Hierarchical Federated Learning Incentivization for Gas Usage Estimation
Has Sun, Xiaoli Tang, Chengyi Yang, Zhenpeng Yu, Xiuli Wang, Qijie, Ding, Zengxiang Li, Han Yu

TL;DR
This paper introduces HI-GAS, a hierarchical federated learning incentive mechanism for gas usage estimation that improves participation and accuracy through contribution-based rewards and hierarchical model aggregation.
Contribution
The paper proposes a novel hierarchical FL incentive mechanism with a contribution-aware reward system and hierarchical model aggregation for gas usage estimation.
Findings
Effective in incentivizing participation of gas companies and heating stations.
Improves gas usage estimation accuracy through hierarchical model aggregation.
Validated through extensive experiments in a real-world industry setting.
Abstract
Accurately estimating gas usage is essential for the efficient functioning of gas distribution networks and saving operational costs. Traditional methods rely on centralized data processing, which poses privacy risks. Federated learning (FL) offers a solution to this problem by enabling local data processing on each participant, such as gas companies and heating stations. However, local training and communication overhead may discourage gas companies and heating stations from actively participating in the FL training process. To address this challenge, we propose a Hierarchical FL Incentive Mechanism for Gas Usage Estimation (HI-GAS), which has been testbedded in the ENN Group, one of the leading players in the natural gas and green energy industry. It is designed to support horizontal FL among gas companies, and vertical FL among each gas company and heating station within a…
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Taxonomy
TopicsAir Quality Monitoring and Forecasting · Machine Learning and ELM · Energy, Environment, Economic Growth
