Citation: | Md. Shahinoor Rahman, Liping Di, Eugene Yu, Li Lin, Zhiqi Yu. Remote Sensing Based Rapid Assessment of Flood Crop Damage Using Novel Disaster Vegetation Damage Index (DVDI)[J]. International Journal of Disaster Risk Science, 2021, 12(1): 90-110. doi: 10.1007/s13753-020-00305-7 |
Adnan, M.S.G., A.Y.M. Abdullah, A. Dewan, and J.W. Hall. 2020. The effects of changing land use and flood hazard on poverty in coastal Bangladesh. Land Use Policy 99: Article 104868.
|
Aerts, J.C.J.H., and W.J.W. Botzen. 2011. Climate change impacts on pricing long-term flood insurance: A comprehensive study for the Netherlands. Global Environmental Change 21(3): 1045–1060.
|
Ahmed, M.R., K.R. Rahaman, A. Kok, and Q.K. Hassan. 2017. Remote sensing-based quantification of the impact of flash flooding on the rice production: A case study over northeastern Bangladesh. Sensors 17: Article 2347.
|
Aurbacher, J., and S. Dabbert. 2011. Generating crop sequences in land-use models using maximum entropy and Markov chains. Agricultural Systems 104(6): 470–479.
|
Bouwer, L.M. 2011. Have disaster losses increased due to anthropogenic climate change? Bulletin of the American Meteorological Society 92(1): 39–46.
|
Brémond, P., and A. Agenais. 2013. Flood damage assessment on agricultural areas: Review and analysis of existing methods. https://core.ac.uk/download/pdf/52629325.pdf. Accessed 20 May 2019.
|
Capellades, M.A., S. Reigber, and M. Kunze. 2009. Storm damage assessment support service in the U.S. corn belt using RapidEye satellite imagery. In Remote sensing for agriculture, ecosystems, and hydrology XI, Proceedings of a meeting held 1–3 September 2009, Berlin, Germany, SPIE Proceedings 7472, ed. C.M.U. Neale, and A. Maltese, 747208.1–747208.14. Bellingham, WA: SPIE (International Society for Optics and Photonics).
|
Chejarla, V.R., V.R. Mandla, G. Palanisamy, and M. Choudhary. 2016. Estimation of damage to agriculture biomass due to Hudhud cyclone and carbon stock assessment in cyclone affected areas using Landsat-8. Geocarto International 32(6): 1–14.
|
Chowdhury, E.H., and Q.K. Hassan. 2017. Use of remote sensing data in comprehending an extremely unusual flooding event over southwest Bangladesh. Natural Hazards 88(3): 1805–1823.
|
Citeau, J.M. 2003. A new control concept in the Oise catchment area: Definition and assessment of flood compatible agricultural activities. In Proceedings of FIG Working Week Conference, 13–17 April 2003, Paris, France. Session TS 14 (14:00–15:30)—New Professional Tasks: Environmental Issues and Statutory Valuation. https://www.fig.net/resources/proceedings/fig_proceedings/fig_2003/TS_14/TS14_5_Citeau.pdf. Accessed 7 Sept 2020.
|
Clement, M.A., C.G. Kilsby, and P. Moore. 2018. Multi-temporal synthetic aperture radar flood mapping using change detection. Journal of Flood Risk Management 11(2): 152–168.
|
Cressman, D.R., M.H.P. Fortin, M.J. Hensel, P.H. Brubacher, and R.A. McBride. 1988. Estimation of cropland damages caused by overland flooding, two case studies. Canadian Water Resources Journal 13(3): 15–25.
|
Del Ninno, C., P.A. Dorosh, and L.C. Smith. 2003. Public policy, markets and household coping strategies in Bangladesh: Avoiding a food security crisis following the 1998 floods. World Development 31(7): 1221–1238.
|
Di, L., E.G. Yu, L. Kang, R. Shrestha, and Y. Bai. 2017. RF-CLASS: A remote-sensing-based flood crop loss assessment cyber-service system for supporting crop statistics and insurance decision-making. Journal of Integrative Agriculture 16(2): 408–423.
|
Di, S., L. Guo, and L. Lin. 2018. Rapid estimation of flood crop loss by using DVDI. 2018 7th International Conference on Agro-geoinformatics (Agro-geoinformatics), 6–9 August 2018, Hangzhou, China. https://doi.org/10.1109/agro-geoinformatics.2018.8476083.
