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首页> 外文期刊>Applied Energy >Predicting the stochastic behavior of uncertainty sources in planning a stand-alone renewable energy-based microgrid using Metropolis-coupled Markov chain Monte Carlo simulation
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Predicting the stochastic behavior of uncertainty sources in planning a stand-alone renewable energy-based microgrid using Metropolis-coupled Markov chain Monte Carlo simulation

机译:预测使用大都会耦合马尔可夫链蒙特卡罗模拟规划独立可再生能源微电网的不确定性来源的随机行为

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Due to the lack of available flexibility sources to cope with different uncertainties in the real-time operation of stand-alone renewable energy-based microgrids, the stochastic behavior of uncertainty sources needs to be included in the planning stage. Since there is a high association between some of the uncertainty sources, defining a proper time series to represent the behavior of each source of uncertainty is a challenging issue. Consequently, uncertainty sources should be modeled in such a way that the designed microgrid be able to cope with all scenarios from probability and impact viewpoints. This paper proposes a modified Metropolis-coupled Markov chain Monte Carlo (MC)3 simulation to predict the stochastic behavior of different uncertainty sources in the planning of a stand-alone renewable energy-based microgrid. Solar radiation, wind speed, the water flow of a river, load consumption, and electricity price have been considered as primary sources of uncertainty. A novel data classification method is introduced within the (MC)(3) simulation to model the time-dependency and the association between different uncertainty sources. Moreover, a novel curve-fitting approach is proposed to improve the accuracy of representing the multimodal distribution functions, modeling the Markov chain states, and the long-term probability of uncertainty sources. The predicted representative time series with the proposed modified (MC)(3) model is benchmarked against the retrospective model, the long-term historical data, and the simple Monte Carlo simulation model to capture the stochastic behavior of uncertainty sources. The results show that the proposed model represents the probability distribution function of each source of uncertainty, the continuity of samples, time dependency, the association between different uncertainty sources, short-term and long-term trends, and the seasonality of uncertainty sources. Finally, results confirm that the proposed modified (MC)(3) can appropriately predict all scenarios with high probability and impact.
机译:由于缺乏可用的灵活性来源来应对独立可再生能源的微电网的实时运行中的不同不确定性,因此需要在规划阶段中包含不确定性来源的随机行为。由于某些不确定性来源之间存在高度关联,因此定义适当的时间序列来表示每个不确定来源的行为是一个具有挑战性的问题。因此,应以这样的方式建模不确定性来源,即所设计的微电网能够应对概率和影响视点的所有情景。本文提出了一种改进的大都会耦合马尔可夫链蒙特卡罗(MC)3模拟,以预测不同不确定性来源的随机行为,在实体基于可再生能源基微电网的规划中。太阳辐射,风速,河流的水流,负荷消耗和电价被认为是主要的不确定性来源。在(MC)(3)模拟中引入了一种新的数据分类方法,以建模时间依赖性和不同不确定性源之间的关联。此外,提出了一种新颖的曲线拟合方法来提高代表多式联分布函数,建模马尔可夫链状态的准确性,以及不确定来源的长期概率。具有所提出的修改(MC)(3)模型的预测代表时间序列与回顾模型,长期历史数据和简单的蒙特卡罗模拟模型进行了基准测试,以捕获不确定性来源的随机行为。结果表明,该模型代表了每个不确定性,样本连续性,时间依赖性,不同不确定性来源的关联,短期和长期趋势之间的概率分布函数,以及不确定性来源的季节性。最后,结果证实,所提出的修改(MC)(3)可以适当地预测具有高概率和影响的所有场景。

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