Residential Short Term Load Forecasting Based on Federated Learning

Jiuxiang Chen, Tianlu Gao, Ruiqi Si, Yuxin Dai, Yuqi Jiang, Jun Zhang
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引用次数: 1

Abstract

Load forecasting is an essential task in the power industry as an important means to assist the grid to balance supply demand. A large amount of user data monitored by smart grids can support deep learning models for load prediction, but accurate and fine-grained user data may reveal consumers' electricity consumption behaviors, which brings privacy and security issues. Federated Learning (FL) is a new type of high-efficiency machine learning between multiple participants or multiple computing nodes under the premise of ensuring information security during big data exchange and protecting the privacy of terminal data and personal data. Therefore, this paper explored a short-term residential energy demand forecasting method based on FL. The experimental data comes from the U.S. hourly residential base load. The federal forecast model was built on Pytorch, and we explored model behavior under different experimental conditions.
基于联邦学习的住宅短期负荷预测
负荷预测是电力行业的一项重要工作,是辅助电网平衡供需的重要手段。智能电网监控的大量用户数据可以支持深度学习模型进行负荷预测,但准确而细粒度的用户数据可能会揭示消费者的用电行为,带来隐私和安全问题。联邦学习(FL)是在保证大数据交换过程中的信息安全、保护终端数据和个人数据隐私的前提下,在多个参与者或多个计算节点之间进行的一种新型高效机器学习。因此,本文探索了一种基于FL的短期居民能源需求预测方法。实验数据来源于美国小时住宅基本负荷。在Pytorch上建立了联邦预报模型,探讨了模型在不同实验条件下的行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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