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Fault recovery system for smart grid based on machine statistical learning

Author

Listed:
  • Min Zhu
  • Juncheng Peng
  • Lixing Zhou

Abstract

In order to overcome the problems of poor robustness, low-accuracy and long time-consuming when traditional system recovers power grid faults, a fault recovery system based on machine statistical learning is designed. The system framework consists of sensing layer, network layer and application layer. Through the overall framework of the system, the hardware of the system is designed, including data acquisition device block, transmission device, analysis module and display device. In the software part, fault acquisition subroutine, fault location subroutine and fault type identification subroutine are designed to obtain accurate fault data. Finally, machine statistical learning method is used to complete the design of fault recovery subroutine of smart grid, recover the obtained fault data and realise the design of fault recovery system of smart grid. The results show that the robustness, accuracy and time-consumption of the system are improved, and the problems existing in the traditional system are solved.

Suggested Citation

  • Min Zhu & Juncheng Peng & Lixing Zhou, 2021. "Fault recovery system for smart grid based on machine statistical learning," International Journal of Critical Infrastructures, Inderscience Enterprises Ltd, vol. 17(3), pages 271-287.
  • Handle: RePEc:ids:ijcist:v:17:y:2021:i:3:p:271-287
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