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Application of Artificial Intelligence for Modeling of Power Systems

Research Project

Project/Area Number 09650328
Research Category

Grant-in-Aid for Scientific Research (C)

Allocation TypeSingle-year Grants
Section一般
Research Field 電力工学・電気機器工学
Research InstitutionKumamoto University

Principal Investigator

HIYAMA Takashi  Faculty of Engineering, Professor, 工学部, 教授 (90040419)

Co-Investigator(Kenkyū-buntansha) KITA Toshihiro  Faculty of Engineering, Instructor, 工学部, 助手 (20284739)
Project Period (FY) 1997 – 1998
Project Status Completed (Fiscal Year 1998)
Budget Amount *help
¥2,800,000 (Direct Cost: ¥2,800,000)
Fiscal Year 1998: ¥900,000 (Direct Cost: ¥900,000)
Fiscal Year 1997: ¥1,900,000 (Direct Cost: ¥1,900,000)
KeywordsNeural Networks / Nonlinear Systems / Governor-Turbine System / Stability Evaluation / Nose Curve / Dynamic Load Modeling / ニュートラルネットワーク / 安定度評価 / 負荷モデル
Research Abstract

In this project, an artificial intelligence, especially artificial neural network, based new method has been proposed for the modeling of electric power systems. Study systems are modeled by using artificial neural networks based on the
measured real data. The proposed artificial neural networks are multi-layered ones with additional feedback loops from the output layer to the input layer with time delay. By using the proposed artificial neural networks, non-linear systems can be modeled quite accurately with relatively lower order non-linear difference equations. The proposed modeling method has been applied to the modeling of the load dynamics, the governor-turbine system foe a LNG thermal unit, and the dynamics between the real power and the system voltage on 500kV transmission lines. The accuracy of the proposed models have been demonstrated through comparison studies using actual measured data on the study systems. The comparison studies have also been performed between the proposed models and the conventional linear models. The proposed artificial neural network based models give quite accurate responses for given disturbances. In addition, the proposed models are robust ones, therefore, the models are available to some extent for the different situations from ones when the actual data were measured. By combining the proposed models with conventional models, more accurate stability analysis will be performed.

Report

(3 results)
  • 1998 Annual Research Report   Final Research Report Summary
  • 1997 Annual Research Report
  • Research Products

    (10 results)

All Other

All Publications (10 results)

  • [Publications] T.Hiyama, et al.: "Artificial Neural Network Based Dynamic Load Modeling" IEEE Trans. on Power Systems. 12・4. 1576-1583 (1997)

    • Description
      「研究成果報告書概要(和文)」より
    • Related Report
      1998 Final Research Report Summary
  • [Publications] T.Hiyama, et al.: "Artificial Neural Network Based Modeling of Governor-Turbine System" Proceedings of IEEE Power Engineering Society 1999 Winter Meeting. 1. 129-133 (1999)

    • Description
      「研究成果報告書概要(和文)」より
    • Related Report
      1998 Final Research Report Summary
  • [Publications] T.Hiyama, et al.: "Artificial Neural Network Based Modeling of PV Dynamics on 500kv Transmission Line" Proceedings of IPEC '99. 発表予定. (1999)

    • Description
      「研究成果報告書概要(和文)」より
    • Related Report
      1998 Final Research Report Summary
  • [Publications] T.Hiyama, et.al.: "Artificial Neural Network Based Dynamic Load Modeling" IEEE Trans.on Power Systems. Vol.12, No.4. 1576-1583 (1997)

    • Description
      「研究成果報告書概要(欧文)」より
    • Related Report
      1998 Final Research Report Summary
  • [Publications] T.Hiyama, et.al.: "Artificial Neural Network Based Modeling of Governor-Turbine System" Proceedings of IEEE Power Engineering Society 1999 Winter Meeting. Vol.1. 129-133 (1999)

    • Description
      「研究成果報告書概要(欧文)」より
    • Related Report
      1998 Final Research Report Summary
  • [Publications] T.Hiyama, et.al.: "Artificial Neural Network Based Modeling of PV Dynamics on 500kV Transmission Line" Proceedings of IPEC'99 (International Power Engineering Conference). (to be published). (1999)

    • Description
      「研究成果報告書概要(欧文)」より
    • Related Report
      1998 Final Research Report Summary
  • [Publications] T.Hiyama,et.al: "Artificial Neural Network Based Dynamic Loud Modeling" IEEE Trans on Power Systems. 12・4. 1576-1583 (1997)

    • Related Report
      1998 Annual Research Report
  • [Publications] T.Hiyama,et.al: "Artificial Neural Network Based Modeling of Governor-Turbine System" Proceedings of IEEE Power Engineering Society 1999 Winter Meeting. 1. 129-133 (1999)

    • Related Report
      1998 Annual Research Report
  • [Publications] T.Hiyama,et.al: "Artificial Neural Network Based Modeling of PV Dynamics on 500kV Transmission Line" Proceedings of IPEC'99. =C37発表予定. (1999)

    • Related Report
      1998 Annual Research Report
  • [Publications] T.Hiyama, et al.: "Artificial Neural Network Based Dynamic Load Modeling" IEEE Trans.on Power Systems. 12・4. 1576-1997 (1997)

    • Related Report
      1997 Annual Research Report

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Published: 1997-04-01   Modified: 2016-04-21  

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