| dc.description.abstract |
The Bilate watershed, situated within Ethiopia's Rift Valley lakes basin, confronts
escalating water scarcity driven by rapid irrigation expansion aimed at bolstering food
production. This expansion has significantly altered river flows and compromised ecosystem
integrity, particularly during irrigation seasons. Accurate estimation of irrigation water
abstraction is paramount for sustainable water resource management, enhanced agricultural
productivity, environmental preservation, and conflict mitigation. This study addresses critical
data gaps by leveraging high-resolution remote sensing (RS) imagery to quantify irrigation
water use, while acknowledging the inherent challenges in validating RS-derived products
across diverse climatic and landscape conditions. This research focused on evaluating the
accuracy of land use/land cover (LULC) classification, irrigated area mapping, and actual
evapotranspiration (AET) estimation, all crucial components of irrigation water use
assessment. Landsat 8's blend of spectral capabilities, spatial and temporal resolution, extensive
historical archive, free access, and reliable imagery make it an outstanding option for LULC
classification and monitoring. Yielding nine dominant classes and demonstrating seasonal
variations in accuracy, with overall accuracies ranging from 80% to 90% and Kappa
coefficients from 0.8 to 0.9. Irrigated areas were mapped using Sentinel-1, uses SAR
technology operate in all weather conditions. It provides high-resolution imagery, allowing
detailed and frequent monitoring of irrigated areas. Its dual polarization (VV and VH) enhances
the accuracy of irrigation mapping. Advanced classification algorithms, Random Forest, were
applied, resulting in accuracies of 88% for the Bilate watershed and 87% for the Gumara
watershed, with Kappa coefficients of 0.74 and 0.73. The two watersheds were selected due to
their similar emergence of small-scale irrigation and contrasting rainfall and land cover
characteristics. These maps revealed significant discrepancies with global irrigation datasets,
underscoring the necessity for localized validation. In this study, a thorough evaluation of five
satellite-derived
AET products—including national (FAO WaPOR), continental
(modisSSEBop), and global (Climate Engine, modisSSEBop, and Synthesis) datasets—was
conducted. The comparison against ground-based reference evapotranspiration showed weak
correlations (< 0.35) and significant differences in magnitude. Notably, FAO WaPOR
displayed the most consistent agreement with the other products. A spatiotemporal analysis of
irrigation water withdrawal and availability from 2017 to 2022 was conducted utilizing Google
Earth Engine (GEE), HEC-HMS, and FAO-CROPWAT. The high-resolution imagery from
Sentinel-2 within GEE allows for efficient monitoring of actual irrigated areas. With frequent revisits and multispectral data, along with its free availability, it is ideal for accurately mapping
and tracking changes in small-scale irrigation systems. FAO-CROPWAT was used to
determine net and gross irrigation water requirements (IWR), considering climatic data, crop
parameters, and soil properties. The HEC-HMS model, calibrated with hydro-meteorological
data from the Ethiopian Meteorology Institute and Ministry of Water and Energy, simulated
streamflow with high accuracy (Nash-Sutcliffe Efficiency ranging from 0.91 to 0.96). This
study provides valuable insights for optimizing irrigation water management in the Bilate
watershed. The observed seasonal variability in LULC classification accuracy highlights the
importance of selecting appropriate temporal data for analysis. The identified spatial patterns
of IWR across sub-watersheds underscore the need for targeted water management strategies
and the promotion of water conservation practices, such as rainwater harvesting. By providing
an accurate assessment of irrigation water withdrawal through a robust RS-based approach,
this research aims to enhance water use efficiency, minimize water losses, and support
sustainable water resource management initiatives in the region. |
en_US |