Exploring Models of Electricity Price Forecasting: Case Study on A FCAS Market

Kenshiro Kato, Koki Iwabuchi, Daichi Watari, Dafang Zhao, Hiroki Nishikawa, Ittetsu Taniguchi, Takao Onoye
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Abstract

VPPs (Virtual Power Plants) play an important role in balancing supply and demand. In order to make VPP revenue, it is necessary to forecast market prices and bidding energy for supply and demand adjustment markets, called FCAS (Frequency Control Ancillary Service) markets. However, price forecasting for FCAS markets is still challenging because they have multiple different response times and one price, directly and indirectly, influences each other. There is no study on electricity price forecasting in FCAS markets, and a novel forecasting model considering not only its price but also the other prices of the different response times is necessary. This work presents a market price forecasting model for a FCAS market by exploring the forecasting models derived from a wholesale market, and then it takes into account the markets with different response times as well as the target one from AEMO (Australian Energy Market Operator). Through the experiments, our forecasting model achieves 7.8$/MWh of RMSE on the electricity price in AEMO’s 6-Second-Raise market. The proposed forecasting model reduces RMSE by 80% compared to the forecast price published by AEMO.
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电价预测模型探索:以FCAS市场为例
虚拟电厂在平衡电力供需方面发挥着重要作用。为了获得VPP收益,有必要对供需调节市场(FCAS (Frequency Control auxiliary Service,频率控制辅助服务)市场进行市场价格预测和能源投标。然而,FCAS市场的价格预测仍然具有挑战性,因为它们有多个不同的响应时间,并且一个价格直接或间接地相互影响。目前还没有对FCAS市场的电价预测进行研究,有必要建立一种既考虑本电价又考虑不同响应时间下其他电价的预测模型。本文通过对批发市场的预测模型进行探索,提出了一个FCAS市场的市场价格预测模型,并考虑了不同响应时间的市场以及AEMO(澳大利亚能源市场运营商)的目标市场。通过实验,我们的预测模型对AEMO 6秒提价市场的电价RMSE达到了7.8美元/兆瓦时。与AEMO公布的预测价格相比,该预测模型的均方根误差降低了80%。
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