不确定条件下的扩产规划:随机方法在德国电力系统中的应用

M. Kendziorski, Mona Setje-Eilers, F. Kunz
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引用次数: 6

摘要

预计可再生能源将成为主要的发电来源。然而,可再生能源供应的可变性对发电扩展模型提出了挑战,因为需要充分考虑每小时发电的不确定性。本文分析了不确定性下不同优化方法的含义,从随机优化到鲁棒优化。我们将这些具体方法应用于2035年的德国电力系统,并将它们与每个不确定性实现的确定性优化进行比较。我们认为风能和太阳能发电的可用性是影响第二阶段调度水平的明确不确定性。确定性发电扩展问题显示了基于小时可再生上网的基本假设的最优容量组合的显著变化。此外,这些产能组合很难应对意外情况。相反,随机和稳健的方法提供了一致和稳健的容量组合,而总成本仅略高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generation expansion planning under uncertainty: An application of stochastic methods to the German electricity system
Renewable energies are expected to be the main electricity generation source. However, the variability of renewable energy supply poses challenges to the generation expansion modelling as uncertainty of hourly generation need to be adequately taken into account. This paper analyzes the implications of different approaches to optimization under uncertainty, ranging from stochastic to robust optimization. We apply these specific approaches to the German electricity system in 2035 and compare them to a deterministic optimization for each realization of the uncertainty. We consider the availability of wind and solar generation as explicit uncertainties affecting the second-stage dispatch level. The deterministic generation expansion problem shows significant variations of optimal capacity mixes depending on the underlying assumptions on hourly renewable feed-in. Moreover, these capacity mixes are hardly robust to unexpected situations. Contrarily, stochastic as well as robust approaches provide a consistent and robust capacity mix at only slightly higher total costs.
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