DOI QR코드

DOI QR Code

Application of multiple linear regression and artificial neural network models to forecast long-term precipitation in the Geum River basin

다중회귀모형과 인공신경망모형을 이용한 금강권역 강수량 장기예측

  • Kim, Chul-Gyum (Department of Hydro Science and Engineering Research, Korea Institute of Civil Engineering and Building Technology) ;
  • Lee, Jeongwoo (Department of Hydro Science and Engineering Research, Korea Institute of Civil Engineering and Building Technology) ;
  • Lee, Jeong Eun (Department of Hydro Science and Engineering Research, Korea Institute of Civil Engineering and Building Technology) ;
  • Kim, Hyeonjun (Department of Hydro Science and Engineering Research, Korea Institute of Civil Engineering and Building Technology)
  • 김철겸 (한국건설기술연구원 수자원하천연구본부) ;
  • 이정우 (한국건설기술연구원 수자원하천연구본부) ;
  • 이정은 (한국건설기술연구원 수자원하천연구본부) ;
  • 김현준 (한국건설기술연구원 수자원하천연구본부)
  • Received : 2022.08.30
  • Accepted : 2022.09.14
  • Published : 2022.10.31

Abstract

In this study, monthly precipitation forecasting models that can predict up to 12 months in advance were constructed for the Geum River basin, and two statistical techniques, multiple linear regression (MLR) and artificial neural network (ANN), were applied to the model construction. As predictor candidates, a total of 47 climate indices were used, including 39 global climate patterns provided by the National Oceanic and Atmospheric Administration (NOAA) and 8 meteorological factors for the basin. Forecast models were constructed by using climate indices with high correlation by analyzing the teleconnection between the monthly precipitation and each climate index for the past 40 years based on the forecast month. In the goodness-of-fit test results for the average value of forecasts of each month for 1991 to 2021, the MLR models showed -3.3 to -0.1% for the percent bias (PBIAS), 0.45 to 0.50 for the Nash-Sutcliffe efficiency (NSE), and 0.69 to 0.70 for the Pearson correlation coefficient (r), whereas, the ANN models showed PBIAS -5.0~+0.5%, NSE 0.35~0.47, and r 0.64~0.70. The mean values predicted by the MLR models were found to be closer to the observation than the ANN models. The probability of including observations within the forecast range for each month was 57.5 to 83.6% (average 72.9%) for the MLR models, and 71.5 to 88.7% (average 81.1%) for the ANN models, indicating that the ANN models showed better results. The tercile probability by month was 25.9 to 41.9% (average 34.6%) for the MLR models, and 30.3 to 39.1% (average 34.7%) for the ANN models. Both models showed long-term predictability of monthly precipitation with an average of 33.3% or more in tercile probability. In conclusion, the difference in predictability between the two models was found to be relatively small. However, when judging from the hit rate for the prediction range or the tercile probability, the monthly deviation for predictability was found to be relatively small for the ANN models.

본 연구에서는 금강권역을 대상으로 최대 12개월까지 선행예측이 가능한 월 강수량 예측모형을 구축하였으며, 예측모형 구축에는 다중회귀분석과 인공신경망의 두 가지 통계적 기법을 적용하였다. 예측인자 후보로 NOAA에서 제공하는 글로벌 기후패턴 39종과 금강권역에 대한 기상인자 8종 등 총 47종의 기후지수를 활용하였다. 예측대상월을 기준으로 과거 40년간의 월 강수량과 기후지수와의 지연상관성 분석을 통해 상관도가 높은 기후지수를 예측인자로 활용하여 다중회귀모형 및 인공신경망 모형을 구축하였다. 1991~2021년에 대해 매월 예측결과의 평균값과 관측값과의 적합도를 분석한 결과, 다중회귀모형은 PBIAS -3.3~-0.1%, NSE 0.45~0.50, r 0.69~0.70으로 분석되었으며, 인공신경망모형은 PBIAS -5.0~+0.5%, NSE 0.35~0.47, r 0.64~0.70로, 다중회귀모형에 의해 도출된 예측치의 평균값이 인공신경망모형보다 관측치에 좀 더 근접한 것으로 나타났다. 각 월의 예측범위 안에 관측치가 포함될 확률을 분석한 결과에서는 다중회귀모형이 57.5~83.6%(평균 72.9%), 인공신경망모형의 경우에는 71.5~88.7%(평균 81.1%)로 인공신경망모형 결과가 우수한 것으로 나타났다. 3분위 예측확률을 비교한 결과는 다중회귀모형의 경우에는 25.9~41.9%(평균 34.6%), 인공신경망모형은 30.3~39.1%(평균 34.7%)로 비슷하며, 두 모형 모두 평균 33.3% 이상으로 월 강수량에 대한 장기예측성을 확인 할 수 있었다. 이상과 같이 두 모형의 예측성 차이는 비교적 크지 않은 것으로 나타났으나, 예측범위에 대한 적중률이나 3분위 예측확률로부터 판단할 때 예측성에 대한 월별 편차는 인공신경망모형의 결과가 상대적으로 작게 나타났다.

