Research Article
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Year 2022, , 507 - 526, 30.09.2022
https://doi.org/10.29133/yyutbd.1114636

Abstract

References

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Determination of the Relationship between Rice Suitability Classes and Satellite Images with Different Time Series for Yeşil Küre Farm Lands

Year 2022, , 507 - 526, 30.09.2022
https://doi.org/10.29133/yyutbd.1114636

Abstract

In this study, rice land designated for agricultural land suitability indices belonging to the enterprise Yeşil Küre Farm Land with different time series Sentinel-2A satellite images calculated utilizing spectral vegetation index, which are Normalized Difference Vegetation Index and Red Edge Optimized Soil Adjusted Vegetation Index values by statistical comparison of the relationship between rice for monitoring and estimation of potential productivity is presented a different perspective. Firstly, according to the rice suitability assessment for the study area, the area of 5488.9 ha was determined to be suitable for rice cultivation at the S1 and S2 levels, whereas the area of 588.9 ha was determined to be unsuitable. In this study, it was determined that the most successful results for each land conformity class were obtained using the NDVI. In particular, it was determined that August received the highest r2 value (NDVI; 0.8580 and RE-OSAVI; 0.8465) in both vegetation index models at the S1 level, and on the other hand, a higher r2 value was obtained with NDVI.

References

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  • Askari, M.S., Cui, J., O’Rourke, S.M., & Holden, N.M. (2015). Evaluation of soil structural quality using VIS–NIR spectra. Soil and Tillage Research, 146, 108–117.
  • Bagheri, N., Ahmadi, H., Alavipanah, S., & Omid, M. (2012). Soil-line vegetation indices for corn nitrogen content prediction. International Agrophysics, 26(2), 103–108.
  • Barnes, E., Clarke, T., Richards, S., Colaizzi, P., Haberland, J., Kostrzewski, M., Waller, P., Choi, C., Riley, E., Thompson, T., Lascano, R. J., Li, H., & Moran, M.S. (2000). Coincident detection of crop water stress, nitrogen status and canopy density using ground based multispectral data. In Proceedings of the Fifth International Conference on Precision Agriculture, Bloomington, MN, USA, 2000 (Vol. 1619).
  • Blum, W.E.H. (2006). Soil Resources- The basis of human society and the environment. Bodenkultur 57, 197–202.
  • Damian, J.M., Pias, O.H.D.C., Cherubin, M.R., Fonseca, A.Z.D., Fornari, E.Z., Santi, A.L., (2020). Applying the NDVI from satellite images in delimiting management zones for annual crops. Sci. Agric. 77 (1).
  • Dedeoğlu, M., Başayiğit, L., Yüksel, M., & Kaya, F. (2020). Assessment of the vegetation indices on Sentinel-2A images for predicting the soil productivity potential in Bursa, Turkey. Environmental Monitoring and Assessment, 192(1), 1-16.
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  • Lal R. (2009). Soils and food sufficiency. A review, Agron. Sustain. Dev. 29, 113–133.
  • Larson, W. E., & Pierce, F. J. (1991). Conservation and enhancement of soil quality. In Evaluation for sustainable land management in the developing world: proceedings of the International Workshop on Evaluation for Sustainable Land Management in the Developing World, Chiang Rai, Thailand, 15-21 September 1991. [Bangkok, Thailand: International Board for Soil Research and Management, 1991].
  • Li, Z., Jin, X., Wang, J., Yang, G., Nie, C., Xu, X., & Feng, H. (2015). Estimating winter wheat (Triticum aestivum) LAI and leaf chlorophyll content from canopy reflectance data by integrating agronomic prior knowledge with the PROSAIL model. International Journal of Remote Sensing, 36(10), 2634–2653.
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  • Mongkolsawat, C.P., Thirangoon, & Kuptawutinan, P. (2002). A physical evaluation of landsuitability for rice: A methodological study using GIS. Computer Centre, Khon Kaen University, Thailand. http://www. gisdevelopment.net.
  • Moran, M.S., Rahman, A.F., Washburne, J.C., Goodrich, D.C., Weltz, M.A., & Kustas, W.P. (1996). Combining the Penman-Monteith equation with measurements of surface temperature and reflectance to estimate evaporation rates of semiarid grassland. Agricultural and Forest Meteorology, 80(2), 87–109.
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There are 72 citations in total.

Details

Primary Language English
Subjects Soil Sciences and Ecology
Journal Section Articles
Authors

Orhan Dengiz 0000-0002-0458-6016

Mert Dedeoğlu 0000-0001-8611-3724

Nursaç Serda Kaya 0000-0001-9814-5651

Publication Date September 30, 2022
Acceptance Date June 20, 2022
Published in Issue Year 2022

Cite

APA Dengiz, O., Dedeoğlu, M., & Kaya, N. S. (2022). Determination of the Relationship between Rice Suitability Classes and Satellite Images with Different Time Series for Yeşil Küre Farm Lands. Yuzuncu Yıl University Journal of Agricultural Sciences, 32(3), 507-526. https://doi.org/10.29133/yyutbd.1114636

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