DOI QR코드

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오차항과 러닝 기법을 활용한 예측진단 시스템 개선 방안 연구

A Study on the Prediction Diagnosis System Improvement by Error Terms and Learning Methodologies Application

  • 김명준 (한남대학교 비즈니스통계학과) ;
  • 박영호 (한남대학교 비즈니스통계학과) ;
  • 김태규 (한남대학교 비즈니스통계학과) ;
  • 정재석 (한국중부발전(주) 기술연구센터)
  • Kim, Myung Joon (Department of Business Statistics, Hannam University) ;
  • Park, Youngho (Department of Business Statistics, Hannam University) ;
  • Kim, Tai Kyoo (Department of Business Statistics, Hannam University) ;
  • Jung, Jae-Seok (Technology and Research Center, Korea Midland Power Co.)
  • 투고 : 2019.11.03
  • 심사 : 2019.11.26
  • 발행 : 2019.12.31

초록

Purpose: The purpose of this study is to apply the machine and deep learning methodology on error terms which are continuously auto-generated on the sensors with specific time period and prove the improvement effects of power generator prediction diagnosis system by comparing detection ability. Methods: The SVM(Support Vector Machine) and MLP(Multi Layer Perception) learning procedures were applied for predicting the target values and sequentially producing the error terms for confirming the detection improvement effects of suggested application. For checking the effectiveness of suggested procedures, several detection methodologies such as Cusum and EWMA were used for the comparison. Results: The statistical analysis result shows that without noticing the sequential trivial changes on current diagnosis system, suggested approach based on the error term diagnosis is sensing the changes in the very early stages. Conclusion: Using pattern of error terms as a diagnosis tool for the safety control process with SVM and MLP learning procedure, unusual symptoms could be detected earlier than current prediction system. By combining the suggested error term management methodology with current process seems to be meaningful for sustainable safety condition by early detecting the symptoms.

키워드

참고문헌

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