Keywords

Acknowledgement

본 결과물은 환경부의 재원으로 한국환경산업기술원의 가뭄대응 물관리 혁신 기술개발사업의 지원을 받아 연구되었습니다(2022003610002).

References

  1. Ahn, J.-B., and Kim, H.-J. (2005). "Correlation between large-scale circulation patterns and temperature and precipitation over Busan." Asia-Pacific Journal of Atmospheric Science, Vol. 41, No. 6, pp. 1101-1110.
  2. Ahn, S.-K., Choi, W., Shin, H., and Heo, J.-H. (2015). "Correlation analysis between climate indices and Korean precipitation and temperature using empirical model decomposition: II. Correlation analysis." Journal of Korea Water Resources Association, Vol. 49, No. 3, pp. 207-215. https://doi.org/10.3741/JKWRA.2016.49.3.207
  3. Cho, J., Jung, I.W., Kim, C.G., and Kim, T.G. (2016). "One-month lead dam inflow forecast using climate indices based on teleconnection." Journal of Korea Water Resources Association, Vol. 49, No. 5, pp. 361-372. https://doi.org/10.3741/JKWRA.2016.49.5.361
  4. Choi, J.-W., Park, K.-J., Lee, K., Kim, J.-Y., and Kim, B.-J. (2015). "Features of Korean rainfall variability by Western Pacific teleconnection pattern." Journal of Environmental Science International, Vol. 24, No. 7, pp. 893-905. https://doi.org/10.5322/JESI.2015.24.7.893
  5. Choi, K.-S., Kang, S.-D., and Kim, H.-D. (2013a). "Spatiotemporal variability of April rainfall in Korea by western Pacific teleconnection pattern." International Journal of Climatology, Vol. 33, pp. 1168-1177. https://doi.org/10.1002/joc.3502
  6. Choi, K.S., Kim, B.J., and Lee, J.H. (2013b). "Relationship between rainfall in Korea and Antarctic Oscillation in June." Journal of Korean Earth Science Society, Vol. 34, No. 2, pp. 136-147. https://doi.org/10.5467/JKESS.2013.34.2.136
  7. Choi, K.-S., Shrestha, R., Kim, B.-J., Lu, R., Kim, J.-Y., Park, K.-J., Jung, J.-H., and Nam, J.-C. (2014). "A study of teleconnection between the South Asian and East Asian monsoons: Comparison of summer monsoon precipitation of Nepal and South Korea." Journal of Environmental Science International, Vol. 23, No. 10, pp. 1719-1729. https://doi.org/10.5322/JESI.2014.23.10.1719
  8. Daejeon Regional Office of Meteorology (DROM) (2021). 2020 Daejeon/Sejong/Chungnam weather and climate report.
  9. Evans, J.D. (1996). Straightforward statistics for the Behavioral sciences. Thomson Brooks/Cole Publishing Co., CA, U.S.
  10. Ham, Y.-G., Chikamoto, Y., Kug, J.-S., Kimoto, M., and Mochizuki, T. (2017). "Tropical Atlantic-Korea teleconnection pattern during boreal summer season." Climate Dynamics, Vol. 49, pp. 2649-2664. https://doi.org/10.1007/s00382-016-3474-z
  11. Jo, S., and Ahn, J.-B. (2017). "Statistical forecast of early spring precipitation over South Korea using multiple linear regression." Journal of Climate Research, Vol. 12, No. 1, pp. 53-71. https://doi.org/10.14383/cri.2017.12.1.53
  12. Kim, C.-G., Lee, J., Lee, J.E., and Kim, H. (2021a). "Long-term forecasting reference evapotranspiration using statistically predicted temperature information." Journal of Korea Water Resources Association, Vol. 54, No. 12, pp. 1243-1254. https://doi.org/10.3741/JKWRA.2021.54.12.1243
  13. Kim, C.-G., Lee, J., Lee, J.E., Kim, N.W., and Kim, H. (2020). "Monthly precipitation forecasting in the Han River basin, South Korea, using large-scale teleconnections and multiple regression models." Water, Vol. 12, No. 6, 1590. doi: 10.3390/w12061590.
