Erana Kebede Neda

Verified @gmail.com

Agriculture and Environmental Sciences
Haramaya University

24

Scopus Publications

1377

Scholar Citations

13

Scholar h-index

16

Scholar i10-index

Scopus Publications

  • Random forest-based species distribution modeling reveals intensifying multi-species invasion risks of alien plants in Ethiopia under climate change
    Kalid Hassen Yasin, Diriba Tulu, Tadele Bedo Gelete, Beyan Ahmed Yuya, Anteneh Derribew Iguala, Kiya Adare Tadesse, Erana Kebede
    Remote Sensing Applications Society and Environment, 2026
  • Green manure and rice straw recycling: A triple-win for productivity, environmental sustainability and net ecosystem economic benefit
    Nano Alemu Daba, Jing Huang, Md Ashraful Alam, Ntagisanimana Gilbert, Kiya Adare Tadesse, Imtiaz Ahmed, Mahmoud Abdelaziz, Jiwen Li, Erana Kebede, Tsegaye Gemechu Legesse, Shujun Liu, Lisheng Liu, Huimin Zhang
    Journal of Environmental Management, 2026
  • Machine learning predictions of climate change effects on nearly threatened bird species (Crithagra xantholaema) habitat in Ethiopia for conservation strategies
    Tadele Bedo Gelete, Diriba Tulu, Kalid Hassen Yasin, Erana Kebede
    Scientific Reports, 2025
    Endemic and endangered bird species, such as Salvadori serin ( C. xantholaema ), are vulnerable to environmental and anthropogenic changes. Understanding the impact of climate change on ecological niches is essential for effective conservation. This study employed advanced ML algorithms to model the current and future suitability of C. xantholaema under two scenarios (SSP245 and SSP585) for the years 2050 and 2070. The four machine learning models, namely, Maximum Entropy (MaxEnt), Random Forest (RF), Support Vector Machine (SVM), and Extreme Gradient Boost (XGBoost), predicted habitat suitability using 188 presence occurrence data and 15 environmental factors. Model performance was assessed using AUC-ROC, accuracy, precision, sensitivity, specificity, kappa, and F1 score, with ensemble modeling techniques enhancing reliability. The current analysis indicated high predictive accuracy, with XGBoost achieving the highest AUC (0.99), followed by RF (0.98), SVM (0.97), and MaxEnt (0.92). Regarding habitat suitability, 75.3% of Ethiopia’s land was unsuitable for C. xantholaema , with only 3.9% classified as highly suitable. By 2050, 61.82% and 57.14% of areas were projected to be unsuitable under SSP245 and SSP585, respectively. By 2070, unsuitable habitats may increase to 65.24% (SSP245) and 60.17% (SSP585), further decreasing habitat suitability. High-suitability habitats are expected to decline by 80.8% in 2050, covering approximately 8,259.95 km 2 , and by 73.2% in 2070, covering about 11,584.6 km 2 . Precipitation during the driest month (Bio14) was the most crucial predictor of habitat suitability, with importance values ranging from 32.5% (XGBoost) to 100% (SVM and RF), while temperature-related factors, particularly annual mean temperature (Bio1), contributed differently across ML models. According to this study, climate factors impact habitat changes. The findings emphasize the urgent need for conservation strategies to mitigate C. xantholaema habitat loss. Future research should include local data and other human-related factors to enhance the effectiveness of conservation efforts and improve predictions.
  • Advanced geospatial and machine learning models identify groundwater potential and reveal storage dynamics in Ethiopia's abbay river basin
    Kalid Hassen Yasin, Tadele Bedo Gelete, Erana Kebede, Anteneh Derribew Iguala, Mohammed Yusuf Abdo
    Journal of Hydrology Regional Studies, 2025
    The Abbay (Blue Nile) River Basin in Ethiopia is a critical sub-basin of the Nile, facing mounting groundwater management challenges due to its complex hydrogeology, which is compounded by climate change, population growth, and agricultural intensification. We developed a hydrologically validated groundwater potential zone (GWPZ) map using four machine learning algorithms—random forest (RF), extremely randomized trees (EXT), support vector machines (SVM), and extreme gradient boosting (XGBoost)–to capture spatial nonlinearity and hydrogeological complexity. Models were trained on 18 environmental predictors and 7100 well/spring locations, balanced with pseudoabsences generated via target-group background sampling in low-potential geomorphological units > 5 km from known water points. To reduce spatial autocorrelation bias, a 5-fold spatial cross-validation was employed. Model performance was evaluated using accuracy, F1 score, log loss, and AUC, with RF achieving the highest predictive accuracy (91 %) and rainfall as the dominant predictor. Spatial patterns revealed high-potential zones in the northeast and low-potential zones in the