A study on agricultural drought vulnerability at disaggregated level in a highly irrigated and intensely cropped state of India.

C S Murthy, Manoj Yadav, J Mohammed Ahamed, B Laxman, R Prawasi, M V R Sesha Sai, R S Hooda
Author Information
  1. C S Murthy: Agricultural Sciences and Applications Group, Remote Sensing Applications Area, National Remote Sensing Centre, Hyderabad, 500 037, India, Murthy_cs@nrsc.gov.in.

Abstract

Drought is an important global hazard, challenging the sustainable agriculture and food security of nations. Measuring agricultural drought vulnerability is a prerequisite for targeting interventions to improve and sustain the agricultural performance of both irrigated and rain-fed agriculture. In this study, crop-generic agricultural drought vulnerability status is empirically measured through a composite index approach. The study area is Haryana state, India, a prime agriculture state of the country, characterised with low rainfall, high irrigation support and stable cropping pattern. By analysing the multiyear rainfall and crop condition data of kharif crop season (June-October) derived from satellite data and soil water holding capacity and groundwater quality, nine contributing indicators were generated for 120 blocks (sub-district administrative units). Composite indices for exposure, sensitivity and adaptive capacity components were generated after assigning variance-based weightages to the respective input indicators. Agricultural Drought Vulnerability Index (ADVI) was developed through a linear combination of the three component indices. ADVI-based vulnerability categorisation revealed that 51 blocks are with vulnerable to very highly vulnerable status. These blocks are located in the southern and western parts of the state, where groundwater quality is saline and water holding capacity of soils is less. The ADVI map has effectively captured the spatial pattern of agricultural drought vulnerability in the state. Districts with large number of vulnerable blocks showed considerably larger variability of de-trended crop yields. Correlation analysis reveals that crop condition variability, groundwater quality and soil factors are closely associated with ADVI. The vulnerability index is useful to prioritise the blocks for implementation of long-term drought management plans. There is scope for improving the methodology by adding/fine-tuning the indicators and by optimising the weights.

References

  1. Philos Trans R Soc Lond B Biol Sci. 2005 Nov 29;360(1463):2155-68 [PMID: 16433101]
  2. Disasters. 2013 Apr;37(2):185-200 [PMID: 23278301]

MeSH Term

Agriculture
Crops, Agricultural
Droughts
Environmental Monitoring
Groundwater
India
Rain
Soil
Water Supply

Chemicals

Soil

Word Cloud

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