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首页> 外文期刊>European Journal of Operational Research >Optimal operation of hydrothermal systems with Hydrological Scenario Generation through Bootstrap and Periodic Autoregressive Models
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Optimal operation of hydrothermal systems with Hydrological Scenario Generation through Bootstrap and Periodic Autoregressive Models

机译:通过Bootstrap和周期自回归模型产生水文情景的热液系统的最优运行。

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In electrical power systems with strong hydro generation, the use of adequate techniques to generate synthetic hydrological scenarios is extremely important for the evaluation of the ways the system behaves in order to meet the forecast energy demand. This paper proposes a new model to generate natural inflow energy scenarios in the long-term operation planning of large-sized hydrothermal systems. This model is based on the Periodic Autoregressive Model, PAR (p), where the identification of the p orders is based on the significance of the Partial Autocorrelation Function (PACF) estimated via Bootstrap, an intensive computational technique. The scenarios generated through this new technique were applied to the operation planning of the Brazilian Electrical System (BES), using the previously developed methodology of Stochastic Dynamic Programming based on Convex Hull algorithm (SDP-CHull). The results show that identification via Bootstrap is considerably more parsimonious, leading to the identification of lower orders models in most cases which retains the statistical characteristics of the original series. Additionally it presents a closer total mean operation cost when compared to the cost obtained via historic series.
机译:在具有强大水力发电的电力系统中,使用适当的技术来生成综合水文情景对于评估系统行为方式以满足预期的能源需求极为重要。本文提出了一种在大型热液系统的长期运行规划中生成自然流入能源情景的新模型。该模型基于周期性自回归模型PAR(p),其中p阶的识别基于通过密集计算技术Bootstrap估计的部分自相关函数(PACF)的重要性。通过使用先前开发的基于凸包算法(SDP-CHull)的随机动态规划方法,通过这项新技术生成的方案已应用于巴西电气系统(BES)的运营计划。结果表明,通过Bootstrap进行识别的过程要简单得多,从而在大多数情况下可以识别低阶模型,从而保留了原始序列的统计特征。另外,与通过历史系列获得的成本相比,它呈现出更接近的平均总运营成本。

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