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PhD Studentship: Predicting and managing the recovery of tropical forests

Employer
Global Academy Jobs
Location
United Kingdom
Closing date
Jan 9, 2017

Job Details

Details

Background: The majority of the Earth’s tropical forests have been logged at some point. Recovery of forests following logging is however poorly understood. To better manage forests in the future, we, therefore, need data that will allow us to predict how forests recover, as well as to understand what limits recovery.

It is increasingly recognised that a major limitation on recovery is the growth of epiphytic lianas: recent estimates suggest that these can comprise up to 20% of the biomass of formerly logged forests. They inhibit tree growth, prevent seedling recruitment and increase tree mortality. To facilitate forest recovery, large-scale liana cutting programmes have been initiated in many forests. However, the long-term effectiveness of these is poorly understood. In this project, we aim to develop data-driven modelling tools that allow us to predict long-term outcomes.

Timeliness: The work is timely given the increasing interest in both understanding the role of forests in carbon capture, as well as predicting what future forests will look like. Our project is novel in linking experimental manipulations to predictive models.

Objectives: The overall aim of the project is to collect data that will allow us to develop models that can be used to predict how forests will recover under different management regimes (e.g. removing epiphytes).

(1) Set up a series of experimental plots in which species composition and tree / seedling size are measured in experimental plots in which lianas are removed as well as controls in which they remain. We will use a protocol developed by RF and DE in 2016.
(2) Analyse the data to estimate carbon stocks, tree growth and survival, and how these change immediately following removal.
(3) Using the long-term information on forest management, we will analyse forest structure in areas cleared of lianas in the past 20 years. Information on past clearance is available from the INFAPRO project in Borneo; we will resurvey areas previously cleared.
(4) Develop models predicting forest structure in terms of size and composition.

Person specification: The project has a significant field component in tropical forests, so we are looking for someone who enjoys spending time in the field. You will be working as part of a team so communication skills are important. Academically we are looking for a background in ecology, conservation and ideally with some training in statistics (familiarity with R would be ideal). Modelling is part of the project objectives and training will be provided in this, as well as in advanced statistics and field techniques relevant to the project.

Suggested Reading:
Gilroy JJ, Woodcock P, Edwards FA, Wheeler CE, Baptiste BLG, Medina CA, Haugaasen T, Edwards DP (2014) Cheap carbon and biodiversity co-benefits from forest regeneration in a hotspot of endemism. Nature Climate Change 4: 503-507
Magnago LFS, Magrach A, Barlow J, Goncalves CE, Schaefer R, Laurance WF, Martins SV, Edwards DP. Fragment size and edge effects predict carbon stocks in trees and lianas in tropical forests. Functional Ecology in press
Magrach A, Senior R, Rogers A, Nurdin D, Benedick S, Laurance WF, Santamaria L, Edwards DP (2016) Selective logging in tropical forests decreases the robustness of liana-tree interaction networks to the loss of host tree species. Proceedings of the Royal Society B 283: 20153008.

 

Funding Notes

Fully funded for a minimum of 3.5 years, studentships cover: (i) a tax-free stipend at the standard Research Council rate (at least £14,296 per annum for 2017-2018), (ii) research costs, and (iii) tuition fees at the UK/EU rate. Studentship(s) are available to UK and EU students who meet the UK residency requirements. Students from EU countries who do not meet residency requirements may still be eligible for a fees-only award.

 

References

This PhD project is part of the NERC funded Doctoral Training Partnership “ACCE” (Adapting to the Challenges of a Changing Environment). This is a partnership between the Universities of Sheffield, Liverpool, York and the Centre for Ecology and Hydrology.
Selection process: Shortlisting will take place as soon as possible after the closing date and successful applicants will be notified promptly. Shortlisted applicants will be invited for an interview to take place at the University of Sheffield the w/c 13th February 2017.

Company

Global Academy Jobs works with over 250 universities worldwide to promote academic mobility and international research collaboration. Global problems need international solutions. Our jobs board and emails reach the academics and researchers who can help.

"The globalisation of higher education continues apace, driving in turn the ongoing development of the global knowledge economy, striving for solutions to the world’s problems and educating a next generation of leaders and contributors."

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