| Literature DB >> 23667454 |
David A Keith1, Jon Paul Rodríguez, Kathryn M Rodríguez-Clark, Emily Nicholson, Kaisu Aapala, Alfonso Alonso, Marianne Asmussen, Steven Bachman, Alberto Basset, Edmund G Barrow, John S Benson, Melanie J Bishop, Ronald Bonifacio, Thomas M Brooks, Mark A Burgman, Patrick Comer, Francisco A Comín, Franz Essl, Don Faber-Langendoen, Peter G Fairweather, Robert J Holdaway, Michael Jennings, Richard T Kingsford, Rebecca E Lester, Ralph Mac Nally, Michael A McCarthy, Justin Moat, María A Oliveira-Miranda, Phil Pisanu, Brigitte Poulin, Tracey J Regan, Uwe Riecken, Mark D Spalding, Sergio Zambrano-Martínez.
Abstract
An understanding of risks to biodiversity is needed for planning action to slow current rates of decline and secure ecosystem services for future human use. Although the IUCN Red List criteria provide an effective assessment protocol for species, a standard global assessment of risks to higher levels of biodiversity is currently limited. In 2008, IUCN initiated development of risk assessment criteria to support a global Red List of ecosystems. We present a new conceptual model for ecosystem risk assessment founded on a synthesis of relevant ecological theories. To support the model, we review key elements of ecosystem definition and introduce the concept of ecosystem collapse, an analogue of species extinction. The model identifies four distributional and functional symptoms of ecosystem risk as a basis for assessment criteria: A) rates of decline in ecosystem distribution; B) restricted distributions with continuing declines or threats; C) rates of environmental (abiotic) degradation; and D) rates of disruption to biotic processes. A fifth criterion, E) quantitative estimates of the risk of ecosystem collapse, enables integrated assessment of multiple processes and provides a conceptual anchor for the other criteria. We present the theoretical rationale for the construction and interpretation of each criterion. The assessment protocol and threat categories mirror those of the IUCN Red List of species. A trial of the protocol on terrestrial, subterranean, freshwater and marine ecosystems from around the world shows that its concepts are workable and its outcomes are robust, that required data are available, and that results are consistent with assessments carried out by local experts and authorities. The new protocol provides a consistent, practical and theoretically grounded framework for establishing a systematic Red List of the world's ecosystems. This will complement the Red List of species and strengthen global capacity to report on and monitor the status of biodiversity.Entities:
Mesh:
Year: 2013 PMID: 23667454 PMCID: PMC3648534 DOI: 10.1371/journal.pone.0062111
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Description template for ecosystem types.
| Elements of operational definition | Components of ecosystem description |
| 1. Characteristic assemblage of biota | Identify defining biotic features |
| a) List diagnostic native species and describe their relative dominance and uniqueness | |
| b) List functional component of characteristic biota and identify their roles | |
| c) Describe limits of variability in the ecosystem biota | |
| d) Exemplar photographs | |
| 2. Associated physical environment | Identify defining abiotic features (e.g. climate, terrain, water chemistry, depth, turbidity, ocean currents, substrate, etc.) |
| a) Text descriptions and citations for characteristic states or values of abiotic variables | |
| b) Graphical descriptions of abiotic variables | |
| c) Exemplar photographs | |
| 3. Processes & interactions between components | Describe key ecosystem drivers and threatening processes |
| – among biota | a) Text descriptions and citations |
| – between biota & environment | b) Diagrammatic process models |
| c) Exemplar photographs | |
| 4. Spatial extent | Describe distribution and extent |
| a) Maps | |
| b) Estimates of area | |
| c) Time series, projections (past, present, future) | |
| 5. Classification context | Cross-references to relevant ecological classifications |
| a) Source classification | |
| b) IUCN habitat classification | |
| c) Ecoregional classifications | |
| 6. Reference state(s) | Describe ecosystem-specific point of collapse |
| a) Proxy variable | |
| b) Bounded threshold of collapse |
See Appendix S2 for examples.
Figure 1Probability density functions for the population and ecosystem variables that measure proximity to the thresholds that define species extinction (A, B) and ecosystem collapse (C, D).