northwest and south. The ML-delineated high-potential zones demonstrated remarkable congruence with GRACE/GLDAS-derived groundwater storage trends, revealing significant recharge (+4.41 mm· yr⁻¹, 2003–2023) without dataset integration. This independent validation, emerging from methodologically distinct approaches, robustly confirmed the active recharge dynamics of the basin. By leveraging ML alongside satellite hydrology, we established a scalable framework for resolving hydrogeological complexities in data-scarce regions, with direct implications for evidence-based groundwater governance and regional water security. • Random Forest algorithms achieve 91 % accuracy in groundwater potential mapping. • Rainfall is identified as the key predictor in the model. • GRACE/GLDAS data integration reveals a 2.3 cm/year groundwater storage increase post-2015 infrastructure changes. • Machine learning algorithm enhances prediction accuracy in complex hydrogeological systems.
  • Green manure substitution reduces carbon and nitrogen footprints and improves net ecosystem economic benefits in double rice systems
    Nano Alemu Daba, Jing Huang, Md Ashraful Alam, Jiwen Li, Zhe Shen, Kiya Adare Tadesse, Ntagisanimana Gilbert, Tianfu Han, Erana Kebede, Tsegaye Gemechu Legesse, Dongchu Li, Lisheng Liu, Huimin Zhang
    Journal of Cleaner Production, 2025
  • Associations of angular leaf spot (Pseudocercospora griseola) epidemics and yield losses in common bean as influenced by integration of variety and fungicide spray frequency
    Getachew G. Mengesha, Habtamu Terefe, Getnet Yitayih, Erana Kebede, Asnake Abera, Abu Jambo, Sultan M. Yimer
    Journal of Plant Pathology, 2025
  • Methodological Integration of Machine Learning and Geospatial Analysis for PM10 Pollution Mapping
    Kalid Hassen Yasin, Muaz Ismael Yasin, Anteneh Derribew Iguala, Tadele Bedo Gelete, Erana Kebede
    Methodsx, 2025
    Air pollution mitigation necessitates accurate spatial modelling to inform public health interventions. Traditional approaches inadequately capture complex predictor-pollutant interactions, whereas machine learning (ML) offers a superior capacity for modelling nonlinear relationships. This study compares three ML Random Forest (RF), K-Nearest Neighbors (KNN), and Naïve Bayes (NB) algorithms using annual PM 10 data from 11 monitoring stations alongside atmospheric, urban, and terrain covariates. The methodological framework employed rigorous preprocessing and cross-validation to classify pollution into three categorical levels. Results demonstrate RF superior performance, achieving 94% balanced accuracy and 97% specificity, significantly outperforming KNN (92%) and NB (89%). RF excelled in capturing spatial heterogeneity and complex variable interactions, while KNN and NB exhibited limitations in managing feature dependencies and localized variability. Despite computational demands, findings substantiate RF reliability for robust air quality monitoring applications. The study contributes valuable insights for implementing scalable pollution prediction systems in resource-constrained urban environments while acknowledging interpretability challenges inherent to complex ML models. • Preprocessing of spatial data from various sources, incorporating the handling of missing/abnormal data, analysis, and normalization • Implementation of the three ML algorithms with rigorous hyperparameter tuning, model validation, and performance assessment • Mapping PM 10 Hotspots on the Gradient Direction and Distance from the City Center
  • Predictive machine learning and geospatial modeling reveal PM10 hotspots and guide targeted air pollution interventions in Addis Ababa, Ethiopia
    Kalid Hassen Yasin, Muaz Ismael Yasin, Anteneh Derribew Iguala, Tadele Bedo Gelete, Diriba Tulu, Erana Kebede
    Discover Applied Sciences, 2025
    Air pollution is a critical twenty-first century environmental and public health challenge that is linked to millions of deaths and ecological harm. Accurate prediction of pollutants such as PM10 is vital for mitigation and urban sustainability. This study combines geospatial modeling with three machine learning algorithms (MLAs), Random Forest (RF), K-Nearest Neighbor (KNN), and Naïve Bayes (NB), to identify PM10 hotspots in Addis Ababa, Ethiopia. PM10 data from 11 stations (August 2021–August 2023) were analyzed alongside 25 atmospheric, climatic, anthropogenic, and pollution source predictors. A concentric zonal approach was used to assess spatial variability across radial distances and directional sectors and was supported by 30 m-resolution satellite imagery, climate data, and local geospatial repositories. The model accuracies were 0.95 (KNN), 0.93 (RF), and 0.88 (NB), with distinct performance trade-offs: RF predicted the largest “Good” PM10 zones (78.98 km2), KNN highlighted the most “UnHealSen” areas (279 km2), and NB predict “Moderate” coverage (311 km2). High PM10 concentrations clustered in eastern and northwestern sectors, aligning with industrial zones and traffic density. The results demonstrate the efficacy of MLAs and geospatial integration in producing high-resolution pollution maps. We advocate for targeted emission controls in hotspots, expanding public transit to reduce vehicular emissions, and incorporating air quality metrics into urban planning. This study advances air quality assessment methods for rapidly urbanizing regions, providing data-driven strategies to combat pollution and enhance ecological resilience in African cities.