|
Di, L., E. Yu, R. Shrestha, and L. Lin. 2018. DVDI: A new remotely sensed index for measuring vegetation damage caused by natural disasters. In Proceedings of IGARSS 2018—The 2018 IEEE International Geoscience and Remote Sensing Symposium, 22–27 July 2018, Valencia, Spain, 9067–9069. Piscataway, NJ: Institute of Electrical and Electronics Engineers (IEEE) https://ieeexplore.ieee.org/document/8518022. Accessed 11 Feb 2019.
|
Dutta, D., S. Herath, and K. Musiake. 2003. A mathematical model for flood loss estimation. Journal of Hydrology 277(1–2): 24–49.
|
FAO (Food and Agriculture Organization). 2015. The impact of disasters on agriculture and food security. Rome: Food and Agriculture Organization of the United Nations.
|
FEMA (Federal Emergency Management Agency). 2016. Texas severe storms and flooding (FEMA DR-4272). https://www.fema.gov/sites/default/files/2020-09/PDAReportFEMA4272DRTX.pdf. Accessed 10 Nov 2018.
|
FEMA (Federal Emergency Management Agency). 2018a. Preliminary damage assessment report, Iowa severe storms, tornadoes, straight-line winds, and flooding (FEMA DR-4386). https://www.fema.gov/sites/default/files/2020-03/FEMA4386DRIA.pdf. Accessed 24 May 2019.
|
FEMA (Federal Emergency Management Agency). 2018b. Preliminary damage assessment report, Nebraska severe storms, tornadoes, straight-line winds, and flooding (FEMA DR-4387). https://www.fema.gov/sites/default/files/2020-03/FEMA4387DRNE.pdf. Accessed 24 May 2019.
|
Field, C.B., V. Barros, T.F. Stocker, and D. Qin. 2012. Managing the risks of extreme events and disasters to advance climate change adaptation: Special report of the intergovernmental panel on climate change. Cambridge: Cambridge University Press.
|
Book
|
Förster, S., B. Kuhlmann, K.E. Lindenschmidt, and A. Bronstert. 2008. Assessing flood risk for a rural detention area. Natural Hazards and Earth System Science 8: 311–322.
|
Gerl, T., H. Kreibich, G. Franco, D. Marechal, and K. Schröter. 2016. A review of flood loss models as basis for harmonization and benchmarking. PloS One 11(7): Article e0159791.
|
Hirabayashi, Y., R. Mahendran, S. Koirala, L. Konoshima, D. Yamazaki, S. Watanabe, H. Kim, and S. Kanae. 2013. Global flood risk under climate change. Nature Climate Change 3(9): 816–821.
|
Islam, M.M., and K. Sado. 2000. Flood hazard assessment in Bangladesh using NOAA AVHRR data with geographical information system. Hydrological Processes 14(3): 605–620.
|
Kogan, F., L. Salazar, and L. Roytman. 2012. Forecasting crop production using satellite-based vegetation health indices in Kansas, USA. International Journal of Remote Sensing 33(9): 2798–2814.
|
Lin, L., L. Di, E.G. Yu, L. Kang, R. Shrestha, M.S. Rahman, J. Tang, M. Deng,. et al. 2016. A review of remote sensing in flood assessment. In Proceedings of the 2016 Fifth International Conference on Agro-Geoinformatics, 18–20 July 2016, Tianjin, China.
|
Liu, W., J. Huang, C. Wei, X. Wang, L. R. Mansaray, J. Han, D. Zhang, and Y. Chen. 2018. Mapping water-logging damage on winter wheat at parcel level using high spatial resolution satellite data. ISPRS Journal of Photogrammetry and Remote Sensing 142: 243–256.
|
Lu, L., C. Wu, and L. Di. 2020. Exploring the spatial characteristics of typhoon-induced vegetation damages in the southeast coastal area of China from 2000 to 2018. Remote Sensing 12(10). https://doi.org/10.3390/rs12101692.
|
Merz, B., H. Kreibich, R. Schwarze, and A. Thieken. 2010. Assessment of economic flood damage. Natural Hazards and Earth System Sciences 10(8): 1697–1724.
|
Mosleh, M.K., Q.K. Hassan, and E.H. Chowdhury. 2015. Application of remote sensors in mapping rice area and forecasting its production: A review. Sensors 15(1): 769–791.
|
Okamoto, K., S. Yamakawa, and H. Kawashima. 1998. Estimation of flood damage to rice production in North Korea in 1995. International Journal of Remote Sensing 19(2): 365–371.
|
Opolot, E. 2013. Application of remote sensing and geographical information systems in flood management: A review. Research Journal of Applied Sciences Engineering and Technology 6(10): 1884–1894.
