Litcius/Paper detail

Blockchain and Federated Learning in P2P Energy Trading: Privacy Protection and Prosumer Incentives

Ziming Liu, Bonan Huang, Yushuai Li, Cheng Zhang, Tianyi Li, Qiuye Sun, Wenzhong Gao

2025IEEE Transactions on Industrial Informatics9 citationsDOIOpen Access PDF

Abstract

Although the P2P power transactions using the multiagent deep deterministic policy gradient (MADDPG) algorithm has been extensively studied, there are still challenges in privacy protection and training incentives. Furthermore, the stability and efficiency of the strategy decreases when dealing with nonindependent identically distribution (Non-IID) data from heterogeneous prosumers. Therefore, this article proposes a blockchain-enabled asynchronous federated learning-MADDPG (BEAFL-MADDPG) framework designed to enhance the training efficiency of heterogeneous prosumers while safeguarding data privacy. The framework includes a novel P2P energy trading model that facilitates energy trading amidst incomplete information while ensuring privacy assurances. In addition, a BEAFL-MADDPG algorithm is proposed, which accelerates training processes and enables parallel computation among agents. This algorithm enhances the efficiency of algorithm and empowers the training of diverse prosumers. Furthermore, a blockchain-enabled training mechanism and prosumer incentive scheme are proposed that not only encourage prosumer engagement in training but also ensure traceable transactions without the need for trust among participants. These mechanisms promote transparency and integrity, fostering a collaborative and secure environment for energy trading. Simulation results demonstrate that the framework achieves peak load reduction through optimized P2P trading, maintains computation efficiency across discount rates, and ensures secure transactions via blockchain-based incentives. These practical benefits support scalable and sustainable community microgrid operations.

Topics & Concepts

ProsumerIncentiveBlockchainComputer scienceInternet privacySmart contractComputer securityBusinessEnvironmental economicsMicroeconomicsEconomicsRenewable energyEngineeringElectrical engineeringBlockchain Technology Applications and SecurityPrivacy, Security, and Data ProtectionFinTech, Crowdfunding, Digital Finance
Blockchain and Federated Learning in P2P Energy Trading: Privacy Protection and Prosumer Incentives | Litcius