计算机科学
GSM演进的增强数据速率
数据科学
人工智能
作者
Yehui Li,Dalin Qin,H. Vincent Poor,Yi Wang
标识
DOI:10.1038/s41467-024-53352-9
摘要
The ubiquitous smart meters are expected to be a central feature of future smart grids because they enable the collection of massive amounts of fine-grained consumption data to support demand-side flexibility. However, current smart meters are not smart enough. They can only perform basic data collection and communication functions and cannot carry out on-device intelligent data analytics due to hardware constraints in terms of memory, computation, and communication capacity. Moreover, privacy concerns have hindered the utilization of data from distributed smart meters. Here, we present an end-edge-cloud federated split learning framework to enable collaborative model training on resource-constrained smart meters with the assistance of edge and cloud servers in a resource-efficient and privacy-enhancing manner. The proposed method is validated on a hardware platform to conduct building and household load forecasting on smart meters that only have 192 KB of static random-access memory (SRAM). We show that the proposed method can reduce the memory footprint by 95.5%, the training time by 94.8%, and the communication burden by 50% under the distributed learning framework and can achieve comparable or superior forecasting accuracy to that of conventional methods trained on high-capacity servers. Smart meters collect detailed consumption data but struggle with on-device analytics due to hardware and privacy issues. The authors propose an end-edge-cloud federated split learning framework to introduce edge intelligence, reducing memory, training time, and communication burden while maintaining accuracy.
科研通智能强力驱动
Strongly Powered by AbleSci AI