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논문검색

데이터 처리 기술과 머신러닝 기반 발전량 예측 시스템 성능 향상 분석

원문정보

Analysis of Generation Forecasting System Performance Improvement Using Data Quality Control Techniques and Machine Learning Models

김은지, 박성식, 오승진, 전용한

피인용수 : 0(자료제공 : 네이버학술정보)

초록

영어

As renewable energy penetration continues to increase, the output variability and forecasting uncertainty of photovoltaic generation have emerged as major operational risks in power systems. This study establishes a sensor-based data quality control procedure to ensure the reliability of meteorological data collected at a PV plant. For temperature, humidity, and wind speed, a four stage QC process physical range check, persistence check, step change check, and median filtering was applied. Solar radiation, which exhibits strong temporal and distributional characteristics, was processed using a three-stage QC procedure consisting of physical range, step change, and frequency distribution checks. Using the quality-controlled meteorological data, PV generation forecasting was performed with SVM and XGBoost models. As a result, the MAPE values improved to 6.32% for SVM and 6.08% for XGBoost after QC application. The findings confirm that meteorological data quality control significantly enhances PV forecasting accuracy and can support future strategies for distributed energy resource management, curtailment mitigation, and power system risk reduction.

목차

Abstract
1. 서론
2. 연구방법
2.1 데이터 수집
2.2 기상데이터 분석
2.3 기상데이터의 데이터 QC 알고리즘 개발
3. 해석 결과 및 고찰
3.1 데이터 QC 적용 전 발전량 예측 평가
3.2 데이터 QC 적용 기상 예측 평가
3.3 데이터 QC 적용 태양광 발전량 예측
4. 결론
5. References

저자정보

  • 김은지 Eun-Ji Kim. 한국생산기술연구원 제주기술실용화본부
  • 박성식 Sung-Seek Park. 탄소중립기술원
  • 오승진 Seung Jin Oh. 한국생산기술연구원 제주기술실용화본부
  • 전용한 Yong-Han Jeon. 상지대학교 소방공학과

참고문헌

자료제공 : 네이버학술정보

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