  14. Kim, C.-G., Lee, J., Lee, J.E., Kim, N.W., and Kim, H. (2021b). "Monthly temperature forecasting using large-scale climate teleconnections and multiple regression models." Journal of Korea Water Resources Association, Vol. 54, No. 9, pp. 731-745. https://doi.org/10.3741/JKWRA.2021.54.9.731
  15. Kim, J.-S., Seo, G.-S., Jang, H.-W., and Lee, J.-H. (2017). "Correlation analysis between Korean spring drought and large-scale teleconnection patterns for drought forecasting." KSCE Journal of Civil Engineering, Vol. 21, No. 1, pp. 458-466. https://doi.org/10.1007/s12205-016-0580-8
  16. Kim, J.Y., and Park, H.J. (2010). "Impacts of Northern-hemisphere teleconnection patterns on precipitation in Korea." Water for Future, KWRA, Vol. 43, No. 7, pp. 57-61.
  17. Kim, M.-K., Kim, Y.-H., and Lee, W.-S. (2007). "Seasonal prediction of Korean regional climate from preceding large-scale climate indices." International Journal of Climatology, Vol. 27, pp. 925-934. https://doi.org/10.1002/joc.1448
  18. Kim, S., Park, C.-K., and Kim, M.-K. (2005). "The regime shift of the northern Hemispheric circulation responsible for the spring drought in Korea." Asia-Pacific Journal of Atmospheric Science, Vol. 41, No. 4, pp. 571-585.
  19. Kim, Y.-H., Kim, M.-K., and Lee, W.-S. (2008). "An investigation of large-scale climate indices with the influence on temperature and precipitation variation in Korea." Korean Meteorological Society, Atmosphere, Vol. 18, No. 2, pp. 83-95.
  20. Lee, J., Kim, C.-G., Lee, J.E., Kim, N.W., and Kim, H. (2020). "Medium-term rainfall forecasts using artificial neural networks with monte-carlo cross-validation and aggregation for the Han River basin, Korea." Water, Vol. 12, No. 6, 1743. doi:10.3390/w12061743.
  21. Lee, K.-J., and Kwon, M. (2015). "A prediction of Northeast Asian summer precipitation using teleconnection." Korean Meteorological Association, Atmosphere, Vol. 25, No. 1, pp. 179-183. https://doi.org/10.14191/ATMOS.2015.25.1.179
  22. Lee, S., and Choi, Y. (2013). "Study on the relationship between Arctic oscillation and temperature, precipitation and extreme climate events during spring over the Republic of Korea." The Geographical Journal of Korea, Vol. 47, No. 4, pp. 453-464.
  23. Lee, S.-J., and Chang, Y.-S. (2021). "Correlation analysis between the variation of net surface heat flux around the East Asian seas and the air temperature and precipitation over the Korean Peninsula." Ocean and Polar Research, Vol. 43, No. 1, pp. 15-30. https://doi.org/10.4217/OPR.2021.43.1.015
  24. Li, J., and Zeng, Q. (2002). "A unified monsoon index." Geophysical Research Letters, Vol. 29, No. 8, pp. 115-1-115-4.
  25. Moriasi, D.N., Arnold, J.G., Liew, M.W., Bingner, R.L., Harmel, R.D., and Veith, T.L. (2007). "Model evaluation guidelines for systematic quantification of accuracy in watershed simulations." Transactions of the ASABE, Vol. 50, No. 3, pp. 885-900. https://doi.org/10.13031/2013.23153
  26. Park, M.-G., Kang, S.-U., Lee, J.-J., Lee, H.-H., and Kim, H.-J. (2018). "Seasonal precipitation forecast using big data." Water for Future, KWRA, Vol. 51, No. 11, pp. 6-12.