  • Optimum plant density and inorganic fertilizer application improved selected soil chemical properties and common bean productivity in southern Ethiopia
    Demissie Alemayehu, Deressa Shumi, Erana Kebede, Nano Alemu Daba, Nigussie Dechassa
    Agrosystems Geosciences and Environment, 2025
    Poor soil fertility and inappropriate plant density are the major factors that constrain the productivity of common bean (Phaseolus vulgaris L.) in tropical Africa, including Ethiopia. This problem necessitates improving soil fertility and optimizing agronomic practices. Therefore, we conducted field experiments from 2019 to 2021, integrating plant density and multinutrient fertilizer application to improve soil properties and common bean productivity in southern Ethiopia. The treatments included four plant densities (333,300 plants ha−1, 250,000 plants ha−1, 200,000 plants ha−1, and 166,600 plants ha−1) and five fertilizer rates (0, 50, 100, 150, and 200 kg NPS ha−1). The application of NPS fertilizer reduced the soil pH while increasing the soil organic carbon, total nitrogen, and available sulfur and phosphorus contents but did not affect the cation exchange capacity. Similarly, at the lowest plant density, the available soil sulfur and cation exchange capacity improved. Increasing the NPS application increased common bean growth and yield components, particularly when the plant density was the lowest. An optimum grain yield of 3056.28 kg ha−1 was obtained with the application of 150 kg NPS ha−1 and a plant density of 200,000 plants ha−1, with a net return of 80,132.56 ETB ha−1 and a marginal return rate of 4169.10%. It was concluded that applying 150 kg of NPS at a common bean plant density of 200,000 ha−1 resulted in an optimum grain yield. Using the stated amount of NPS and optimizing the density in the study area, smallholder farmers can improve common bean productivity and soil organic carbon, total nitrogen, sulfur, and phosphorus availability.
  • Green manure substitution for chemical nitrogen reduces greenhouse gas emissions and enhances yield and nitrogen uptake in rice[sbnd]rice cropping systems
    Nano Alemu Daba, Jing Huang, Zhe Shen, Tianfu Han, Md Ashraful Alam, Jiwen Li, Kiya Adare Tadesse, Ntagisanimana Gilbert, Erana Kebede, Tsegaye Gemechu Legesse, Shujun Liu, Lisheng Liu, Kailou Liu, Huimin Zhang
    Field Crops Research, 2025
    Although nitrogen (N) is important for rice growth, its excessive use can have negative environmental effects, such as greenhouse gas (GHG) emissions. Thus, sustainable and eco-friendly rice production demands precise N management strategies. This includes the use of milk-vetch (MV) as a green manure (GM) for substitution. However, how GM substitution for chemical N fertilizer (NF) affects yield, uptake, methane (CH 4 ) emissions, nitrous oxide (N 2 O) emissions and related microbial mechanisms in rice rice cropping systems remains poorly understood. The present study aimed to (i) investigate the effects of MV substitution for NF on grain yield, N uptake, and emissions of CH 4 , N 2 O, and GHG intensity; (ii) comparatively analyze the mechanistic effects of major microbial associated with CH 4 and N 2 O emissions under MV substitution for NF; and (iii) identify the optimal substitution level of NF by MV for mitigating GHG emission intensity while improving crop N uptake and yield in rice rice cropping systems. To address the aforementioned knowledge gap, we conducted a two-year field experiment based on a long-term study established in 2008. Six treatments, i.e., no fertilizer (N0), farmers’ N practice (N100), N100 and MV (N100MV), 80 % N100 and MV (N80MV), 60 % N100 and MV (N60MV) and only MV, were set up in a randomized complete block design in triplicate. Compared with the other treatments, N80MV significantly increased early and late rice yields, with its average N uptake exceeding that of N100, N100MV, N60MV, and MV by 126.3 %, 88.3 %, 54.2 %, and 31.5 %, respectively. The relative yield was strongly related to the N nutrition index (NNI), with the highest mean NNI values of 1.08 and 1.01 