Journal of Shandong University(Engineering Science) ›› 2025, Vol. 55 ›› Issue (5): 1-17.doi: 10.6040/j.issn.1672-3961.0.2024.115

• Electrical Engineering—Special Issue for Smart Energy •    

Review and prospect on artificial intelligence application in power system power flow calculation

LI Changgang1, LI Baoliang1, CAO Yongji2*, WANG Jiaying3   

  1. LI Changgang1, LI Baoliang1, CAO Yongji2*, WANG Jiaying3(1. Key Laboratory of Power System Intelligent Dispatch and Control of Ministry of Education(Shandong University), Jinan 250061, Shandong, China;
    2. Academy of Intelligent Innovation, Shandong University, Jinan 250101, Shandong, China;
    3. State Grid Zhejiang Marketing Service Center, Hangzhou 311121, Zhejiang, China
  • Published:2025-10-17

Abstract: The new-generation artificial intelligence technologies, represented by deep learning, provided new opportunities for the digital and intelligent operation of new power systems. To deepen the understanding of the application of artificial intelligence in complex power flow calculation problems, the review and prospect of research in relevant fields were presented. Based on the current development status of the new-generation artificial intelligence technologies and grounded in power flow calculation with various scenarios, the traditional methods were summarized and the research progress of artificial intelligence techniques in power flow calculation was reviewed. The urgent challenges were analyzed and future research directions were envisioned to provide references for further applications of artificial intelligence technologies in the field of power flow calculation.

Key words: power flow calculation, artificial intelligence, deep learning, digital and intelligent operation, new power systems

CLC Number: 

  • TM71
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