Accounting for uncertainty in marine ecosystem service predictions for spatial prioritisation

Author:

Rullens Vera1ORCID,Stephenson Fabrice12ORCID,Townsend Michael3,Lohrer Andrew M.4,Hewitt Judi E.56,Pilditch Conrad A.1,Ellis Joanne I.7

Affiliation:

1. School of Science University of Waikato Hamilton New Zealand

2. School of Natural and Environment Sciences Newcastle University Newcastle upon Tyne UK

3. Waikato Regional Council Hamilton New Zealand

4. National Institute for Water and Atmospheric Research Hamilton New Zealand

5. Department of Statistics University of Auckland Auckland New Zealand

6. Tvarminne Field Station University of Helsinki Helsinki Finland

7. School of Science University of Waikato Tauranga New Zealand

Abstract

AbstractAimSpatial assessments of Ecosystem Services (ES) are increasingly used in environmental management, but rarely provide information on the prediction accuracy. Uncertainty estimates are essential to provide confidence in the quality and credibility of ES assessments for informed decision making. In marine environments, the need for uncertainty assessments for ES is unparalleled as they are data scarce, poorly (spatially) defined, with complex interconnectivity of seascapes. This study illustrates the uncertainty associated with a principle‐based method for ES modelling by accounting for model variability, data coverage and uncertainty in thresholds and parameters.LocationTauranga, New Zealand.MethodsA sensitivity analysis was applied on ES models for marine bivalves (Austrovenus stutchburyi and Paphies australis) and their contribution to Food provision, Water quality regulation, Nitrogen removal and Sediment stabilisation. ES estimates from the sensitivity analysis were compared against baseline ES predictions. Spatial uncertainty patterns were analysed for individual ES through bi‐plots and multiple ES through spatial prioritisation using Zonation.ResultsOur study showed spatially explicit differences in uncertainty patterns for ES and between species. Food provision had highest maximum uncertainty (>5 points) but also the largest area of high ES and high certainty conditions. Zonation analysis conducted on baseline and conservative ES values showed overall robust outcomes of top 30% area, but important nuances through shifts in top 5% and 10% areas that allowed for a consistently better representation of ES when accounting for uncertainty.Main ConclusionsThe spatial prioritisation in combination with the ES uncertainty biplots provide tools for spatial planning of individual and multiple ES to focus on area of highest value with highest certainty and can thereby help reduce risk and aid decision‐making at acceptable confidence levels. This type of information is urgently needed in marine ES assessments and their management, but likewise extends to other environments to improve transparency.

Funder

Ministry of Business, Innovation and Employment

Publisher

Wiley

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