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Environmental Science and Pollution Research International
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January 17, 2024
Monitoring land subsidence in the Peshawar District, Pakistan, with a multi-track PS-InSAR technique
Muhammad Afaq Hussain, Zhanlong Chen, Junaid Khan
Scientific Reports
|
March 30, 2022
Sentinel-1A for monitoring land subsidence of coastal city of Pakistan using Persistent Scatterers In-SAR technique
Muhammad Afaq Hussain, Zhanlong Chen, Muhammad Shoaib, et al.
Sensors (Basel, Switzerland)
|
May 20, 2022
Landslide Susceptibility Mapping Using Machine Learning Algorithm Validated by Persistent Scatterer In-SAR Technique
Muhammad Afaq Hussain, Zhanlong Chen, Ying Zheng, et al.
Environmental Geochemistry and Health
|
April 7, 2026
Integrated approach for arsenic prediction and health risk evaluation in community tube wells installed by public health department: comparative study of random forest, extreme gradient boosting, and deep neural networks
Ibad Ullah, Sebnem Arslan, Zahid Ullah, et al.
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of 1
Search research articles
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Showing results (1-10 of 4) with videos related to
Sort By:
Page
of 1
Environmental Science and Pollution Research International
|
January 17, 2024
Monitoring land subsidence in the Peshawar District, Pakistan, with a multi-track PS-InSAR technique
Muhammad Afaq Hussain, Zhanlong Chen, Junaid Khan
Scientific Reports
|
March 30, 2022
Sentinel-1A for monitoring land subsidence of coastal city of Pakistan using Persistent Scatterers In-SAR technique
Muhammad Afaq Hussain, Zhanlong Chen, Muhammad Shoaib, et al.
Sensors (Basel, Switzerland)
|
May 20, 2022
Landslide Susceptibility Mapping Using Machine Learning Algorithm Validated by Persistent Scatterer In-SAR Technique
Muhammad Afaq Hussain, Zhanlong Chen, Ying Zheng, et al.
Environmental Geochemistry and Health
|
April 7, 2026
Integrated approach for arsenic prediction and health risk evaluation in community tube wells installed by public health department: comparative study of random forest, extreme gradient boosting, and deep neural networks
Ibad Ullah, Sebnem Arslan, Zahid Ullah, et al.
Page
of 1