observed in N80MV during the early and late rice seasons, respectively. These findings identify N80MV as the optimal fertilization strategy for increasing both N nutrition and productivity. The balance between the mcr A and pmo A genes as well as between carbon (C) and N played a major role in explaining the variation in CH 4 emissions, whereas ammonia oxidation , the C:N ratio, available N, and the nir K gene played key roles in controlling N 2 O emissions. The moderate GWP and relatively high grain yield resulting from N80MV led to the mitigation of GHG emission intensity. The effectiveness of MV substitution for NF in mitigating GHG emissions while improving yield and N uptake in rice rice cropping systems can vary considerably on the basis of the NF levels substituted by MV. We suggest that substituting MV for 20 % N100 is a viable fertilization strategy not only for mitigating the GHG intensity but also for simultaneously improving yield and N uptake in rice rice cropping systems. Our findings have direct implications for extending our understanding of the dynamics of CH 4 and N 2 O emissions, along with their associated drivers, when GM substitutes for NF in rice rice cropping systems. • CH 4 emissions most driven by C/N and mcr A/ pmo A ratios. • N 2 O emissions were primarily controlled by Ammonia oxidation, available N, and nir K gene. • Full milk-vetch substitution raised CH 4 and lowered N 2 O; farmers’ N practice did opposite. • Milk-vetch substituted for 20 % chemical N-fertilizer decreased greenhouse gas intensity, while increasing yield and N-uptake.
  • Optimal interpolation approach for groundwater depth estimation
    Kalid Hassen Yasin, Tadele Bedo Gelete, Anteneh Derribew Iguala, Erana Kebede
    Methodsx, 2024
  • Vermicompost and bactericide application minimized common bacterial blight development and enhanced nodulation and agronomic performances of bean varieties in Southern Ethiopia
    Habtamu Terefe, Getachew G. Mengesha, Asinake Abera, Erana Kebede, Getnet Yitayih
    Agrosystems Geosciences and Environment, 2024
  • Integrated machine learning and geospatial analysis enhanced gully erosion susceptibility modeling in the Erer watershed in Eastern Ethiopia
    Tadele Bedo Gelete, Pernaidu Pasala, Nigus Gebremedhn Abay, Gezahegn Weldu Woldemariam, Kalid Hassen Yasin, Erana Kebede, Ibsa Aliyi
    Frontiers in Environmental Science, 2024
  • Integrating multiple soil management practices: A system-wide approach for restoring degraded soil and improving Brachiaria productivity
    Tekalegn Gutema, Erana Kebede, Hirpa Legesse, Tarekegn Fite
    Agrosystems Geosciences and Environment, 2023
  • Sugarcane productivity and sugar yield improvement: Selecting variety, nitrogen fertilizer rate, and bioregulator as a first-line treatment
    Belete Desalegn, Erana Kebede, Hirpa Legesse, Tarekegn Fite
    Heliyon, 2023
  • Contribution of Climate-Smart Forage and Fodder Production for Sustainable Livestock Production and Environment: Lessons and Challenges from Ethiopia
    Diriba Tulu, Sileshi Gadissa, Feyisa Hundessa, Erana Kebede
    Advances in Agriculture, 2023
  • Endophytic fungi: versatile partners for pest biocontrol, growth promotion, and climate change resilience in plants
    Tarekegn Fite, Erana Kebede, Tadele Tefera, Zelalem Bekeko
    Frontiers in Sustainable Food Systems, 2023
  • Nodulation potential and phenotypic diversity of rhizobia nodulating cowpea isolated from major growing areas of Ethiopia
    Erana Kebede, Berhanu Amsalu, Anteneh Argaw, Solomon Tamiru
    Agrosystems Geosciences and Environment, 2022
  • Contribution, Utilization, and Improvement of Legumes-Driven Biological Nitrogen Fixation in Agricultural Systems
    Erana Kebede
    Frontiers in Sustainable Food Systems, 2021
  • Competency of Rhizobial Inoculation in Sustainable Agricultural Production and Biocontrol of Plant Diseases
    Erana Kebede
    Frontiers in Sustainable Food Systems, 2021
  • Abundance of native rhizobia nodulating cowpea in major production areas of Ethiopia as influenced by cropping history and soil properties
    Erana Kebede, Berhanu Amsalu, Anteneh Argaw, Solomon Tamiru
    Sustainable Environment, 2021
  • Grain legumes production and productivity in Ethiopian smallholder agricultural system, contribution to livelihoods and the way forward
    Erana Kebede
    Cogent Food and Agriculture, 2020
  • Expounding the production and importance of cowpea (Vigna unguiculata (L.) Walp.) in Ethiopia
    Erana Kebede, Zelalem Bekeko
    Cogent Food and Agriculture, 2020
  • Symbiotic effectiveness of cowpea (Vigna unguiculata (L.) Walp.) nodulating rhizobia isolated from soils of major cowpea producing areas in Ethiopia
    Erana Kebede, Berhanu Amsalu, Anteneh Argaw, Solomon Tamiru
    Cogent Food and Agriculture, 2020

