Assessing the Challenge of Settlement in Budalangi and Yala Swamp Area in Western Kenya Using Landsat Satellite Imagery
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Date
2011
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Abstract
The Budalangi area of Kenya exhibits high levels of rural poverty despite its natural resources potential and
favourable climate. The area was mapped using multi-temporal remote sensing image data from 1973 to 2009 and
participatory data collection. Floods are a recurrent environmental hazard and impede access to environmental resources
and agricultural production. The physical setting of Budalangi at the floodplain of Nzoia River and increased runoff from
degraded catchments are contributory factors to the flooding. Floods lead to disruption of human settlements and
destruction of crops, shelter, dykes and infrastructural facilities. Disease outbreaks also increase due to destruction of
sanitation facilities and relocation of settlements in makeshift camps. This implies that the policy measures that have been
instituted by the government to mitigate the problem have had dismal impact in the Budalangi and Yala Swamp area. The
degradation of the catchment is reflected in its sediment loading and deposition into Lake Victoria which has seen the
morphology of the coastline at the mouth of Nzoia River and the aerial coverage by water in the lake change over the
years. The overall loss in the area under Yala Swamp is 54 Km from 186 Km in 1973 to 132 Km in 2009. The
encroachment has significant implication on the wellbeing of the Yala Swamp and the Nzoia Floodplain ecosystem. The
study therefore underscores the need to evolve an integrated watershed management plan for effective management of
Budalangi and Yala Swamp area and the region in general.
Description
Keywords
Rural poverty, Multi-temporal remote sensing, Degraded catchment, Floods
Citation
Onywere, S.M., Getenga, Z.M., Mwakalila, S.S., Twesigye, C.K. and Nakiranda, J.K., 2011. Assessing the challenge of settlement in Budalangi and Yala swamp area in Western Kenya using landsat satellite imagery.