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Utilizing Machine Learning Algorithm, Cloud Computing Platform and Remote Sensing Satellite Data for Impact Assessment of Flood on Agriculture Land


Affiliations
1 ICAR-National Dairy Research Institute, Karnal 132 001, India
2 Lovely Professional University, Phagwara 144 001, India
3 Space Applications Centre, Indian Space Research Organizations, Ahmedabad 380 015, India
4 Commissionerate of Rural Development, Government of Gujarat, Gandhinagar 382 010, India
 

Floods are one of the most devastating natural disasters that cause immense damage to life, property and agriculture worldwide. Recurring floods in Bihar (a state in eastern India) during the monsoon season impact the agro-based economy, destroying crops and making it difficult for farmers to prepare for the next season. To mitigate the impact of floods on the agricultural sector, there is a need for early warning systems. Nowadays, remote sensing technology is used extensively for monitoring and managing flood events, which is also used in the present study. The random forest (RF) machine learning (ML) algorithm has also been used for land-use classification, and its output is used as an input for flood impact assessment. Here, we have analysed the flood extents and their impact on agriculture using Sentinel-1 SAR, Sentinel-2 and Planet Scope optical imageries on the Google Earth Engine (GEE) cloud computing platform. The present study shows that floods severely impacted a large part of Bihar during the monsoon seasons of 2020 and 2021. About 701,967 ha of land (614,706 ha agricultural land) in 2020 and 955,897 ha (851,663 ha agricultural land) in 2021 were severely flooded. An inundation maps and area statistics have been generated to visualise the results, which can help the government authorities prioritize relief and rescue operations.

