Proceedings Article10.1109/ICC40277.2020.9148937
Electrical Load Forecasting Using Edge Computing and Federated Learning
Afaf Taïk,Soumaya Cherkaoui +1 more
- 07 Jun 2020
- pp 1-6
232
TL;DR: This paper reports the first use of federated learning for household load forecasting and achieves promising results, using Tensorflow Federated on the data from 200 houses from Texas, USA.
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Abstract: In the smart grid, huge amounts of consumption data are used to train deep learning models for applications such as load monitoring and demand response. However, these applications raise concerns regarding security and have high accuracy requirements. In one hand, the data used is privacy-sensitive. For instance, the fine-grained data collected by a smart meter at a consumer's home may reveal information on the appliances and thus the consumer's behaviour at home. On the other hand, the deep learning models require big data volumes with enough variety and to be trained adequately. In this paper, we evaluate the use of Edge computing and federated learning, a decentralized machine learning scheme that allows to increase the volume and diversity of data used to train the deep learning models without compromising privacy. This paper reports, to the best of our knowledge, the first use of federated learning for household load forecasting and achieves promising results. The simulations were done using Tensorflow Federated on the data from 200 houses from Texas, USA.
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Citations
Federated Learning for Internet of Things: A Comprehensive Survey
TL;DR: In this paper, a comprehensive survey of the emerging applications of federated learning in IoT networks is provided, which explores and analyzes the potential of FL for enabling a wide range of IoT services, including IoT data sharing, data offloading and caching, attack detection, localization, mobile crowdsensing and IoT privacy and security.
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Federated Deep Learning for Cyber Security in the Internet of Things: Concepts, Applications, and Experimental Analysis
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Federated learning for smart cities: A comprehensive survey
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TL;DR: In this paper , the authors present a comprehensive overview of the current and future developments of federated learning for smart cities and highlight societal, industrial, and technological trends driving FL for smart city applications.
147
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