Assessing the current solid waste management system and selecting new landfill site using Geospatial Technology: A case of Chole Town, Oromia, Ethiopia
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ASTU
Abstract
This study aims to enhance the solid waste management (SWM) system in Chole Town,
Oromia Regional State, Ethiopia, through the application of geospatial technologies. Driven
by rapid urbanization, population growth, and increasing wastes generation, Chole Town
faces major environmental, infrastructural, and institutional challenges in solid waste
management. The research integrates geospatial technologies like Geographic Information
Systems (GIS), Remote Sensing (RS), and the Analytic Hierarchy Process (AHP) with socio
economic data and environmental data to identify the best locations for solid waste dumping.
380 household respondents were sampled using stratified random sampling, and data were
collected using questionnaires, interviews, field observation, and spatial data. The significant
determining factors that were identified as applicable are inadequate institutional
coordination, poor public awareness, absence of infrastructure, and proximity to slope, water
body, and land use. Multi-criteria decision-making techniques were employed to rank eight
crucial spatial factors including land use/land cover, slope, proximity to roads, proximity to
built-up, soil type, distance to surface and ground water, and sensitive area proximity. The
geospatial analysis indicated that 14% of the study area was highly suitable for landfill
development, 28% was moderately suitable, 18% was less suitable, and 38% was unsuitable
according to environmental and social limitations. The study confirms that integrating spatial
and non-spatial data improves well-informed decision-making for sustainable waste
management. It concludes that the application of geospatial tools not only enhances the
efficiency of SWM practices but also promotes resource optimization, environmental
sustainability, and long-term urban development. It suggests improving institutional
capacity, investing in infrastructure, adopting segregation and recycling, and mainstreaming
GIS-based planning for future development.
