利用净化数据进行电力市场概率预测:新加坡案例研究

Ning Zhou Xu, Xiang Gao, Songjian Chai, Ming Niu, Jia Xin Yang
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摘要

在放松管制的电力市场中,预测价格和负荷是一种常见的做法。然而,市场参与者和股东往往希望更深入地了解与价格预测相关的其他系统状态,如发电公司(GenCos)的电力流量和市场份额。纯粹的数据驱动方法很难获得这些洞察力。本文提出了一种基于物理学的解决方案,利用新加坡国家电力市场(NEMS)的真实消毒报价数据,对市场清算结果进行概率预测。我们的方法从近似历史上已清算的发电机报价开始。利用这些报价数据,我们提出了一个概率市场清算过程。这一过程允许对市场价格进行概率预测。通过考虑电力系统网络及其约束条件,我们还自然而然地获得了电力流和市场份额的概率预测。我们使用实际的 NEMS 数据验证了我们的方法。我们的研究结果表明,虽然价格预测的整体性能与现有方法不相上下,但我们提出的方法还能对其他相关的系统运行条件进行概率预测。此外,我们的方法还能进行情景研究,例如需求方参与和屋顶光伏系统对新加坡统一能源价格(USEP)的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging sanitized data for probabilistic electricity market prediction: a Singapore case study
In deregulated electricity markets, predicting price and load is a common practice. However, market participants and shareholders often seek deeper insights into other system statuses associated with price prediction, such as power flow and market share of generation companies (GenCos). These insights are challenging to obtain using purely data-driven methods. This paper proposes a physics-based solution for the probabilistic prediction of market-clearing outcomes, using real sanitized offer data from the National Electricity Market of Singapore (NEMS). Our approach begins with approximating the generator offers that have been historically cleared. Using this pool of offer data, we propose a probabilistic market-clearing process. This process allows for the probabilistic prediction of market prices. By considering the power system network and its constraints, we also naturally obtain probabilistic predictions of power flow and market shares. We validate our approach using actual NEMS data. Our findings show that while the overall performance of price prediction is comparable to existing methods, our proposed method can also provide probabilistic predictions of other associated system operating conditions. Furthermore, our method enables scenario studies, such as the impact of demand-side participation and the penetration of rooftop photovoltaic (PV) systems on the Uniform Singapore Energy Price (USEP).
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