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Optimal Scheduling Strategy of Residential Station Area Considering the Potential Mining of Energy Storage of Various Elastic Resources
Application of Energy Storage Technology | 更新时间:2025-07-29
    • Optimal Scheduling Strategy of Residential Station Area Considering the Potential Mining of Energy Storage of Various Elastic Resources

    • In the field of energy, experts have proposed an optimized scheduling strategy for residential areas, which effectively reduces the overload operation of distribution transformers and enhances the capacity of new energy consumption.
    • Southern Power System Technology   Vol. 19, Issue 2, Pages: 102-114(2025)
    • DOI:10.13648/j.cnki.issn1674-0629.2025.02.011    

      CLC: TM73
    • Received:27 June 2023

      Published Online:24 July 2024

      Published:20 February 2025

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  • ZHOU Zhiheng,ZHANG Linjuan,WANG Xiaodong,et al.Optimal Scheduling Strategy of Residential Station Area Considering the Potential Mining of Energy Storage of Various Elastic Resources[J].Southern Power System Technology,2025,19(02):102-114. DOI: 10.13648/j.cnki.issn1674-0629.2025.02.011.

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