TY - JOUR
T1 - Unlocking the Potential of Remote Sensing for Arsenic Contamination Detection and Management: Challenges and Perspectives
AU - Agarwal, Vivek
AU - Kumar, Manish
AU - Pandey, Durga Prasad
AU - Zang, Jian
AU - Munoz-Arriola, Francisco
PY - 2024/8/31
Y1 - 2024/8/31
N2 - This work explores the current status of remote sensing (RS) applications for managing global arsenic (As) pollution in water, impacting health and ecosystems. We detailed the complex, indirect relationship between remote sensing and arsenic contamination detection. Satellite imagery from Landsat, Sentinel, and Hyperion satellites are notably effective in identifying As minerals, providing a proxy for groundwater As pollution. These methods can be further enhanced by integrating GRACE satellite data on groundwater fluctuations, land use maps, and machine learning. Despite these advances in the RS technologies, challenges of data accuracy, interpretations, and ground-truthing are likely to persist. This work also adds to the narrative and the perspective of AI applications in environmental data improvement, diagnostics and prognostics for groundwater, and that further understanding of environmental complexity is needed to boost innovation in mitigating and democratizing As-related challenges.
AB - This work explores the current status of remote sensing (RS) applications for managing global arsenic (As) pollution in water, impacting health and ecosystems. We detailed the complex, indirect relationship between remote sensing and arsenic contamination detection. Satellite imagery from Landsat, Sentinel, and Hyperion satellites are notably effective in identifying As minerals, providing a proxy for groundwater As pollution. These methods can be further enhanced by integrating GRACE satellite data on groundwater fluctuations, land use maps, and machine learning. Despite these advances in the RS technologies, challenges of data accuracy, interpretations, and ground-truthing are likely to persist. This work also adds to the narrative and the perspective of AI applications in environmental data improvement, diagnostics and prognostics for groundwater, and that further understanding of environmental complexity is needed to boost innovation in mitigating and democratizing As-related challenges.
U2 - 10.1016/j.coesh.2024.100578
DO - 10.1016/j.coesh.2024.100578
M3 - Article
SN - 2468-5844
JO - Current Opinion in Environmental Science and Health
JF - Current Opinion in Environmental Science and Health
M1 - 100578
ER -