|
Osman, J., J. Inglada, and J.F. Dejoux. 2015. Assessment of a Markov logic model of crop rotations for early crop mapping. Computers and Electronics in Agriculture 113: 234–243.
|
Ostu, N. 1979. A threshold selection method from gray-level histogram. IEEE Transactions on Systems, Man, and Cybernetics 9(1): 62–66.
|
Rahman, M.S., and L. Di. 2017. The state of the art of spaceborne remote sensing in flood management. Natural Hazards 85(2): 1223–1248.
|
Rahman, M.S., and L. Di. 2020. A systematic review on case studies of remote-sensing-based flood crop loss assessment. Agriculture 10(4): Article 131.
|
Rahman, M.S., L. Di, R. Shrestha, E.G. Yu, L. Lin, L. Kang, and M. Deng. 2016. Comparison of selected noise reduction techniques for MODIS daily NDVI: An empirical analysis on corn and soybean. In Proceedings of the 2016 Fifth International Conference on Agro-Geoinformatics, 18–20 July 2016, Tianjin, China. Piscataway, NJ: Institute of Electrical and Electronics Engineers (IEEE).
|
Rahman, M.S., L. Di, E.G. Yu, C. Zhang, and H. Mohiuddin. 2019. In-season major crop-type identification for US cropland from landsat images using crop-rotation pattern and progressive data classification. Agriculture 9(1): Article 17.
|
Schumann, G.J.P., and D.K. Moller. 2015. Microwave remote sensing of flood inundation. Physics and Chemistry of the Earth, Parts A/B/C 83–84: 84–95.
|
Shrestha, R., L. Di, E. G. Yu, L. Kang, L. Li, M. S. Rahman, M. Deng, and Z. Yang. 2016. Regression based corn yield assessment using MODIS based daily NDVI in Iowa state. In Proceedings of the 2016 Fifth International Conference on Agro-Geoinformatics, 18–20 July 2016, Tianjin, China. Piscataway, NJ: Institute of Electrical and Electronics Engineers (IEEE).
|
Shrestha, R. 2017. A remote sensing-derived corn yield assessment model. Ph.D. thesis. George Mason University, Fairfax, Virginia, USA.
|
Shrestha, R., L. Di, E.G. Yu, L. Kang, Y.Z. Shao, and Y. Bai. 2017. Regression model to estimate flood impact on corn yield using MODIS NDVI and USDA cropland data layer. Journal of Integrative Agriculture 16(2): 398–407.
|
Shrestha, R., L. Di, E.G. Yu, Y. Shao, L. Kang, and B. Zhang. 2013. Detection of flood and its impact on crops using NDVI – Corn case. In Proceedings of the 2013 Second International Conference on Agro-Geoinformatics, 12–16 August 2013, Fairfax, VA, USA. Piscataway, NJ: Institute of Electrical and Electronics Engineers (IEEE).
|
Tapia-Silva, F.M., S. Itzerott, S. Foerster, B. Kuhlmann, and H. Kreibich. 2011. Estimation of flood losses to agricultural crops using remote sensing. Physics and Chemistry of the Earth, Parts A/B/C 36(7–8): 253–265.
|
USDA-ERS (United States Department of Agriculture–Economic Research Service). 2016. Crop production is concentrated in California and the Midwest. Washington, DC: United States Department of Agriculture – Economic Research Services. https://www.ers.usda.gov/data-products/chart-gallery/gallery/chart-detail/?chartId=58320. Accessed 6 Aug 2020.
|
Xu, H. 2006. Modification of normalised difference water index (NDWI) to enhance open water features in remotely sensed imagery. International Journal of Remote Sensing 27(14): 3025-3033.
|
Yu, E.G., L. Di, B. Zhang, Y. Shao, R. Shrestha, and L. Kang. 2013. Remote-sensing-based flood damage estimation using crop condition profiles. In Proceedings of 2013 Second International Conference on Agro-Geoinformatics, 12–16 August 2013, Fairfax, VA, USA. Piscataway, NJ: Institute of Electrical and Electronics Engineers (IEEE).
|
Zhu, Q., X. Chen, H. Yang, and Z. Huang. 2007. A mathematical model for flood loss estimation based on spatial grid. In Geoinformatics 2007: Geospatial Information Technology and Applications. Proceedings of a meeting held 25–27 May 2007, Nanjing, China; Proceedings of SPIE Volume 6754, ed. P. Gong, 67541R-1–67541R-8. Bellingham, WA: SPIE (International Society for Optics and Photonics).
|