论文标题
置信度估计变压器用于长期可再生能源预测基于增强学习的功率电网调度
Confidence Estimation Transformer for Long-term Renewable Energy Forecasting in Reinforcement Learning-based Power Grid Dispatching
论文作者
论文摘要
可再生能源的扩展可以帮助实现二氧化碳排放和中和碳中和的目标。事实证明,一些现有的电网调度方法整合了短期可再生能源预测和增强学习(RL),以减轻能源波动风险的不利影响。但是,这些方法省略了长期输出预测,从而导致最佳功率流的稳定性和安全性问题。本文提出了一个置信估计变压器,用于基于增强学习的功率电网调度(构象-RPATCHing)的长期可再生能源预测。构象-RLPATCHing可以预测每个可再生能源发生器的长期活跃输出,并具有增强的变压器,从而提高混合能网格的性能。此外,提出了一种置信度估计方法来减少可再生能源的预测误差。同时,提出了一种调度必要性评估机制来决定是否需要调整发电机的主动输出。在SG-126功率电网模拟器上进行的实验表明,构型-RPATCHing的安全得分的第二最佳算法DDPG在安全得分中的第二好算法DDPG的进步大幅度提高了25.8%,并且与国家网格公司在同一模拟环境中赞助的Power Grid Disconting竞赛中获得了更好的总奖励。代码在https://github.com/buptlxh/conformer-rpatching中外包。
The expansion of renewable energy could help realizing the goals of peaking carbon dioxide emissions and carbon neutralization. Some existing grid dispatching methods integrating short-term renewable energy prediction and reinforcement learning (RL) have been proved to alleviate the adverse impact of energy fluctuations risk. However, these methods omit the long-term output prediction, which leads to stability and security problems on the optimal power flow. This paper proposes a confidence estimation Transformer for long-term renewable energy forecasting in reinforcement learning-based power grid dispatching (Conformer-RLpatching). Conformer-RLpatching predicts long-term active output of each renewable energy generator with an enhanced Transformer to boost the performance of hybrid energy grid dispatching. Furthermore, a confidence estimation method is proposed to reduce the prediction error of renewable energy. Meanwhile, a dispatching necessity evaluation mechanism is put forward to decide whether the active output of a generator needs to be adjusted. Experiments carried out on the SG-126 power grid simulator show that Conformer-RLpatching achieves great improvement over the second best algorithm DDPG in security score by 25.8% and achieves a better total reward compared with the golden medal team in the power grid dispatching competition sponsored by State Grid Corporation of China under the same simulation environment. Codes are outsourced in https://github.com/buptlxh/Conformer-RLpatching.