Keywords

Agriculture, Cloud Computing Platforms, Floods, Machine Learning Algorithm, Remote Sensing Data.
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  • Freer, J., Beven, K., Neal, J., Schumann, G., Hall, J. and Bates, P., Flood risk and uncertainty. In Risk and Uncertainty Assessment for Natural Hazards (eds Rougier, J., Sparks, S. and Hill, L.), Cambridge University Press, Cambridge, 2013, pp. 190–233; https://doi.org/10.1017/CBO9781139047562.008.
  • Kumar, H., Karwariya, S. K. and Kumar, R., Google earth engine-based identification of flood extent and flood-affected paddy rice fields using Sentinel-2 MSI and sentinel-1 SAR data in Bihar state, India. J. Indian Soc. Remote Sensing, 2022; https://doi.org/10.1007/s12524-021-01487-3.
  • Torres, R., Snoeij, P., Geudtner, D., Bibby, D., Davidson, M., Attema, E., Potin, P. and Traver, I. N., GMES Sentinel-1 mission. Remote Sensing Environ., 2012, 120, 9–24; https://doi.org/10.1016/j.rse.2011.05.028.
  • Schumann, G. J., Brakenridge, G. R., Kettner, A. J., Kashif, R. and Niebuhr, E., Assisting flood disaster response with earth observation data and products: a critical assessment. Remote Sensing, 2018, 10(8), 1230; https://doi.org/10.3390/rs10081230.
  • Ghosh, S., Kumar, D. and Kumari, R., Evaluating the impact of flood inundation with the cloud computing platform over vegetation cover of Ganga Basin during COVID-19. Spat. Inf. Res., 2022, 30, 291–308; https://doi.org/10.1007/s41324-022-00430-z.
  • Chini, M., Hostache, R., Giustarini, L. and Matgen, P., A hierarchical split-based approach for parametric thresholding of SAR images: flood inundation as a test case. IEEE Trans. Geosci. Remote Sensing, 2017, 55(12), 6975–6988; https://doi.org/10.1109/TGRS.2017.273-7664.
  • McFeeters, S. K., The use of the normalized difference water index (NDWI) in the delineation of open water features. Int. J. Remote Sensing, 1996, 17(7); 1425–1432; https://doi.org/10.1080/0143116-9608948714.
  • Xu, H., Modification of normalized difference water index (NDWI) to enhance open water features in remotely sensed imagery. Int. J. Remote Sensing, 2006, 27(14), 3025–3033; https://doi.org/10.1080/01431160600589179.
  • Feyisa, G. L., Meilby, H., Fensholt, R. and Proud, S. R., Automated water extraction index: a new technique for surface water mapping using Landsat imagery. Remote Sensing Environ., 2014, 140, 23–35; https://doi.org/10.1016/j.rse.2013.08.029.
  • Ray, K., Pandey, P., Pandey, C., Dimri, A. P. and Kishore, K., On the recent floods in India. Curr. Sci., 2019, 117(2), 204–218.
  • Bhatt, C. M., Gupta, A., Roy, A., Dalal, P. and Chauhan, P., Geospatial analysis of September, 2019 floods in the Lower Gangetic Plains of Bihar using multi-temporal satellites and river gauge data. Geomat. Natural Haz. Risk, 2020, 12, 84–102; https://doi.org/10.1080/1947-5705.2020.1861113.
  • Anusha, N. and Bharathi, B., Flood detection and flood mapping using multi-temporal synthetic aperture radar and optical data. Egypt. J. Remote Sensing Space Sci., 2020, 23, 207–219.
  • Khan, A., Govil, H., Khan, H. H., Kumar Thakur, P., Yunus, A. P. and Pani, P., Channel responses to flooding of Ganga River, Bihar India, 2019 using SAR and optical remote sensing. Adv. Space Res., 2021; https://doi.org/10.1016/j.asr.2021.08.039.
  • Jeganathan, C. and Kumar, P., Mapping agriculture dynamics and associated flood impacts in Bihar using time-series satellite data. Climate Change Agric. India: Impact Adaptation, Springer, Cham., 2018; https://doi.org/10.1007/978-3-319-90086-5_5.
  • Government of India (GoI), Census of India, 2011; https://census-india.gov.in/2011-prov-results/data_files/bihar/Provisional%20Population%20Totals%202011-Bihar.pdf (accessed on 10 March 2022).
  • GoI, Department of Agriculture, Cooperation and Farmers’ Welfare, 2020; https://farmech.dac.gov.in/FarmerGuide/BI/1.htm (accessed on 5 January 2023).
  • Vizzari, M., PlanetScope, Sentinel-2, and Sentinel-1 data integration for object-based land cover classification in Google Earth Engine. Remote Sensing, 2022, 14(11), 2628; https://doi.org/10.3390/rs141-12628.
  • Pascual, A., Tupinambá-Simões, F., Guerra-Hernández, J. and Bravo, F., High-resolution planet satellite imagery and multi-temporal surveys to predict risk of tree mortality in tropical eucalypt forestry. J. Environ. Manage., 2022, 310, 114804.
  • Arif, F. and Akbar, M., Resampling air borne sensed data using bilinear interpolation algorithm. In IEEE International Conference on Mechatronics, ICM’05, Taipei, Taiwan, 2005, pp. 62–65; doi:10. 1109/ICMECH.2005.1529228.
  • Xia, M., Li, S., Chen, W. and Yang, G., Perceptual image hashing using rotation invariant uniform local binary patterns and color feature. In Advances in Computers, 2023, vol. 130, pp. 163–205; https://doi.org/10.1016/bs.adcom.2022.12.001.
  • Otsu, N., A threshold selection method from gray-level histograms. IEEE Trans. Syst, Man Cybern., 1979, 9(1), 62–66.
  • Kordelas, G., Manakos, I., Aragones, D. G., Díaz-Delgado, R. and Bustamante, J., Fast and automatic data-driven thresholding for inundation mapping with Sentinel-2 data. Remote Sensing, 2018, 10, 910.
  • Moharrami, M., Javanbakht, M. and Attarchi, S., Automatic flood detection using Sentinel-1 images on the Google Earth Engine. Environ. Monit. Assess., 2021, 193, 248; https://doi.org/10.1007/s10661-021-09037-7.
  • Xue, J. and Zhang, Y., Ridler and Calvard’s, Kittler and Illingworth’s and Otsu’s methods for image thresholding. Pattern Recogn. Lett., 2012, 33, 793–797.
  • Manjusree, P., Prasanna Kumar, L., Bhatt, C. M., Rao, G. S. and Bhanumurthy, V., Optimization of threshold ranges for rapid flood inundation mapping by evaluating backscatter profiles of high incidence angle SAR images. Int. J. Disaster Risk Sci., 2012, 3, 113–122.
  • Liang, J. and Liu, D., A local thresholding approach to flood water delineation using Sentinel-1 SAR imagery. ISPRS J. Photogramm. Remote Sensing, 2020, 159, 53–62; https://doi.org/10.1016/J.ISPR-SJPRS.2019.10.017.
  • Central Water Commission, Daily flood situation report cum advisories, GoI, New Delhi, 2020; http://cwc.gov.in/fmo/dfsra
  • Central Water Commission. Daily flood situation report cum advisories, GoI, New Delhi, 2021; http://cwc.gov.in/fmo/dfsra
  • State Disaster Management Department, Bihar; http://disastermg-mt.bih.nic.in/cumulative%20flood%20report%202020/cum05092-020.pdf (accessed on 5 January 2023).
  • Flood Management Information System, Bihar, 2020.
  • NRSC, Cumulative Flood Inundated areas of Bihar State (9 to 23 July 2020).
  • Olofsson, P., Foody, G. M., Herold, M., Stehman, S. V., Woodcock, C. E. and Wulder, M. A., Good practices for estimating area and assessing accuracy of land change. Remote Sensing Environ., 2014, 148, 42–57.
  • NRSC, Cropped area affected due to flooding in Bihar state (based on flood layer from July 3 to 7 August 2020) dated 19.08.2020, Map no. 2020/92, NRSC/ISRO, Hyderabad.

