894
Views
28
CrossRef citations to date
0
Altmetric
Original Articles

A combined drought monitoring index based on multi-sensor remote sensing data and machine learning

, , , &
Pages 1161-1177 | Received 08 Dec 2018, Accepted 05 Jun 2019, Published online: 27 Jun 2019

References

  • Abbas S, Nichol JE, Qamer FM, Xu J. 2014. Characterization of drought development through remote sensing: a case study in Central Yunnan, China. Remote Sens. 6(6):4998–5018.
  • AghaKouchak A. 2014. A baseline probabilistic drought forecasting framework using standardized soil moisture index: application to the 2012 United States drought. Hydrol Earth Syst Sci. 18(7):2485–2492.
  • AghaKouchak A, Farahmand A, Melton FS, Teixeira J, Anderson MC, Wardlow BD, Hain CR. 2015. Remote sensing of drought: Progress, challenges and opportunities. Rev Geophys. 53(2):452–480.
  • Agutu NO, Awange JL, Zerihun A, Ndehedehe CE, Kuhn M, Fukuda Y. 2017. Assessing multi-satellite remote sensing, reanalysis, and land surface models' products in characterizing agricultural drought in East Africa. Remote Sens Environ. 194:287–302.
  • Allen R, Irmak A, Trezza R, Hendrickx JM, Bastiaanssen W, Kjaersgaard J. 2011. Satellite-based ET estimation in agriculture using SEBAL and METRIC. Hydrol Process. 25(26):4011–4027.
  • Boken VK, Cracknell AP, Heathcote RL, editors. 2005. Monitoring and predicting agricultural drought: a global study. Oxford: Oxford University Press.
  • Breiman L. 2001. Random forests. Mach Learn. 45(1):5–32.
  • Cao Y, Nan Z, Cheng G. 2015. GRACE gravity satellite observations of terrestrial water storage changes for drought characterization in the arid land of northwestern China. Remote Sens. 7(1):1021–1047.
  • Cooke WH, Mostovoy GV, Anantharaj VG, Jolly WM. 2012. Wildfire potential mapping over the state of Mississippi: a land surface modeling approach. GISci Remote Sens. 49(4):492–509.
  • Dracup JA, Lee KS, Paulson EG. 1980. On the definition of droughts. Water Resour Res. 16(2):297–302.
  • Hagman G, Beer H, Bendz M, Wijkman A. 1984. Prevention better than cure. Report on human and environmental disasters in the Third World. Stockholm: Swedish Red Cross.
  • Hao C, Zhang J, Yao F. 2015. Combination of multi-sensor remote sensing data for drought monitoring over Southwest China. Int J Appl Earth Obs Geoinf. 35:270–283.
  • Hao Z, AghaKouchak A, Nakhjiri N, Farahmand A. 2014. Global integrated drought monitoring and prediction system. Scientific Data. 1:1–10.
  • Hao Z, Singh VP. 2015. Drought characterization from a multivariate perspective: a review. J Hydrol. 527:668–678.
  • Hayes M, Svoboda M, Le Comte D, Redmond KT, Pasteris P. 2005. Drought monitoring: New tools for the 21st century. In: Wilhite DA. Drought and water crises: science, technology, and management issues. Abingdon: Taylor and Francis; p. 53–69.
  • Heim RR. Jr 2002. A review of twentieth-century drought indices used in the United States. Bull Amer Meteor Soc. 83(8):1149–1165.
  • Jiao W, Tian C, Chang Q, Novick KA, Wang L. 2019. A new multi-sensor integrated index for drought monitoring. Agric For Meteorol. 268:74–85.
  • Lambert J, Drenou C, Denux J-P, Balent G, Cheret V. 2013. Monitoring forest decline through remote sensing time series analysis. GISci Remote Sens. 50(4):437–457.
  • Liaw A, Wiener M. 2002. Classification and regression by randomForest. R News. 2(3):18–22.
  • Liu Y, Zhao H. 2017. Variable importance-weighted random forests. Quant Biol. 5(4):338–351.
