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  Ecological risk assessment and food webs: identifying ecosystem tipping points under multistress


   School of Biosciences

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  Prof Dylan Childs, Prof L L Maltby, Prof A Beckerman  No more applications being accepted  Funded PhD Project (Students Worldwide)

About the Project

Predicting the response of ecological systems to environmental change is hampered by their inherent complexity and a lack of long-term, high-resolution data. One area where this challenge is particularly acute is ecological risk assessment (ERA), where there is a pressing need to scale from our knowledge of chemical impacts on individual organisms to implications for community and ecosystem processes. Predictive models may serve to bridge this knowledge gap. However, building predictive models for the vast majority of ecological systems is extremely challenging because of system diversity and the array of ecosystem functions at different ecological scales. Even where such modelling is possible, current efforts remain highly system-specific. Thus, the realisable value of models in the context of ERA lies in their potential to identify generalisable phenomena.

In the domain of ecological time series analysis, one area which has seen a rapid advancement in the last decade is the field of early warning signals (EWSs). These methods infer the approaching state-change of a system through observed changes in its spatio-temporal dynamics, which can act as symptoms of declining resilience—the capacity to recover quickly from perturbations—before reaching an irreversible transition. Such approaches are phenomenological, aiming to identify general, broadly applicable signals without considering the underlying dynamics of the system or the external drivers of change (e.g. chemical stressors). Indeed, EWSs have been identified in abundance-based data, e.g. increasing autocorrelation in the population abundance; trait-based data, e.g. declining mean body size of individuals; and spatial data, e.g. increased correlation of abundances in connected patches. 

The generalisability of early warning signals gives hope that they can act as a prioritisation tool to identify the characteristics that make systems particularly vulnerable to chemical stressors (e.g. community structure or trait composition) and identify trigger points that the risk assessment should focus on. Although this approach could be a valuable risk-assessment tool, it is not yet clear how to operationalise the use of such signals. Moreover, we know relatively little about how EWSs manifest in ecological communities and ecosystem processes in the face of multiple stressors. Generating predictions about stressor-driven early warning signals in biodiverse communities requires a modelling framework that is multi-species and allows multiple stressor impacts on physiology, behaviour, survival and reproduction. The bioenergetic food web model (BEFW) is one such model.

This PhD will use the food web models (notably BEFW) to develop EWS theory for the community- and ecosystem-level processes where multiple chemical stressors are affecting multiple species. Specifically, the student will:

*Evaluate the potential for using such signals for assessment of impending resilience loss.

*Determine the robustness of these signals to different assumptions about stressor impacts and community structure.

*Identify the set of maximally informative signals of resilience loss among abundance, trait and spatial metrics.

*Assess the generality of the optimal set of signals by simulating pollutant impacts using commercially available food chain models (e.g. US EPA AQUATOX)

ACCE DTP

This PhD project, starting October 2021, is part of the NERC funded Doctoral Training Partnership “ACCE” (Adapting to the Challenges of a Changing Environment. ACCE is a partnership between the Universities of Sheffield, Liverpool, York, CEH, and NHM, for more information about ACCE and how to apply please visit https://acce.shef.ac.uk/phd-opportunities/sheffield/

Science Graduate School

As a PhD student in one of the science departments at the University of Sheffield, you’ll be part of the Science Graduate School. You’ll get access to training opportunities designed to support your career development by helping you gain professional skills that are essential in all areas of science. You’ll be able to learn how to recognise good research and research behaviour, improve your communication abilities and experience the breadth of technologies that are used in academia, industry and many related careers. Visit http://www.sheffield.ac.uk/sgs to learn more.

Unilever Partnership

The student will also have the opportunity of spending at least 3 months with experts covering broad aspects of ecological risk assessment at the Safety and Environmental Assurance Centre (SEAC) of Unilever, the CASE partner organisation.

Biological Sciences (4) Environmental Sciences (13)

Funding Notes

This is a 4-year fully-funded studentship in partnership with Unilever and is part of the NERC Doctoral Training Partnership in Adapting to the Challenges of a Changing Environment (ACCE). The studentship covers: (i) a tax-free stipend at the standard Research Council rate (£15,009 for 2019/20), (ii) tuition fees at UK rate, and (iii) research consumables and training necessary for the project.

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