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Spatial Interpolation and Conditional Map Generation Using Deep Image Prior for Environmental Applications
Mathematical Geosciences,
2024
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A risk-based approach for accurately delineating the extent of soil contamination: The role of additional sampling in transition zones
Science of The Total Environment,
2024
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Reconstructing high-resolution groundwater level data using a hybrid random forest model to quantify distributed groundwater changes in the Indus Basin
Journal of Hydrology,
2024
DOI:10.1016/j.jhydrol.2023.130535
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Digital mapping of indicators that determine the sorption properties of soils in relation to pollutants, according to remote sensing data of the Earth using machine learning
Georesursy,
2022
DOI:10.18599/grs.2022.1.8
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Applying optimization algorithms for spatial estimation of travel demand variables
Transportation Research Interdisciplinary Perspectives,
2021
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Co-remediation of Pb Contaminated Soils by Heat Modified Sawdust and Festuca arundinacea
Scientific Reports,
2020
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Co-remediation of Pb Contaminated Soils by Heat Modified Sawdust and Festuca arundinacea
Scientific Reports,
2020
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COMPARISON OF DIFFERENT INTERPOLATION TECHNIQUES IN DETERMINING OF AGRICULTURAL SOIL INDEX ON LAND CONSOLIDATION PROJECTS
International Journal of Engineering and Geosciences,
2019
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Comparison of different interpolation techniques in determining of agricultural soil index on land consolidation projects
International Journal of Engineering and Geosciences,
2019
DOI:10.26833/ijeg.422570
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Spatial modelling of hazardous elements at waste dumps using geostatistical approach: a case study Sarcheshmeh copper mine, Iran
Environmental Earth Sciences,
2017
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Resource-constrained decentralized active sensing for multi-robot systems using distributed Gaussian processes
2016 16th International Conference on Control, Automation and Systems (ICCAS),
2016
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