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Estimating Daily Pan Evaporation Data using Adaptive Neuro Fuzzy Inference System: Case Study within Van Local Station-Turkey

Year 2021, , 195 - 204, 01.03.2021
https://doi.org/10.2339/politeknik.635466

Abstract

The aim of this study is to model the evaporation data, which is one of the important parameters of the hydrological cycle, by using the Adaptive Neuro Fuzzy Inference System (ANFIS). Four different models were designed starting from one input up to four inputs used average daily temperature (ºC), average daily relative humidity (%), average daily current pressure (hPa) and average daily wind speed (m/s) as inputs parameters. Total daily pan evaporation (mm) was selected as output parameter. The normalized daily data of the Van Local Station between 2013 - 2017 was used for training of the model. Data for 2018 were used for testing purposes. Also, two stations in different cities were selected for comparison in order to determine whether the models prepared using data from Van Local Station can be used in other stations. For this purpose, a station from Konya province with climatic characteristics similar to Van province and a station from Kocaeli province with different climatic characteristics were selected. In all models, similar results between Van Local Station and the station selected from Konya were observed, while the results between Van Local Station and the station selected from Kocaeli were observed as relatively low compared to the previous comparison. The fourth model, which was designed using four input parameters, achieved the lowest error values at all stations and Kocaeli station got the best R2 value at this model.

References

  • Brutsaert WH., “Evaporation into the Atmosphere” D. Reidel Publishing Company, Holland, (1982).
  • McMahon TA., Peel MC., Lowe L., Srikanthan R., McVicar T.R., “Estimating actual, potential, reference crop and pan evaporation using standard meteorological data: a pragmatic synthesis”. Hydrology Earth System Science, 17: 1331–1363, (2013).
  • Monteith JL., “Weather and water in tthe sudano-sahelian zone. soil water balance in the sudano-sahelian zone, proceedings of the niamey workshop”. International Association of Hydrological Sciences Publication, 199: 11–28, (1991).
  • Irmak S., Haman D., Jones JW., “Evaluation of class ‘A’ pan coefficients for estimating reference evapotranspiration in a humid location”. Journal of Irrigation and Drainage Engineering, 128(3): 153–159, (2002).
  • Stephens JC., Stewart, EH., “A Comparison of Procedures For Computing Evaporation And Evapotranspiration”, International Association Of Scientific Hydrology. International Union of Geodynamics and Geophysics”, 62. Ed, Berkeley, CA, (1963).
  • Burman RD., “Intercontinental comparison of evaporation estimates”. Journal of Irrigation and Drainage Engineering, 102: 109–118, (1976).
  • Clayton LH., “Prediction of class A pan evaporation in south Idaho”. Journal of Irrigation and Drainage Engineering, 115(2): 166–171, (1989).
  • Reis RJ., Dias NL., “Multi-season lake evaporation: energy-budget estimates and CRLE model assessment with limited meteorological observations”. Journal of Hydrology, 208: 135–147, (1998).
  • Sudheer KP., Gosain AK., Rangan DM, Saheb SM. “Modelling evaporation using an artificial neural network algorithm”. Hydrological Processes, 16: 3189–3202, (2002).
  • Gavin H., Agnew CA., “Modelling actual, reference and equilibrium evaporation from a temperate wet grassland”. Hydrological Processes, 18: 229–246, (2004).
  • Keskin ME., Terzi O., “Artificial neural network models of daily pan evaporation”. Journal of Hydrology Engineering, 11(1): 65–70, (2006).
  • Kisi O., “Daily pan evaporation modelling using multi-layer perceptrons and radial basis neural networks”. Hydrological Processes, 23: 213–223, (2009).
  • Bian Z., Gu Y., Zhao J., Pan Y., Li Y., Zeng C., Wang L., “Simulation of evapotranspiration based on leaf area index, precipitation and pan evaporation: a case study of Poyang lake watershed, China”. Ecohydrology and Hydrobiology, 19: 83–92, (2019).
  • Kisi O., Tombul M., “Modeling monthly pan evaporations using fuzzy genetic approach”. Journal of Hydrology, 477: 203–212, (2013).
  • Ozturk M., Yilmaz MU., Ozgur E., Akatas N., “Using fuzzy logic approach on evaporation modeling”, International Journal of Natural and Engineering Sciences, 11(3): 04-06, (2017).
  • Kisi O., “Daily pan evaporation modeling using a neuro-fuzzy computing technique”. Journal of Hydrology, 329: 636–646, (2006).
  • Kermani MZ., Kisi O., Piri J., “Meymand AM. “Assessment of artificial intelligence–based models and metaheuristic algorithms in modeling evaporation”. Journal of Hydrological Engineering, 24(10): 200-213, (2019).
  • Maroufpoor E., Sanikhani H., Emamgholizadeh S., Kişi Ö., “Estimation of wind drift and evaporation losses from sprinkler irrigation systems by different data-driven methods”, Irrigation and Drainage, 67: 222–232, (2018).
  • Jang JSR., “ANFIS: Adaptive-Network-Based Fuzzy Inference System”. IEEE Transactions on Systems Man & Cybernetics, 23: 665-685, (1993).

