利用
套利
交易策略
算法交易
电
统计套利
强化学习
高频交易
技术分析
计量经济学
经济
计算机科学
订单(交换)
金融经济学
人工智能
工程类
财务
套利定价理论
风险套利
计算机安全
电气工程
资本资产定价模型
作者
Sumeyra Demir,Koen Kok,Nikolaos G. Paterakis
标识
DOI:10.1016/j.segan.2023.101023
摘要
In this paper, risk-constrained arbitrage trading strategies that exploit price differences arising across short-term electricity markets, namely day-ahead (DAM), continuous intraday (CID) and balancing (BAL) markets, are developed and evaluated. To open initial DAM positions, a rule-based trading policy using DAM and CID price forecasts is proposed. DAM prices are predicted using both technical indicator features and data augmentation methods, such as autoencoders and generative adversarial networks. Meanwhile, CID prices are predicted using novel features that are engineered from the limit order book. Using the forecasts, the direction of price movements is correctly predicted the majority of the time. To manage open DAM positions while optimising the risk-reward ratio, deep reinforcement learning agents trained using the advantage actor–critic algorithm (A2C) are employed. Evaluated across Dutch short-term markets, A2C yields profits surpassing those obtained using A3C and other benchmarks. We expect our study to benefit electricity traders and researchers who seek to develop state-of-art intelligent trading strategies.
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