The probability density functions represent uncertainty in the measurement of the variables. For species, the population threshold that defines extinction is known with certainty (e.g. zero abundance of a species, defined by the vertical line in A and B). In A, the estimated population is definitely greater than the extinction threshold, so there is no doubt that the species is extant. Alternatively, the probability that the abundance is above the threshold (the area under the curve) might be less than one (B), in which case the species could be extinct or extant. The shaded area is the probability that the species remains extant. For ecosystems, the x-axis could represent spatial distribution, number of species, water quality, etc. In contrast to species, uncertainty about the definition of ecosystem collapse leads to a range of possible values for this threshold (dashed box in C and D). The ecosystem variable is above this upper bound in some cases (C), so there is no doubt that the ecosystem persists. Alternatively, probable values for the ecosystem variable might intersect the uncertain threshold (D), in which case the ecosystem may be collapsed or not. In this case, there is some probability that the ecosystem parameter is above the upper bound of the threshold (shaded dark grey), which places a lower bound on the probability that the ecosystem persists (i.e. that it has not collapsed). There is an additional probability (pale grey) that the ecosystem parameter is above the threshold that depends on the amount of uncertainty in the threshold (i.e. width of the box). The sum of these two probabilities places an upper bound on the probability ecosystem persists. With further deterioration (E), the lower bound on the probability of ecosystem persistence is zero (no dark shading) and the upper bound is the pale shaded area.
Biotic and abiotic variables for assessing functional decline in the Aral Sea ecosystem, their reference values when the ecosystem was in a functional state (between 1911 and 1960) and bounded thresholds that define the collapsed state, assuming collapse occurred between 1976 and 1989.
| Functional reference state(1911–1960) | Bounded threshold of collapse (reference data1976, 1989) | |
| Fish species richness and commercial catch (t) | 20, 44,000 | 4–10, 0 |
| Sea volume (km3) | 1,089 | 364–763 |
| Sea surface area (km2) | 67,499 | 39,734–55,700 |
| Average salinity (g.l−1) | 10 | 14–30 |
Data from [78]. Further details in Appendix 2.5).
Figure 2Mechanisms of ecosystem collapse, and symptoms of collapse risk.
IUCN Red List criteria for ecosystems, version 2.0.
| Critically Endangered | Endangered | Vulnerable | |||
| A | Reduction in geographic distribution over ANY of following periods: | ||||
| 1 | Present (over the past 50 years) | ≥80% | ≥50% | ≥30% | |
| 2a | Future (over the next 50 years) | ≥80% | ≥50% | ≥30% | |
| 2b | Future (over any 50 year period including the present and future) | ≥80% | ≥50% | ≥30% | |
| 3 | Historic (since 1750) | ≥90% | ≥70% | ≥50% | |
| B | Restricted geographic distribution indicated by EITHER: | ||||
| 1 | Extent of a minimum convex polygon enclosing all occurrences (Extent ofOccurrence), OR | ≤2,000 km2 | ≤20,000 km2 | ≤50,000 km2 | |
| 2 | The number of 10×10 km grid cells occupied (Area of Occupancy) | ≤2 | ≤20 | ≤50 | |
| AND at least one of the following (a-c): | |||||
| (a) An observed or inferred continuing decline in EITHER: | |||||
| i. a measure of spatial extent appropriate to the ecosystem; OR | |||||
| ii. a measure of environmental quality appropriate to characteristicbiota of the ecosystem; OR | |||||
| iii. a measure of disruption to biotic interactions appropriate to thecharacteristic biota of the ecosystem | |||||
| (b) Observed or inferred threatening processes that are likely to cause continuing declines in either geographic distribution, environmental quality or biotic interactions within the next 20 years | |||||
| (c) Ecosystem exists at … | 1 location | ≤5 locations | ≤10 locations | ||
| 3 | A very small number of locations (generally fewer than 5) AND | ||||
| prone to the effects of human activities or stochastic events within a very short time period in an uncertain future, and thus capable of collapse or becoming Critically Endangered within a very short time period | |||||
| C | 1 | Environmental degradation over the past 50 years based on change in an abiotic variable | ≥80% extent with ≥80% relative severity | ≥50% extent with ≥80% relative severity | ≥50% extent with ≥50% relative severity |
| ≥80% extent with ≥50% relative severity | ≥80% extent with ≥30% relative severity | ||||
| ≥30% extent with ≥80% relative severity | |||||
