to cope with noisy function, such as planning criteria depending on stochastic loads, is suggested. The algorithm is based on simple GA with built in Monte-Carlo simulation block. The paper also contains the investigation of convergence properties of stochastic GA for different levels of noise. It is shown that it is possible to obtain the optimal compromise number of trials.
机译:可以确定两种用于计划研究的负荷不确定性,即与经济发展有关的长期不确定性和与时间/天气因素有关的短期不确定性。本文首先尝试建立由时间/天气因素引起的短期负荷不确定性的概率模型。然后,提出了能够应对噪声功能的算法,例如取决于随机负载的规划标准。该算法基于带有内置蒙特卡洛仿真模块的简单遗传算法。本文还研究了不同噪声水平下随机遗传算法的收敛特性。结果表明,有可能获得最佳的折衷试验次数。

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