论文标题
基于政策优化的近端政策优化学习能源和频率调节市场中的联合招标
Proximal Policy Optimization Based Reinforcement Learning for Joint Bidding in Energy and Frequency Regulation Markets
论文作者
论文摘要
在全球脱碳工作的推动下,将可再生能源迅速整合到常规电网中,带来了参与能源市场的电池储能系统(BESS)的新挑战和机遇。能源套利可能是BES的重要收入来源,因为由于可再生能源生成和电力需求之间的不匹配而导致的现货市场上的价格上涨。此外,建立的用于稳定电网的频率控制辅助服务(FCAS)市场可以为BES提供更高的回报,因为它们在毫秒内做出了响应的能力。因此,对于贝丝来说,仔细确定将多少能力分配给每个市场以最大化不确定的市场条件下的总利润至关重要。本文将贝斯的竞标问题作为马尔可夫决策过程,这使贝斯能够参与现货市场和FCAS市场,以最大程度地利用利润。然后,近端政策优化是一种无模型的深入强化学习算法,用于从能源市场的动态环境中学习最佳的投标策略,该策略是在连续的竞标量表下学习的。该模型使用澳大利亚国家电力市场的现实历史数据对培训和验证。结果表明,与单个市场相比,我们在两个市场中开发的联合招标策略都是显着有利可图的。
Driven by the global decarbonization effort, the rapid integration of renewable energy into the conventional electricity grid presents new challenges and opportunities for the battery energy storage system (BESS) participating in the energy market. Energy arbitrage can be a significant source of revenue for the BESS due to the increasing price volatility in the spot market caused by the mismatch between renewable generation and electricity demand. In addition, the Frequency Control Ancillary Services (FCAS) markets established to stabilize the grid can offer higher returns for the BESS due to their capability to respond within milliseconds. Therefore, it is crucial for the BESS to carefully decide how much capacity to assign to each market to maximize the total profit under uncertain market conditions. This paper formulates the bidding problem of the BESS as a Markov Decision Process, which enables the BESS to participate in both the spot market and the FCAS market to maximize profit. Then, Proximal Policy Optimization, a model-free deep reinforcement learning algorithm, is employed to learn the optimal bidding strategy from the dynamic environment of the energy market under a continuous bidding scale. The proposed model is trained and validated using real-world historical data of the Australian National Electricity Market. The results demonstrate that our developed joint bidding strategy in both markets is significantly profitable compared to individual markets.