RECENT SCHOLAR PUBLICATIONS

  • Random Forest-Based Species Distribution Modeling Reveals Intensifying Multi-Species Invasion Risks of Alien Plants in Ethiopia Under Climate Change
    KH Yasin, D Tulu, TB Gelete, BA Yuya, AD Iguala, KA Tadesse, E Kebede
    Remote Sensing Applications: Society and Environment, 101869 , 2026
    2026
    Citations: 1
  • Green manure and rice straw recycling: A triple-win for productivity, environmental sustainability and net ecosystem economic benefit
    NA Daba, J Huang, MA Alam, N Gilbert, KA Tadesse, I Ahmed, ...
    Journal of Environmental Management 397, 128381 , 2026
    2026
  • Production practices and agronomic approaches of Khat (Catha edulis Forsk) in eastern Ethiopia
    A Hassen, Z Bekeko, A Mohammed, M Goftishu, T Fite, E Kebede, ...
    2025
  • Machine learning predictions of climate change effects on nearly threatened bird species ( Crithagra xantholaema) habitat in Ethiopia for conservation strategies
    TB Gelete, D Tulu, KH Yasin, E Kebede
    Scientific Reports 15 (1), 36972 , 2025
    2025
    Citations: 2
  • Advanced geospatial and machine learning models identify groundwater potential and reveal storage dynamics in Ethiopia’s Abbay River basin
    KH Yasin, TB Gelete, E Kebede, AD Iguala, MY Abdo
    Journal of Hydrology: Regional Studies 61, 102762 , 2025
    2025
    Citations: 2
  • Green manure substitution reduces carbon and nitrogen footprints and improves net ecosystem economic benefits in double rice systems
    NA Daba, J Huang, MA Alam, J Li, Z Shen, KA Tadesse, N Gilbert, T Han, ...
    Journal of Cleaner Production 521, 146266 , 2025
    2025
    Citations: 7
  • Associations of angular leaf spot ( Pseudocercospora griseola ) epidemics and yield losses in common bean as influenced by integration of variety and fungicide …
    GG Mengesha, H Terefe, G Yitayih, E Kebede, A Abera, A Jambo, ...
    Journal of Plant Pathology 107 (3), 1343-1361 , 2025
    2025
    Citations: 2
  • Methodological integration of machine learning and Geospatial analysis for PM10 pollution mapping
    KH Yasin, MI Yasin, AD Iguala, TB Gelete, E Kebede
    MethodsX 14, 103322 , 2025
    2025
    Citations: 5
  • Predictive machine learning and geospatial modeling reveal PM 10 hotspots and guide targeted air pollution interventions in Addis Ababa, Ethiopia
    KH Yasin, MI Yasin, AD Iguala, TB Gelete, D Tulu, E Kebede
    Discover Applied Sciences 7 (4), 263 , 2025
    2025
    Citations: 11
  • Optimum plant density and inorganic fertilizer application improved selected soil chemical properties and common bean productivity in southern Ethiopia
