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Dynamic optimization and scheduling method for incremental scenarios of integrated energy system based on deep reinforcement learning
INTELLIGENT DISPATCH TECHNOLOGIES FOR NEW\-TYPE POWER SYSTEMS | 更新时间:2026-03-30
    • Dynamic optimization and scheduling method for incremental scenarios of integrated energy system based on deep reinforcement learning

    • Electric Power Automation Equipment   Vol. 46, Issue 4, Pages: 77-84(2026)
    • DOI:10.16081/j.epae.202511029    

      CLC: TM73;TP18
    • Received:01 November 2024

      Revised:2025-06-24

      Online First:03 December 2025

      Published:10 April 2026

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  • YANG Mao,WANG Jinxin,ZHU Yidan,et al.Dynamic optimization and scheduling method for incremental scenarios of integrated energy system based on deep reinforcement learning[J].Electric Power Automation Equipment,2026,46(04):77-84. DOI: 10.16081/j.epae.202511029.

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