论文标题
异步分散的联合学习用于PV站的协作故障诊断
Asynchronous Decentralized Federated Learning for Collaborative Fault Diagnosis of PV Stations
论文作者
论文摘要
由于各种光伏(PV)阵列断层造成的损失不同,因此对断层类型的准确诊断变得越来越重要。与一个单一的PV站相比,多个PV站收集了足够的故障样本,但是由于潜在的利益冲突,不允许他们的数据直接共享。因此,可以利用联邦学习来培训协作性故障诊断模型。但是,建模效率受模型更新机制的严重影响,因为每个PV站都有不同的计算能力和数据量。此外,对于PV系统的安全稳定操作,必须保证协作建模的鲁棒性,而不是仅在中央服务器上处理。为了应对这些挑战,提出了一种新型异步分散的联邦学习(ADFL)框架。每个光伏电台不仅训练其本地模型,而且还通过交换模型参数来改善概括而不会失去准确性,从而参与了协作故障诊断。全局模型进行了汇总,以避免中央节点故障。通过设计异步更新方案,沟通开销和培训时间大大减少了。进行实验和数值模拟,以验证所提出的方法的有效性。
Due to the different losses caused by various photovoltaic (PV) array faults, accurate diagnosis of fault types is becoming increasingly important. Compared with a single one, multiple PV stations collect sufficient fault samples, but their data is not allowed to be shared directly due to potential conflicts of interest. Therefore, federated learning can be exploited to train a collaborative fault diagnosis model. However, the modeling efficiency is seriously affected by the model update mechanism since each PV station has a different computing capability and amount of data. Moreover, for the safe and stable operation of the PV system, the robustness of collaborative modeling must be guaranteed rather than simply being processed on a central server. To address these challenges, a novel asynchronous decentralized federated learning (ADFL) framework is proposed. Each PV station not only trains its local model but also participates in collaborative fault diagnosis by exchanging model parameters to improve the generalization without losing accuracy. The global model is aggregated distributedly to avoid central node failure. By designing the asynchronous update scheme, the communication overhead and training time are greatly reduced. Both the experiments and numerical simulations are carried out to verify the effectiveness of the proposed method.