DOI QR코드

DOI QR Code

Estimation of Surface Runoff from Paddy Plots using an Artificial Neural Network

인공신경망 기법을 이용한 논에서의 지표 유출량 산정

  • 안지현 (서울대학교 농업생명과학대학 생태조경.지역시스템공학부) ;
  • 강문성 (서울대학교 농업생명과학대학 조경.지역시스템공학부, 농업생명과학연구원) ;
  • 송인홍 (서울대학교 농업생명과학연구원) ;
  • 이경도 (농촌진흥청 국립식량과학원) ;
  • 송정헌 (서울대학교 농업생명과학대학 생태조경.지역시스템공학부) ;
  • 장정렬 (한국농어촌공사 농어촌연구원 새만금연구부)
  • Received : 2011.12.14
  • Accepted : 2012.06.13
  • Published : 2012.07.31

Abstract

The objective of this study was to estimate surface runoff from rice paddy plots using an artificial neural network (ANN). A field experiment with three treatment levels was conducted in the NICS saemangum experimental field located in Iksan, Korea. The ANN model with the optimal network architectures, named Paddy1901 with 19 input nodes, 1 hidden layer with 16 neurons nodes, and 1 output node, was adopted to predict surface runoff from the plots. The model consisted of 7 parameters of precipitation, irrigation rate, ponding depth, average temperature, relative humidity, wind speed, and solar radiation on the daily basis. Daily runoff, as the target simulation value, was computed using a water balance equation. The field data collected in 2011 were used for training and validation of the model. The model was trained based on the error back propagation algorithm with sigmoid activation function. Simulation results for the independent training and testing data series showed that the model can perform well in simulating surface runoff from the study plots. The developed model has a main advantage that there is no requirement for any prior assumptions regarding the processes involved. ANN model thus can be a good tool to predict surface runoff from rice paddy fields.

Keywords

References

  1. Choi, J. K., and M. S. Kang, 2000. (Theory of) Neural network and application to water resources. Jounal of Korean National Committee on Irrigation and Drainage 7(2): 248-258 (in Korean).
  2. Huynh, N. P. and S. Sureerattanan, 2000. Neural networks for filtering and forecasting of daily and monthly streamflows. Water Resources Publications, LLC, WEESHE, Hydrologic Modeling, pp. 203-218.
  3. Kang, M. S., and S. W. Park, 2001. Forecasting long-term streamflow from a small watershed using artificial neural network. Journal of the Korean Society of Agricultural Engineers 43(2): 69-77 (in Korean).
  4. Kang, M. S., 2002. Development of total maximum daily loads simulation system using artificial neural networks for satellite data analysis and nonpoint source pollution models. Ph.D. Dissertation, Seoul National University (in Korean).
  5. Kang, M. S., and S. W. Park, 2003. Short-term flood forecasting using artificial neural networks. Journal of the Korean Society of Agricultural Engineers 45(2): 45-57 (in Korean).
  6. Kang, M. S., M. G. Kang, S. W. Park, J. J. Lee, and K. H. Yoo, 2006. Application of grey model and artificial neural networks to flood forecasting. Journal of American Water Resources Association (JAWRA) 42(2): 473-486. https://doi.org/10.1111/j.1752-1688.2006.tb03851.x
  7. Kang, M. S., J. P. Cho, J. A. Chun, and S. W. Park, 2009. Assessment of cell based pollutant loadings in an intensive agricultural watershed. Journal of the Korean Society of Agricultural Engineers 51(5): 87-94 (in Korean). https://doi.org/10.5389/KSAE.2009.51.5.087
  8. Kang, M. S.. 2010. Development of improved farming methods to reduce agricultural non-point source pollution. Korea Rural Community Corporation Rural Research Institute (in Korea).
  9. Kim, S. J., S. J. Kim, C. G. Yoon, H. J. Kwon, and G. A. Park, 2003. Development and application of paddy storage estimation model during storm periods. Journal of Korea Water Resources Association 36(6): 901-910 (in Korean). https://doi.org/10.3741/JKWRA.2003.36.6.901
  10. Kim, T. S. K. H. Han, and J. H. Heo, 2008. Calibration of real-time rainfall data using artificial neural network. Journal of Korea Water Resources Association 41(10): 1059-1065 (in Korean). https://doi.org/10.3741/JKWRA.2008.41.10.1059
  11. Lee, E. J., M. S. Kang, J. A. Park, J. Y Choi, and S. W. Park, 2010. Estimation of future reference corp evapotranspiration using artificial neural networks. Journal of the Korean Society of Agricultural Engineers 52(5): 1-9 (in Korean). https://doi.org/10.5389/KSAE.2010.52.5.001
  12. Nash, J. E. and J. V. Sutcliffe, 1970. River flow forecasting through conceptual models part I-A discussion of principles. Journal of Hydrology 10: 282-290. https://doi.org/10.1016/0022-1694(70)90255-6
  13. Odhiambo, L. O., R. E. Yoder, D. C. Yoder, and J. W. Hines, 2001. Optimization of fuzzy evapotranspiration model through neural training with input-output examples. Trans. of ASAE 44: 1625-1633.
  14. Oh, J. W., J. H. Park, and Y. K. Kim, 2008. Missing hydrological data estimation using neural network and real time data reconciliation. Journal of Korea Water Resources Association 41(10): 1059-1065 (in Korean). https://doi.org/10.3741/JKWRA.2008.41.10.1059
  15. Sajikumar, N. and B. S. Thandaveswara, 1999. A nonlinear rainfall-runoff model using an artificial neural network. Journal of Hydrology 216: 32-55. https://doi.org/10.1016/S0022-1694(98)00273-X
  16. Sudheer, K. P., A. K. Gosain, and K. S. Ramasastri, 2003. Estimating actual evapotranspiration from limited climatic data using neural computing technique. Journal of Irrigation and Drainage Engineering 129(3): 214-221. https://doi.org/10.1061/(ASCE)0733-9437(2003)129:3(214)
  17. Zanetti, S. S., E. F. Sousa, V. P. S. Oliveira, F. T. Almeida, and S. Bernardo, 2007. Estimation evapotranspiration using neural network and minimum climatological data. Journal of Irrigation and Drainage Engineering 133(2): 83-89. https://doi.org/10.1061/(ASCE)0733-9437(2007)133:2(83)