    D Alemayehu, D Shumi, E Kebede, NA Daba, N Dechassa
    Agrosystems, Geosciences & Environment 8 (1), e70079 , 2025
    2025
    Citations: 2
  • Green manure substitution for chemical nitrogen reduces greenhouse gas emissions and enhances yield and nitrogen uptake in rice-rice cropping systems
    NA Daba, J Huang, Z Shen, T Han, MA Alam, J Li, KA Tadesse, N Gilbert, ...
    Field Crops Research 322, 109715 , 2025
    2025
    Citations: 22
  • Optimal interpolation approach for groundwater depth estimation
    KH Yasin, TB Gelete, AD Iguala, E Kebede
    MethodsX 13, 102916 , 2024
    2024
    Citations: 20
  • Biostimulants for climate-smart and sustainable agriculture
    M Baslam, M Anli, JS Patel, DL Smith
    Frontiers in Sustainable Food Systems, 102 , 2024
    2024
  • Vermicompost and bactericide application minimized common bacterial blight development and enhanced nodulation and agronomic performances of bean varieties in Southern Ethiopia
    H Terefe, GG Mengesha, A Abera, E Kebede, G Yitayih
    Agrosystems, Geosciences & Environment 7 (1), e20465 , 2024
    2024
    Citations: 6
  • Integrated Machine Learning and Geospatial Analysis Enhanced Gully Erosion Susceptibility Modeling in the Erer Watershed in Eastern Ethiopia
    TB Gelete, P Pasala, NG Abay, GW Woldemariam, KH Yasin, E Kebede, ...
    Frontiers in Environmental Science 12, 1410741 , 2024
    2024
    Citations: 27
  • Nitrogen use to improve sustainable yields in agricultural systems
    E Kebede
    Nitrogen use to improve sustainable yields in agricultural systems, 16 , 2023
    2023
    Citations: 2
  • Integrating multiple soil management practices: A system‐wide approach for restoring degraded soil and improving Brachiaria productivity
    T Gutema, E Kebede, H Legesse, T Fite
    Agrosystems, Geosciences & Environment 6 (2), e20360 , 2023
    2023
    Citations: 7
  • Sugarcane productivity and sugar yield improvement: Selecting variety, nitrogen fertilizer rate, and bioregulator as a first-line treatment
    B Desalegn, E Kebede, H Legesse, T Fite
    Heliyon 9 (4) , 2023
    2023
    Citations: 67
  • Endophytic fungi: versatile partners for pest biocontrol, growth promotion, and climate change resilience in plants
    T Fite, E Kebede, T Tefera, Z Bekeko
    Frontiers in Sustainable Food Systems 7, 1322861 , 2023
    2023
    Citations: 49
  • Contribution of climate‐smart forage and fodder production for sustainable livestock production and environment: Lessons and challenges from Ethiopia
    D Tulu, S Gadissa, F Hundessa, E Kebede
    Advances in agriculture 2023 (1), 8067776 , 2023
    2023
    Citations: 74

