Bilgi Yilmaz, Christian Laudagé, Ralf Korn, Sascha Desmettre
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引用次数: 0
摘要
由于需求变化和可再生能源间歇性等原因,电力市场的动态结构充满了不确定性,这给市场参与者带来了挑战。我们建议使用生成式对抗网络(GAN)生成合成电价数据。这种方法旨在提供全面的数据,通过捕捉电力市场的分布来准确反映实际电力市场的复杂性。因此,我们希望为市场参与者提供一个多功能工具,以成功地进行策略测试、风险模型验证和决策改进。获得高质量的合成电价数据有助于培养一个具有弹性和适应性的市场,最终促进电力市场团体更加了解情况并做好准备。为了评估各种类型 GAN 的性能,我们对土耳其的日内电力市场加权平均价格 (IDM-WAP) 进行了数值研究。作为一项重要发现,我们发现 GAN 可以有效生成真实的合成电价。此外,我们还发现,使用 GAN 算法的复杂变体并不会显著提高合成数据的质量。但是,这需要显著增加计算成本。
Electricity GANs: Generative Adversarial Networks for Electricity Price Scenario Generation
The dynamic structure of electricity markets, where uncertainties abound due to, e.g., demand variations and renewable energy intermittency, poses challenges for market participants. We propose generative adversarial networks (GANs) to generate synthetic electricity price data. This approach aims to provide comprehensive data that accurately reflect the complexities of the actual electricity market by capturing its distribution. Consequently, we would like to equip market participants with a versatile tool for successfully dealing with strategy testing, risk model validation, and decision-making enhancement. Access to high-quality synthetic electricity price data is instrumental in cultivating a resilient and adaptive marketplace, ultimately contributing to a more knowledgeable and prepared electricity market community. In order to assess the performance of various types of GANs, we performed a numerical study on Turkey’s intraday electricity market weighted average price (IDM-WAP). As a key finding, we show that GANs can effectively generate realistic synthetic electricity prices. Furthermore, we reveal that the use of complex variants of GAN algorithms does not lead to a significant improvement in synthetic data quality. However, it requires a notable increase in computational costs.