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TY - JOUR
AU - Zuhaib Nishter ,
PY - 2026/03/28
Y2 - 2026/06/10
TI - Role of Geo informatics For Water and Resource Management
JF - `
JA - ASSAJ
VL - 5
IS - 01
SE - Articles
DO -
UR - https://www.assajournal.com/index.php/36/article/view/1552
SP - 2516-2525
AB - <p><em>Extreme climatic events pose major challenges for water and agricultural resource management due to their unpredictability and impacts. In this case, it's critical to assess these resources, project the effects, and create plans to reduce impacts and improve sustainability. The goal of this article is to provide a thorough overview of the best practices and applications of GIS technology. Firstly, employing geospatial technologies such as Geographic Information Systems (GIS), Remote Sensing (RS), and Global Positioning Systems (GPS) enables accurate spatial data collection, analysis, and visualization, facilitating informed decision-making processes. These applications include mapping water resources, measuring rainfall and runoff, forecasting floods, managing irrigation, monitoring drought conditions, and water quality. Key results demonstrate the accuracy of developed predictive models, with rigorous benchmark testing. Developing prediction models involves integrating various spatial and temporal datasets, alongside advanced analytical techniques, to forecast future trends and scenarios accurately. These models typically utilize historical data on factors such as precipitation patterns, land use, hydrological parameters, and socio-economic variables, combined with geospatial technologies like GIS and remote sensing, to generate predictive insights. Spatial analysis reveals vulnerability hotspots, directly guiding localized interventions. Ultimately, meaningful correlation with on-ground strategies underscores real-world applicability. While data limitations warrant targeted field studies, this research cements geoinformatics as essential for building resilience against intensifying climate variability.</em></p><p><strong><em>Keywords:</em></strong><em> Geoinformatics, predictive modeling, agricultural resource management, extreme climatic events, geospatial analysis</em></p>
ER -