DOI QR코드

DOI QR Code

Analysis of wind farm power prediction sensitivity for wind speed error using LSTM deep learning model

LSTM 딥러닝 신경망 모델을 이용한 풍력발전단지 풍속 오차에 따른 출력 예측 민감도 분석

  • Minsang Kang ;
  • Eunkuk Son ;
  • Jinjae Lee ;
  • Seungjin Kang
  • 강민상 (한국에너지기술연구원 풍력연구단) ;
  • 손은국 (한국에너지기술연구원 풍력연구단) ;
  • 이진재 (한국에너지기술연구원 풍력연구단) ;
  • 강승진 (한국에너지기술연구원 풍력연구단)
  • Received : 2024.02.27
  • Accepted : 2024.04.29
  • Published : 2024.06.30

Abstract

This research is a comprehensive analysis of wind power prediction sensitivity using a Long Short-Term Memory (LSTM) deep learning neural network model, accounting for the inherent uncertainties in wind speed estimation. Utilizing a year's worth of operational data from an operational wind farm, the study forecasts the power output of both individual wind turbines and the farm collectively. Predictions were made daily at intervals of 10 minutes and 1 hour over a span of three months. The model's forecast accuracy was evaluated by comparing the root mean square error (RMSE), normalized RMSE (NRMSE), and correlation coefficients with actual power output data. Moreover, the research investigated how inaccuracies in wind speed inputs affect the power prediction sensitivity of the model. By simulating wind speed errors within a normal distribution range of 1% to 15%, the study analyzed their influence on the accuracy of power predictions. This investigation provided insights into the required wind speed prediction error rate to achieve an 8% power prediction error threshold, meeting the incentive standards for forecasting systems in renewable energy generation.

Keywords

Acknowledgement

본 연구는 산업통상자원부의 재원으로 한국에너지기술평가원(KETEP)의 지원을 받아 수행한 연구결과 (풍력발전제어시스템 국산화 기술개발, 과제번호 : 20213030020230 및 국제인증제도 대응 풍력 성능평가 요소 기술 개발 및 인증 체계 구축, 과제번호 : 2020020010) 입니다.

References

  1. Status of domestic wind turbine installation, Korea wind energy industry association, 2023
  2. The 10th Basic Electricity Supply and Demand Plan, Ministry of trade, industry and energy, 2023
  3. Electricity market operation rules, Korea power exchange, 2020
  4. Kanna B.,S.N. Singh, 2012, "AWNN-Assisted Wind PowerForecasting Using Feed-Forward Neural Network," IEEETrans. Sustain. Energy
  5. Kim.J.J.,Baek.J.H.,Park.S.H.,Hur.J., 2021, "A Study ona Short-term Wind Power Output Forecasting using LSTM Method", The korea institute of electrical engineers, 157-158
  6. A Study on Wind Power Forecasting Using LSTM Method, Heungseok Lee.Kyuhan Kim.Heemyung Jeong.Hwaseok Lee.Hyungsu Kim.June Ho Park
  7. A Study on Prediction of Wind Power Based on Deep-Learning Using Weather Data, Eun-Ji Kim.Taeck-Kie Lee.Kyu-Ho Kim
  8. http://en.wikipedia.org/wiki/Zenodo
  9. Http://www.blue-energyco.com/our-projects kelmarsh/