Short-term load forecasting (STLF) plays a significant role in the operation of electricity trading markets. Considering the growing concern of data privacy, federated learning (FL) is increasingly adopted to train STLF models for utility companies (UCs) in recent research. Inspiringly, in wholesale markets, as it is not realistic for power plants (PPs) to access UCs' data directly, FL is definitely a feasible solution of obtaining an accurate STLF model for PPs. However, due to FL's distributed nature and intense competition among UCs, defects increasingly occur and lead to poor performance of the STLF model, indicating that simply adopting FL is not enough. In this paper, we propose a DRL-assisted FL approach, DEfect-AwaRe federated soft actor-critic (DearFSAC), to robustly train an accurate STLF model for PPs to forecast precise short-term utility electricity demand. Firstly. we design a STLF model based on long short-term memory (LSTM) using just historical load data and time data. Furthermore, considering the uncertainty of defects occurrence, a deep reinforcement learning (DRL) algorithm is adopted to assist FL by alleviating model degradation caused by defects. In addition, for faster convergence of FL training, an auto-encoder is designed for both dimension reduction and quality evaluation of uploaded models. In the simulations, we validate our approach on real data of Helsinki's UCs in 2019. The results show that DearFSAC outperforms all the other approaches no matter if defects occur or not.
翻译:短期负载预测(STLF)在电力交易市场的运作中起着重要作用。考虑到对数据隐私的日益关注,联盟学习(FL)日益被采纳,以在最近的研究中为公用事业公司培训STLF模型。在批发市场上,由于发电厂直接访问UC数据不现实,FLF绝对是获得精确的STLF模型用于PP的短期电力需求的可行解决办法。然而,由于FL的分布性质和UCs之间激烈竞争,缺陷日益出现,导致STLF模型的性能不佳,表明仅仅采用FL是不够的。在本论文中,我们建议采用DRL援助的FL模型,DEC-Aware feffect-Aware folferal-actorcritict (CarricFSAC) 方法, 大力培训PPP公司准确的STLF模型,以预测准确的短期水电需求。首先,我们设计基于长期短期记忆(LSTM)的所有SLLFS的模型,使用简单的历史载荷数据和时间数据。此外,考虑到缺陷的不确定性的不确定性的发生,我们为FLSLSLSL的降级质量分析的升级的模型是用来分析的加速的减少。我们所设计的模型, 。通过FLADLA值的升级的模型显示的升级的升级的模型,因此的升级的升级的升级的升级的升级的模型是用来显示的升级的简化的简化的简化的升级的升级的升级的升级的升级的升级的模型。