With increasing concerns for data privacy and ownership, recent years have witnessed a paradigm shift in machine learning (ML). An emerging paradigm, federated learning (FL), has gained great attention and has become a novel design for machine learning implementations. FL enables the ML model training at data silos under the coordination of a central server, eliminating communication overhead and without sharing raw data. In this paper, we conduct a review of the FL paradigm and, in particular, compare the types, the network structures, and the global model aggregation methods. Then, we conducted a comprehensive review of FL applications in the energy domain (refer to the smart grid in this paper). We provide a thematic classification of FL to address a variety of energy-related problems, including demand response, identification, prediction, and federated optimizations. We describe the taxonomy in detail and conclude with a discussion of various aspects, including challenges, opportunities, and limitations in its energy informatics applications, such as energy system modeling and design, privacy, and evolution.
翻译:随着对数据隐私和所有权的日益关注,近年来在机器学习方面出现了范式的转变(ML),一种正在出现的模式,即联合学习(FL)已引起极大关注,并已成为机器学习实施的新设计。FL使得在中央服务器的协调下在数据仓进行ML模式培训能够消除通信间接费用,不分享原始数据。在本文件中,我们审查了FL范式,特别是比较了各种类型、网络结构和全球模型集成方法。然后,我们全面审查了能源领域的FL应用(参见本文件中的智能网格)。我们提供了FL的专题分类,以解决各种与能源有关的问题,包括需求反应、识别、预测和联邦优化。我们详细描述了分类,并在最后讨论了能源信息应用的各个方面,包括挑战、机会和局限性,例如能源系统建模和设计、隐私和演变。