Estimating Daily Pan Evaporation Data using Adaptive Neuro Fuzzy Inference System: Case Study within Van Local Station-Turkey

Year 2021, , 195 - 204, 01.03.2021
https://doi.org/10.2339/politeknik.635466

Abstract

The aim of this study is to model the evaporation data, which is one of the important parameters of the hydrological cycle, by using the Adaptive Neuro Fuzzy Inference System (ANFIS). Four different models were designed starting from one input up to four inputs used average daily temperature (ºC), average daily relative humidity (%), average daily current pressure (hPa) and average daily wind speed (m/s) as inputs parameters. Total daily pan evaporation (mm) was selected as output parameter. The normalized daily data of the Van Local Station between 2013 - 2017 was used for training of the model. Data for 2018 were used for testing purposes. Also, two stations in different cities were selected for comparison in order to determine whether the models prepared using data from Van Local Station can be used in other stations. For this purpose, a station from Konya province with climatic characteristics similar to Van province and a station from Kocaeli province with different climatic characteristics were selected. In all models, similar results between Van Local Station and the station selected from Konya were observed, while the results between Van Local Station and the station selected from Kocaeli were observed as relatively low compared to the previous comparison. The fourth model, which was designed using four input parameters, achieved the lowest error values at all stations and Kocaeli station got the best R2 value at this model.

References

  • Brutsaert WH., “Evaporation into the Atmosphere” D. Reidel Publishing Company, Holland, (1982).
  • McMahon TA., Peel MC., Lowe L., Srikanthan R., McVicar T.R., “Estimating actual, potential, reference crop and pan evaporation using standard meteorological data: a pragmatic synthesis”. Hydrology Earth System Science, 17: 1331–1363, (2013).
  • Monteith JL., “Weather and water in tthe sudano-sahelian zone. soil water balance in the sudano-sahelian zone, proceedings of the niamey workshop”. International Association of Hydrological Sciences Publication, 199: 11–28, (1991).
  • Irmak S., Haman D., Jones JW., “Evaluation of class ‘A’ pan coefficients for estimating reference evapotranspiration in a humid location”. Journal of Irrigation and Drainage Engineering, 128(3): 153–159, (2002).
  • Stephens JC., Stewart, EH., “A Comparison of Procedures For Computing Evaporation And Evapotranspiration”, International Association Of Scientific Hydrology. International Union of Geodynamics and Geophysics”, 62. Ed, Berkeley, CA, (1963).
  • Burman RD., “Intercontinental comparison of evaporation estimates”. Journal of Irrigation and Drainage Engineering, 102: 109–118, (1976).
  • Clayton LH., “Prediction of class A pan evaporation in south Idaho”. Journal of Irrigation and Drainage Engineering, 115(2): 166–171, (1989).
  • Reis RJ., Dias NL., “Multi-season lake evaporation: energy-budget estimates and CRLE model assessment with limited meteorological observations”. Journal of Hydrology, 208: 135–147, (1998).
  • Sudheer KP., Gosain AK., Rangan DM, Saheb SM. “Modelling evaporation using an artificial neural network algorithm”. Hydrological Processes, 16: 3189–3202, (2002).
  • Gavin H., Agnew CA., “Modelling actual, reference and equilibrium evaporation from a temperate wet grassland”. Hydrological Processes, 18: 229–246, (2004).
  • Keskin ME., Terzi O., “Artificial neural network models of daily pan evaporation”. Journal of Hydrology Engineering, 11(1): 65–70, (2006).
  • Kisi O., “Daily pan evaporation modelling using multi-layer perceptrons and radial basis neural networks”. Hydrological Processes, 23: 213–223, (2009).
  • Bian Z., Gu Y., Zhao J., Pan Y., Li Y., Zeng C., Wang L., “Simulation of evapotranspiration based on leaf area index, precipitation and pan evaporation: a case study of Poyang lake watershed, China”. Ecohydrology and Hydrobiology, 19: 83–92, (2019).
  • Kisi O., Tombul M., “Modeling monthly pan evaporations using fuzzy genetic approach”. Journal of Hydrology, 477: 203–212, (2013).
  • Ozturk M., Yilmaz MU., Ozgur E., Akatas N., “Using fuzzy logic approach on evaporation modeling”, International Journal of Natural and Engineering Sciences, 11(3): 04-06, (2017).
  • Kisi O., “Daily pan evaporation modeling using a neuro-fuzzy computing technique”. Journal of Hydrology, 329: 636–646, (2006).
  • Kermani MZ., Kisi O., Piri J., “Meymand AM. “Assessment of artificial intelligence–based models and metaheuristic algorithms in modeling evaporation”. Journal of Hydrological Engineering, 24(10): 200-213, (2019).
  • Maroufpoor E., Sanikhani H., Emamgholizadeh S., Kişi Ö., “Estimation of wind drift and evaporation losses from sprinkler irrigation systems by different data-driven methods”, Irrigation and Drainage, 67: 222–232, (2018).
  • Jang JSR., “ANFIS: Adaptive-Network-Based Fuzzy Inference System”. IEEE Transactions on Systems Man & Cybernetics, 23: 665-685, (1993).
There are 19 citations in total.

