Abstract
Hydro-climatic (HC) models have complex environments due to the integration of hydrological processes and climate indices for the assessment of historical and future scenarios. The approximation of HC models leads to a major uncertainty in the selection of optimal methods for processing, enhancement, and assessment. The present work developed a User-Friendly Interface (UI) in the R programming platform to enhance the geospatial HC models using machine learning concepts. Here, UI complies with various technologies together to perform consistently with input control, processing, and visualization. To validate this interface, a snow-dominated alpine watershed was selected. The results showed that, (a) UI assisted to downscale of the future climatic data into finer resolution, (b) boosted the efficiency of the geospatial model by adaptive random forest regression with NSE = 0.92 and 0.84, respectively. Moreover, UI designed to apply for different geospatial optimization problems which assist academicians, scientists, decision-makers, planners, and stakeholders, etc.
Acknowledgements
The authors are grateful to the editor, and the two anonymous reviewers for their valuable comments. Authors special thanks to Parthiban L, Abhinav Wadhwa, and Suresh Devaraj for delivering valuable suggestions. We also thank the Centre for Disaster Mitigation and Management (CDMM), Vellore Institute of Technology for providing the lab resources.
Disclosure statement
No conflict of interest.