  • Long JA, Lawrence RL, Greenwood MC, Marshall L, Miller PR. 2013. Object-oriented crop classification using multitemporal ETM + SLC-off imagery and random forest. GISci Remote Sens. 50(4):418–436.
  • Mishra AK, Singh VP. 2011. Drought modeling–A review. J Hydrol. 403(1–2):157–175.
  • Mizzell EHP. 2008. Improving drought detection in the Carolinas: evaluation of local, state, and federal drought indicators [Doctoral dissertation]. Columbia: University of South Carolina.
  • Mo KC, Lettenmaier DP. 2014. Objective drought classification using multiple land surface models. J Hydrometeor. 15(3):990–1010.
  • Mu Q, Zhao M, Kimball JS, McDowell NG, Running SW. 2013. A remotely sensed global terrestrial drought severity index. Bull Amer Meteor Soc. 94(1):83–98.
  • Paredes-Trejo F, Barbosa H. 2017. Evaluation of the SMOS-Derived Soil Water Deficit Index as Agricultural Drought Index in northeast of Brazil. Water. 9(6):377.
  • Park S, Im J, Jang E, Rhee J. 2016. Drought assessment and monitoring through blending of multi-sensor indices using machine learning approaches for different climate regions. Agric For Meteorol. 216:157–169.
  • Park S, Im J, Park S, Rhee J. 2017. Drought monitoring using high resolution soil moisture through multi-sensor satellite data fusion over the Korean peninsula. Agric For Meteorol. 237:257–269.
  • Rajsekhar D, Singh VP, Mishra AK. 2015. Multivariate drought index: an information theory based approach for integrated drought assessment. J Hydrol. 526:164–182.
  • Rhee J, Im J, Carbone GJ. 2010. Monitoring agricultural drought for arid and humid regions using multi-sensor remote sensing data. Remote Sens Environ. 114(12):2875–2887.
  • Samaniego L, Kumar R, Zink M. 2013. Implications of parameter uncertainty on soil moisture drought analysis in Germany. J Hydrometeor. 14(1):47–68.
  • Sheffield J, Wood EF, Chaney N, Guan K, Sadri S, Yuan X, Olang L, Amani A, Ali A, Demuth S, et al. 2014. A drought monitoring and forecasting system for sub-sahara African water resources and food security. Bull Amer Meteor Soc. 95(6):861–861.
  • Shi Y. 1994. Causes and temporal spatial distribution characteristics of drought disasters in Shaanxi. J Arid Land Res Environ. 8(3):51–57.
  • Tadesse T, Champagne C, Wardlow BD, Hadwen TA, Brown JF, Demisse GB, Bayissa YA, Davidson AM. 2017. Building the vegetation drought response index for Canada (VegDRI-Canada) to monitor agricultural drought: first results. GIsci Remote Sens. 54(2):230–257.
  • Wardlow BD, Anderson MC, Verdin JP. 2012. Remote sensing of drought: Innovative monitoring approaches. Boca Raton: CRC Press.
  • Wilhite DA. 2005. Drought and water crises: science, technology, and management issues. Vol. 86. 1st ed. Boca Raton: CRC Press.
  • Wilhite DA, Glantz MH. 1985. Understanding: the drought phenomenon: the role of definitions. Water Int. 10(3):111–120.
  • Zhang A, Jia G. 2013. Monitoring meteorological drought in semiarid regions using multi-sensor microwave remote sensing data. Remote Sens Environ. 134:12–23.
  • Zhang L, Jiao W, Zhang H, Huang C, Tong Q. 2017. Studying drought phenomena in the Continental United States in 2011 and 2012 using various drought indices. Remote Sens Environ. 190:96–106.
  • Zhou L, Wu J, Zhang J, Leng S, Liu M, Zhang J, Zhao L, Zhang F, Shi Y. 2013. The integrated surface drought index (ISDI) as an indicator for agricultural drought monitoring: theory, validation, and application in Mid-Eastern China. IEEE J Sel Top Appl Earth Observations Remote Sensing. 6(3):1254–1262.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.