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  • Utilizing Machine Learning Algorithm, Cloud Computing Platform and Remote Sensing Satellite Data for Impact Assessment of Flood on Agriculture Land

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Authors

Himanshu Kumar
ICAR-National Dairy Research Institute, Karnal 132 001, India
Rohan Kumar
Lovely Professional University, Phagwara 144 001, India
Sujay Dutta
Space Applications Centre, Indian Space Research Organizations, Ahmedabad 380 015, India
Magan Singh
ICAR-National Dairy Research Institute, Karnal 132 001, India
Sateesh Kr. Karwariya
Commissionerate of Rural Development, Government of Gujarat, Gandhinagar 382 010, India

Abstract


Floods are one of the most devastating natural disasters that cause immense damage to life, property and agriculture worldwide. Recurring floods in Bihar (a state in eastern India) during the monsoon season impact the agro-based economy, destroying crops and making it difficult for farmers to prepare for the next season. To mitigate the impact of floods on the agricultural sector, there is a need for early warning systems. Nowadays, remote sensing technology is used extensively for monitoring and managing flood events, which is also used in the present study. The random forest (RF) machine learning (ML) algorithm has also been used for land-use classification, and its output is used as an input for flood impact assessment. Here, we have analysed the flood extents and their impact on agriculture using Sentinel-1 SAR, Sentinel-2 and Planet Scope optical imageries on the Google Earth Engine (GEE) cloud computing platform. The present study shows that floods severely impacted a large part of Bihar during the monsoon seasons of 2020 and 2021. About 701,967 ha of land (614,706 ha agricultural land) in 2020 and 955,897 ha (851,663 ha agricultural land) in 2021 were severely flooded. An inundation maps and area statistics have been generated to visualise the results, which can help the government authorities prioritize relief and rescue operations.

Keywords


Agriculture, Cloud Computing Platforms, Floods, Machine Learning Algorithm, Remote Sensing Data.

References





DOI: https://doi.org/10.18520/cs%2Fv125%2Fi8%2F886-895