Otwarty dostęp

Assessment of a Yield Prediction Method Based on Time Series Landsat 8 Data


Zacytuj

Atzberger, C. (2013). Advances in remote sensing of agriculture: context description, existing operational monitoring systems and major information needs. Remote Sens., 5, 949–981.10.3390/rs5020949 Search in Google Scholar

Bolton, D. K., Friedl, M. A. (2013). Forecasting crop yield using remotely sensed vegetation indices and crop phenologymetrics. Agric. For. Meteorol., 173, 74–84.10.1016/j.agrformet.2013.01.007 Search in Google Scholar

Clement, S., Lassman, F., Barley, E., Evans-Lacko, S., Williams, P., Yamaguchi, S., Slade, M., Rüsch, N., Thornicroft, G. (2013). Mass media interventions for reducing mental health-related stigma (Review). The Cochrane Library, (7). Search in Google Scholar

De la Casa, A., Ovando, G., Bressanini, L., Martínez, J., Díaz, G., Miranda, C. (2018). Soybean crop coverage estimation from NDVI images with different spatial resolution evaluate yield variability in a plot. ISPRS J. Photogramm. Remote Sens., 146, 531–547.10.1016/j.isprsjprs.2018.10.018 Search in Google Scholar

Dempewolf, J., Adusei, B., Becker-Reshef, I., Hansen, M., Potapov, P., Khan, A., Barker, B. (2014). WheatyieldforecastingforPunjabProvincefromvegetation index time series and historic crop statistics. Remote Sens., 6, 9653–9675. FAOSTAT (2018). website. http://www.fao.org/faostat/en/#data/QC/Query date: 2020. 05. Search in Google Scholar

Ferencz, Cs., Bognár, P., Lichtenberge, J., Hamar, D., Tarcsai, GY., Timár, G., Molnár, G., Pásztor, Sz., Steinbach, P., Székely, B., Ferencz, O. E., Ferencz-Árkos, I. (2004). Crop yield estimation by satellite remote sensing. Int. J. Remote Sens., 25(20), 4113–4149.10.1080/01431160410001698870 Search in Google Scholar

Labus, M. P., Nielsen, G. A., Lawrence, R. L., Engel, R., Long, D. S. (2002). Wheat yield estimates using multi-temporal NDVI satellite imagery. International Journal of Remote sensing, 23(20), 4169-4180.10.1080/01431160110107653 Search in Google Scholar

Marti, J., Bort, J., Slafer, G. A., Araus, J. L. (2007). Can wheat yield be assessed by early measurements of normalized difference vegetation index? Annals of Applied Biology, 150, 253–257.10.1111/j.1744-7348.2007.00126.x Search in Google Scholar

Mkhabela, M. S., Bullock, P., Raj, S., Wang, S., Yang, Y. (2011). Crop yield forecasting on the Canadian Prairies using MODIS NDVI data. Agric. For. Meteorol., 151, 385–393.10.1016/j.agrformet.2010.11.012 Search in Google Scholar

Nagy, A., Fehér, J., Tamás, J. (2018).Wheat and maize yield forecasting for the Tisza river catchment using MODIS NDVI time series and reported crop statistics. Computers and Electronics in Agriculture, 151, 41–49.10.1016/j.compag.2018.05.035 Search in Google Scholar

Panda, S. S., Ames, D. P., Panigrahi, S. (2010). Application of vegetation indices for agricultural crop yield prediction using neural network techniques. Remote Sens., 2, 673–696.10.3390/rs2030673 Search in Google Scholar

Szász, G. (2005). Termésingadozást kiváltó éghajlati változékonyság a Kárpát-medencében. “Agro-21” füzetek, (40) 33–69. Search in Google Scholar

Tamás, J., Nagy, A., Fehér, J. (2015). Agricultural biomass monitoring on water sheds based on remotely sensed data. Water Science and Technology, 72(12), 2212–2220.10.2166/wst.2015.42326676009 Search in Google Scholar

Tewkesbury, A. P., Comber, A. J., Tate, N. J., Lamb, A., Fisher, P. F. (2015). A critical synthesis of remotely sensed optical image changed detection techniques. Remote Sensing of Environment, 160, 1–14.10.1016/j.rse.2015.01.006 Search in Google Scholar

Tiecheng, B., Nannan, Z., Benoit, M., Youqi, C. (2019). Jujube yield prediction method combining Landsat 8 Vegetation Index and the phenological length. Computers and Electronics in Agriculture, 162, 1011–1027. Search in Google Scholar

Vicente-Serrano, S. M., Cabello, D., Tomás-Burguera, M., Martín-Hernández, N., Beguería, S., Azorin-Molina, C., Kenawy, A. E. (2015). Droughtvariability and land degradation in semiarid regions: assessment using remote sensing data and drought indices (1982–2011). Remote Sens., 7, 4391–4423.10.3390/rs70404391 Search in Google Scholar

eISSN:
1338-5259
Język:
Angielski
Częstotliwość wydawania:
2 razy w roku
Dziedziny czasopisma:
Industrial Chemistry, Green and Sustainable Technology