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Online composition identification of integrated load models based on dynamic response feature learning
Power Grid Operation | 更新时间:2026-03-30
    • Online composition identification of integrated load models based on dynamic response feature learning

    • ZHEJIANG ELECTRIC POWER   Vol. 45, Issue 3, Pages: 85-95(2026)
    • DOI:10.19585/j.zjdl.202603008    

      CLC:
    • Received:05 June 2025

      Revised:2025-08-04

      Published:25 March 2026

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  • CHENG Ying,DONG Wei,JIANG Zhentao,et al.Online composition identification of integrated load models based on dynamic response feature learning[J].ZHEJIANG ELECTRIC POWER,2026,45(03):85-95. DOI: 10.19585/j.zjdl.202603008.

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