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  Simulating evolving snow proceses in the changing climate of High Mountain Asia


   Faculty of Science, Agriculture and Engineering

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  Dr N Forsythe  No more applications being accepted  Competition Funded PhD Project (European/UK Students Only)

About the Project

This project is part of the ONE Planet DTP. Find out more here: https://research.ncl.ac.uk/one-planet/

River flows originating in High Mountain Asia (HMA) – i.e. the Himalaya and Tibetan Plateau -- support the livelihoods of hundreds of millions of people. How these river flows might evolve in a warming climate depends in large part on changes in snowfall and snow processes. As well as providing a large fraction of river flows in vital basins, HMA snowpacks strongly influence regional climate through land-atmosphere feedbacks. While an increasing number of studies have focused on Himalayan glaciers, little is known about the region’s snow, how it varies in space and time, and how it might change in the future.
Most modelling efforts to date have adopted relatively simple empirical approaches, which fit with the region’s data paucity, but offer relatively little insight into underlying physical processes. In conjunction with increasing computing power, new data products from remote sensing and high resolution climate modelling offer the possibility to deploy process-based modelling to improve understanding of HMA snow processes and their future trajectories. To this end, this project will draw upon observational datasets from both in-situ monitoring and remote sensing sources to evaluate and refine representation of snow processes in couple atmospheric-land surface process dynamical downscaling models such as WRF and ICAR. Enhanced high-resolution models will be driven using boundary conditions from large ensembles of global climate model, e.g. the HighResMIP component of CMIP6, to explore uncertainty in projections of future HMA hydroclimate. Through this project the student will develop transferable skills in synthesis of independent data sources and work with leading international research hubs (e.g. ICIMOD).

This project would suit a candidate with a broad background in any combination of civil engineering (water resources emphasis), physical geography, geoscience, maths, physics and computational sciences.
For more information, please contact Dr Nathan Forsythe ([Email Address Removed]).


Funding Notes

Fully funded (3.5 years) PhD studentship awards available for entry September 2019. Each award includes fees (Home/EU), an annual living allowance (£14,777) and a Research Training Support Grant (for travel, consumables, as required).