Journal of System Simulation ›› 2026, Vol. 38 ›› Issue (2): 476-487.doi: 10.16182/j.issn1004731x.joss.25-0728

• Physical System Applications • Previous Articles    

Distributed Optimization for Integrated Energy Based on Multi-agent Reinforcement Learning

Tao Caixia, Chen Naikun, Gao Fengyang, Zhang Jiangang   

  1. School of Automation and Electrical Engineering, Lanzhou Jiaotong University, Lanzhou 730070, China
  • Received:2025-07-27 Revised:2025-10-16 Online:2026-02-18 Published:2026-02-11
  • Contact: Chen Naikun

Abstract:

To address the energy management and privacy preservation problems faced by the coordinated optimization of distributed integrated energy systems, a distributed coordinated optimization strategy based on the multi-agent proximal policy optimization algorithm was proposed. An energy management model was established under the MDP framework; the electrical and thermal heterogeneous energy characteristics were considered; a multi-region two-layer interaction mechanism was constructed. Under the framework of centralized training and decentralized execution, homomorphic encryption was utilized to avoid privacy leakage during the coordination process, while accurately quantifying individual contributions to mitigate the problem of variance explosion in multi-agent policy evaluation. In the hourly scheduling of the system, the minimum daily cost was taken as the objective function to search for the optimal strategy. The simulation results show that the proposed algorithm can perform adaptive training based on a large amount of historical data and complete the derivation of an optimal strategy, which can simultaneously reduce the operating cost of each region while satisfying the engineering constraints.

Key words: integrated energy, multi-region energy management, multi-agent algorithm, deep reinforcement learning, distributed optimization

CLC Number: