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Guideline on Security Measures and Implementation of Power System Utilizing AI Technology

인공지능을 적용한 전력 시스템을 위한 보안 가이드라인

  • Choi, Inji (KEPCO Research Institute, Korea Electric Power Corporation) ;
  • Jang, Minhae (KEPCO Research Institute, Korea Electric Power Corporation) ;
  • Choi, Moonsuk (KEPCO Research Institute, Korea Electric Power Corporation)
  • Received : 2020.04.16
  • Accepted : 2020.05.20
  • Published : 2020.12.30

Abstract

There are many attempts to apply AI technology to diagnose facilities or improve the work efficiency of the power industry. The emergence of new machine learning technologies, such as deep learning, is accelerating the digital transformation of the power sector. The problem is that traditional power systems face security risks when adopting state-of-the-art AI systems. This adoption has convergence characteristics and reveals new cybersecurity threats and vulnerabilities to the power system. This paper deals with the security measures and implementations of the power system using machine learning. Through building a commercial facility operations forecasting system using machine learning technology utilizing power big data, this paper identifies and addresses security vulnerabilities that must compensated to protect customer information and power system safety. Furthermore, it provides security guidelines by generalizing security measures to be considered when applying AI.

Keywords

References

  1. 서동준, "에너지 ICT분야 인공지능 기술 동향", 정보과학회, Vol. 37, pp. 48-58, 2019.
  2. 최인지, 장민해, 최문석, "AMI 데이터와 머신러닝을 이용한 영업예측시스템 개발", 대한전기학회 하계학술대회, 2020.
  3. Stephen McLaughlin, Patric McDaniel, Willian Aiello, "Protecting consumer privacy from electric load monitoring," Association for Computing Machinery Computer and communication security, pp. 87-98, 2011.
  4. Arijit Ukil, Soma Bandyopadhyay, Arpan Pal, "Demo Abstract: SPA: Smart Meter Privacy Analyzer," Association for Computing Machinery, pp. 192-193, 2014.
  5. "주요정보통신기반시설 기술적 취약점 분석.평가 방법", 한국인터넷진흥원, 2017.
  6. 이수연, 유지연, 임종인, "주요기반시설 서비스의 안전적 운영을 위한 보안 프레임워크 설계에 관한 연구", 한국IT서비스학회, Vol. 15, pp. 63-72, 2016. https://doi.org/10.9716/KITS.2016.15.4.063
  7. Kosuke Suzuki, Shinkichi Inagaki, Tatusya Suzuki, Hisahide Nakamura, Koichi Ito, "Non-intrusive Appliance Load Monitoring Based on Integer Programming," SICE Annual Conference, 2008.
  8. Oliver Parson, Siddhartha Ghosh, Mark Weal, Alex Rogers, "Using Hidden Markov Models for Iterative Non-intrusive Appliance Monitoring," Neural Information Processing Systems workshop on Machine Learning for Sustainability, 2011.
  9. Marisa Figueiredo, Ana de Almeida, Bernardete Riveiro, "Home electrical signal disaggregation for non-intrusive load monitoring system," Neurocomputing. Vol. 96, pp. 66-73. 2012. https://doi.org/10.1016/j.neucom.2011.10.037
  10. Alberto Prudenzi, "A neuron nets based procedure for identifying domestic appliances pattern-of-use from energy recordings at meter panel," IEEE Power Engineering Society Winter Meeting, pp. 941-946, 2002.
  11. Szegedy, Christian, Zaremba, Wojciech, Sutskever, Ilya, Bruna, Joan, Erhan, Dumitru, Goodfellow, Ian J., Fergus, Rob. "Intriguing properties of neural networks," ICLR 2014.
  12. www.owasp.org.
  13. www.letsencrypt.org.