Crop insurance, though clearly needed, has not taken root in Kenyan agriculture, and what little exists is indemnity based, meaning that a farmer is compensated only based on assessed crop damage or harvest shortfall. This is often cumbersome and expensive for the average subsistence farmer. A better approach is to use index based insurance, whereby an agreed index is computed and the farmer is compensated or not compensated depending on its value. Remote sensing technology, which is now widely available globally, provides such an index, the Normalized Difference Vegetation Index (NDVI), which is an acknowledged indicator of crop health at different stages of crop growth. This paper reports on a study carried out in mid-2019 to investigate the possibility of applying remote sensing in this way to enable crop insurance for maize farmers in Migori County, Kenya. Sentinel 2 imagery from May 2017 (taken as the insurance year) was acquired, classified and NDVI generated over the study area. An 8 Km × 8 Km grid was overlaid and average NDVI computed per such grid cell. Similar imagery for May 2016 was acquired and similarly processed to provide reference NDVI averages. For any grid cell then, if Ap be the insurance year NDVI and Ar the reference NDVI, the insurance index was computed as (Ap - Ar), and farmer compensation would be triggered if this value was negative. Results show that out of about 85 small holder farms in the study area, 30 would have qualified for such compensations. These results are recommended for further refining and pilot testing in the study area and similar maize growing areas.
References
[1]
Towery, N.G., Eyton, J.R., Changnon Jr., S.A. and Dailey, C.L. (1975) Remote Sensing of Crop-Hail Damage. Report of Research, the Country Companies, 29.
[2]
Nahvi, A., Kohansal, M.R., Ghorbani, M. and Shahnoushi, N. (2014) Factors Affecting Rice Farmers to Participate in Agricultural Insurance. Journal of Applied Science and Agriculture, 9, 1525-1526.
[3]
The World Bank Group (2010) Government Support to Agricultural Insurance: Challenges and Options for Developing Countries.
[4]
Cole, S., Bastian, G.G., Vyas, S., Wendel, C. and Stein, D. (2012) The Effectiveness of Index Based Micro-Insurance in Helping Small holders Manage Weather-Related Risks. EPPI-Centre, Social Science Research Unit, Institute of Education, University of London, London, 17-18.
[5]
Colwell, R.N. (1983) Manual of Remote Sensing. Second Edition, Volume I, 1-3.
[6]
Lillesand, T.M. and Kiefer, R.W. (2000) Remote Sensing and Image Interpretation. John Wiley & Sons, New York.
[7]
Johnson, L., Roczen, D., Youkhana, S., Nemani, R. and Bosch, D. (1998) Mapping Vineyard Leaf Area with Multispectral Satellite Imagery. Computers and Electronics in Agriculture, 38, 33-44. https://doi.org/10.1016/S0168-1699(02)00106-0
[8]
Kogan, F.N. (1998) A Typical Pattern of Vegetation Conditions in Southern Africa during El-Nino Years Detected from AVHRR Data Using Three-Channel Numerical Index. International Journal of Remote Sensing, 19, 3689-3690. https://doi.org/10.1080/014311698213902
[9]
Benedetti, R. and Rossini, P. (1993) On the Use of NDVI Profiles as a Tool for Agricultural Statistics: The Case Study of Wheat Yield Estimate and Forecast in Emilia Romagna. Remote Sensing of the Environment, 45, 311-326. https://doi.org/10.1016/0034-4257(93)90113-C
[10]
Government of Kenya (2014) Agriculture Insurance Solutions Appraisal. Government of Kenya Background Report, 2.
[11]
Nadia, N. (2019) Personal Communication with Manager. ICEALION Insurance Company.
[12]
Government of Kenya, Insurance Amendment Act (2019)
[13]
Kenya National Bureau of Statistics (2019)
[14]
Kenya Meteorological Department. https://www.meteo.go.ke
[15]
Woodward, J.D., Schnitkey, G.D., Sherrick, B.J., Lozano-Gracia, N. and Anselin, L. (2012) A Spatial Econometric Analysis of Loss Experience by the US Crop Insurance Program. Journal of Risk and Insurance, 79, 261-285. https://doi.org/10.1111/j.1539-6975.2010.01397.x
[16]
Leblois, A., Quirion, P. and Sultan, B. (2014) Price Vs Weather Shock Hedging for Cash Crops. Ecological Economics, 10, 67-80. https://doi.org/10.1016/j.ecolecon.2014.02.021