Details

Primary Language English
Subjects Engineering
Journal Section Research Article
Authors

Nadire Üçler 0000-0001-6407-121X

Fatih Kutlu 0000-0002-1731-9558

Publication Date March 1, 2021
Submission Date October 21, 2019
Published in Issue Year 2021

Cite

APA Üçler, N., & Kutlu, F. (2021). Estimating Daily Pan Evaporation Data using Adaptive Neuro Fuzzy Inference System: Case Study within Van Local Station-Turkey. Politeknik Dergisi, 24(1), 195-204. https://doi.org/10.2339/politeknik.635466
AMA Üçler N, Kutlu F. Estimating Daily Pan Evaporation Data using Adaptive Neuro Fuzzy Inference System: Case Study within Van Local Station-Turkey. Politeknik Dergisi. March 2021;24(1):195-204. doi:10.2339/politeknik.635466
Chicago Üçler, Nadire, and Fatih Kutlu. “Estimating Daily Pan Evaporation Data Using Adaptive Neuro Fuzzy Inference System: Case Study Within Van Local Station-Turkey”. Politeknik Dergisi 24, no. 1 (March 2021): 195-204. https://doi.org/10.2339/politeknik.635466.
EndNote Üçler N, Kutlu F (March 1, 2021) Estimating Daily Pan Evaporation Data using Adaptive Neuro Fuzzy Inference System: Case Study within Van Local Station-Turkey. Politeknik Dergisi 24 1 195–204.
IEEE N. Üçler and F. Kutlu, “Estimating Daily Pan Evaporation Data using Adaptive Neuro Fuzzy Inference System: Case Study within Van Local Station-Turkey”, Politeknik Dergisi, vol. 24, no. 1, pp. 195–204, 2021, doi: 10.2339/politeknik.635466.
ISNAD Üçler, Nadire - Kutlu, Fatih. “Estimating Daily Pan Evaporation Data Using Adaptive Neuro Fuzzy Inference System: Case Study Within Van Local Station-Turkey”. Politeknik Dergisi 24/1 (March 2021), 195-204. https://doi.org/10.2339/politeknik.635466.
JAMA Üçler N, Kutlu F. Estimating Daily Pan Evaporation Data using Adaptive Neuro Fuzzy Inference System: Case Study within Van Local Station-Turkey. Politeknik Dergisi. 2021;24:195–204.
MLA Üçler, Nadire and Fatih Kutlu. “Estimating Daily Pan Evaporation Data Using Adaptive Neuro Fuzzy Inference System: Case Study Within Van Local Station-Turkey”. Politeknik Dergisi, vol. 24, no. 1, 2021, pp. 195-04, doi:10.2339/politeknik.635466.
Vancouver Üçler N, Kutlu F. Estimating Daily Pan Evaporation Data using Adaptive Neuro Fuzzy Inference System: Case Study within Van Local Station-Turkey. Politeknik Dergisi. 2021;24(1):195-204.
 
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