MOST CITED SCHOLAR PUBLICATIONS

  • Contribution, Utilization, and Improvement of Legumes-Driven Biological Nitrogen Fixation in Agricultural Systems
    E Kebede
    Frontiers in Sustainable Food Systems 5 (767998), 1-18 , 2021
    2021
    Citations: 484
  • Grain legumes production and productivity in Ethiopian smallholder agricultural system, contribution to livelihoods and the way forward
    E Kebede
    Cogent Food & Agriculture 6 (1), 1722353 , 2020
    2020
    Citations: 191
  • Expounding the production and importance of cowpea ( Vigna unguiculata (L.) Walp.) in Ethiopia
    E Kebede, Z Bekeko
    Cogent Food & Agriculture 6 (1), 1769805 , 2020
    2020
    Citations: 188
  • Contribution of climate‐smart forage and fodder production for sustainable livestock production and environment: Lessons and challenges from Ethiopia
    D Tulu, S Gadissa, F Hundessa, E Kebede
    Advances in agriculture 2023 (1), 8067776 , 2023
    2023
    Citations: 74
  • Competency of rhizobial inoculation in sustainable agricultural production and biocontrol of plant diseases
    E Kebede
    Frontiers in Sustainable Food Systems 5, 728014 , 2021
    2021
    Citations: 70
  • Sugarcane productivity and sugar yield improvement: Selecting variety, nitrogen fertilizer rate, and bioregulator as a first-line treatment
    B Desalegn, E Kebede, H Legesse, T Fite
    Heliyon 9 (4) , 2023
    2023
    Citations: 67
  • Endophytic fungi: versatile partners for pest biocontrol, growth promotion, and climate change resilience in plants
    T Fite, E Kebede, T Tefera, Z Bekeko
    Frontiers in Sustainable Food Systems 7, 1322861 , 2023
    2023
    Citations: 49
  • Grain legumes production in Ethiopia: A review of adoption, opportunities, constraints and emphases for future interventions
    EK Neda
    Turkish Journal of Agriculture-Food Science and Technology 8 (4), 977-989 , 2020
    2020
    Citations: 46
  • Contribution, utilization, and improvement of legumes-driven biological nitrogen fixation in agricultural systems. Front Sustain Food Syst 5: 767998
    E Kebede
    Frontiers in Sustainable Food Systems , 2021
    2021
    Citations: 35
  • Integrated Machine Learning and Geospatial Analysis Enhanced Gully Erosion Susceptibility Modeling in the Erer Watershed in Eastern Ethiopia
    TB Gelete, P Pasala, NG Abay, GW Woldemariam, KH Yasin, E Kebede, ...
    Frontiers in Environmental Science 12, 1410741 , 2024
    2024
    Citations: 27
  • Symbiotic effectiveness of cowpea ( Vigna unguiculata (L.) Walp.) nodulating rhizobia isolated from soils of major cowpea producing areas in Ethiopia
    E Kebede, B Amsalu, A Argaw, S Tamiru
    Cogent Food & Agriculture 6 (1), 1763648 , 2020
    2020
    Citations: 27
  • Green manure substitution for chemical nitrogen reduces greenhouse gas emissions and enhances yield and nitrogen uptake in rice-rice cropping systems
    NA Daba, J Huang, Z Shen, T Han, MA Alam, J Li, KA Tadesse, N Gilbert, ...
    Field Crops Research 322, 109715 , 2025
    2025
    Citations: 22
  • Optimal interpolation approach for groundwater depth estimation
    KH Yasin, TB Gelete, AD Iguala, E Kebede
    MethodsX 13, 102916 , 2024
    2024
    Citations: 20
  • Eco-physiological and physiological characterization of cowpea nodulating native rhizobia isolated from major production areas of Ethiopia
    E Kebede, B Amsalu, A Argaw, S Tamiru
    Cogent Biology 6 (1), 1875672 , 2020
    2020
    Citations: 13
  • Predictive machine learning and geospatial modeling reveal PM 10 hotspots and guide targeted air pollution interventions in Addis Ababa, Ethiopia
    KH Yasin, MI Yasin, AD Iguala, TB Gelete, D Tulu, E Kebede
    Discover Applied Sciences 7 (4), 263 , 2025
    2025
    Citations: 11
  • Abundance of native rhizobia nodulating cowpea in major production areas of Ethiopia as influenced by cropping history and soil properties
    E Kebede, B Amsalu, A Argaw, S Tamiru
    Sustainable Environment 7 (1), 1889084 , 2021
    2021
    Citations: 10
  • Green manure substitution reduces carbon and nitrogen footprints and improves net ecosystem economic benefits in double rice systems
    NA Daba, J Huang, MA Alam, J Li, Z Shen, KA Tadesse, N Gilbert, T Han, ...
    Journal of Cleaner Production 521, 146266 , 2025
    2025
    Citations: 7
  • Integrating multiple soil management practices: A system‐wide approach for restoring degraded soil and improving Brachiaria productivity
    T Gutema, E Kebede, H Legesse, T Fite
    Agrosystems, Geosciences & Environment 6 (2), e20360 , 2023
    2023
    Citations: 7
  • Nodulation potential and phenotypic diversity of rhizobia nodulating cowpea isolated from major growing areas of Ethiopia
    E Kebede, B Amsalu, A Argaw, S Tamiru
    Agrosystems, Geosciences & Environment 5 (4), e20308 , 2022
    2022
    Citations: 7
  • Vermicompost and bactericide application minimized common bacterial blight development and enhanced nodulation and agronomic performances of bean varieties in Southern Ethiopia
    H Terefe, GG Mengesha, A Abera, E Kebede, G Yitayih
    Agrosystems, Geosciences & Environment 7 (1), e20465 , 2024
    2024
    Citations: 6