Back to Search Start Over

Application of Analytical Hierarchical Process and its Variants on Remote Sensing Datasets

Authors :
Arora, Sarthak
Warner, Michael
Chamberlain, Ariel
Smoot, James C.
Deep, Nikhil Raj
Gorman, Claire
Acciavatti, Anthony
Publication Year :
2024

Abstract

The river Ganga is one of the Earth's most critically important river basins, yet it faces significant pollution challenges, making it crucial to evaluate its vulnerability for effective and targeted remediation efforts. While the Analytic Hierarchy Process (AHP) is widely regarded as the standard in decision making methodologies, uncertainties arise from its dependence on expert judgments, which can introduce subjectivity, especially when applied to remote sensing data, where expert knowledge might not fully capture spatial and spectral complexities inherent in such data. To address that, in this paper, we applied AHP alongside a suite of alternative existing and novel variants of AHP-based decision analysis on remote sensing data to assess the vulnerability of the river Ganga to pollution. We then compared the areas where the outputs of each variant may provide additional insights over AHP. Lastly, we utilized our learnings to design a composite variable to robustly define the vulnerability of the river Ganga to pollution. This approach contributes to a more comprehensive understanding of remote sensing data applications in environmental assessment, and these decision making variants can also have broader applications in other areas of environment management and sustainability, facilitating more precise and adaptable decision support frameworks.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.12113
Document Type :
Working Paper