| 2 | Environmental degradation over the next 50 years, or any 50-year periodincluding the present and future, based on change in an abiotic variable affecting… | ≥80% extent with ≥80% relative severity | ≥50% extent with ≥80% relative severity | ≥50% extent with ≥50% relative severity | |
| ≥80% extent with ≥50% relative severity | ≥80% extent with ≥30% relative severity | ||||
| ≥30% extent with ≥80% relative severity | |||||
| 3 | Environmental degradation since 1750 based on change in an abiotic variable affecting… | ≥90% extent with ≥90% relative severity | ≥70% extent with ≥90% relative severity | ≥70% extent with ≥70% relative severity | |
| ≥90% extent with ≥70% relative severity | ≥90% extent with ≥50% relative severity | ||||
| ≥50% extent with ≥90% relative severity | |||||
| D | 1 | Disruption of biotic processes or interactions over the past 50 years based onchange in a biotic variable | ≥80% extent with ≥80% relative severity | ≥50% extent with ≥80% relative severity | ≥50% extent with ≥50% relative severity |
| ≥80% extent with ≥50% relative severity | ≥80% extent with ≥30% relative severity | ||||
| ≥30% extent with ≥80% relative severity | |||||
| 2 | Disruption of biotic processes or interactions over the next 50 years, or any 50-year period including the present and future, based on change in a biotic variable affecting… | ≥80% extent with ≥80% relative severity | ≥50% extent with ≥80% relative severity | ≥50% extent with ≥50% relative severity | |
| ≥80% extent with ≥50% relative severity | ≥80% extent with ≥30% relative severity | ||||
| ≥30% extent with ≥80% relative severity | |||||
| 3 | Disruption of biotic processes or interactions since 1750 based on change in a biotic variable affecting… | ≥90% extent with ≥90% relative severity | ≥70% extent with ≥90% relative severity | ≥70% extent with ≥70% relative severity | |
| ≥90% extent with ≥70% relative severity | ≥90% extent with ≥50% relative severity | ||||
| ≥50% extent with ≥90% relative severity | |||||
| E | Quantitative analysis that estimates the probability of ecosystem collapse to be… | ≥50% within 50 years | ≥20% within 50 years | ≥10% within 100 years | |
These supercede an earlier set of four criteria [12]. Refer to Appendix S1 for definitions of terms.
see text for guidance on selection of variable appropriate to the characteristic native biota of the ecosystem.
see text and Fig. 6 for explanation of relative severity of decline.
Figure 6Estimation of relative severity of environmental degradation (criterion C) or disruption of biotic interactions (criterion D).
Example using stream flowthrough data as percent of mean unregulated flows (aqua line joining filled circles) for the Murray River adapted from [57], see Appendix S2.8. There is uncertainty in both the rate of decline in flowthrough (two alternative regression lines) and the level of flowthrough at which the water-dependent ecosystem would collapse (shaded area). The threshold of collapse is the level of stream flowthrough that would result in widespread tree death and replacement of forest vegetation (most likely by shrubland). This was estimated to occur when mean flowthrough (as estimated by long-term regression) falls to 0–10% of unregulated flow levels (shown as a bounded estimate c1–c2, dashed lines), as widespread tree dieback began to occur when flowthrough was zero in several year of the past decade (see Appendix S2.8 for process model and justification). Based on a best-fit Gaussian regression model of the flowthrough data (dark blue line), the mean flowthrough fell from 71% in 1960 (dotted line a1) to 50% in 2009 (dotted line b1). A beta regression model (red line) gave an improved fit to the data and indicates a decline in mean flowthrough from 63% in 1960 (a2) to 31% in 2009 (b2). A standardised estimate of the relative severity of hydrological degradation over the past 50 years = 100×(b-a)/(c-a). The minimum plausible estimate = 100×(b1–a1)/(c1–a2) = 100×(71–50)/(71–0) = 30% and the maximum plausible estimate = 100×(b2–a2)/(c2–a1) = 100×(63–31)/(63–10) = 60%. Based on uncertainty in the flowthrough regression models and collapse threshold, a bounded estimate of hydrological degradation in this ecosystem is therefore 30–60% over the past 50 years.
Figure 3Protocol for assessing the risk of collapse of an ecosystem using proposed Red List criteria v2.0 (see )
.
Figure 4Time scales for assessment of change under criteria A, C and D.
Figure 5Contrasting pathways of environmental or biotic degradation and their corresponding risk classifications under criteria C and D.
(a) initially widespread and benign degradation, later increasing in severity. (b) severity and extent of degradation increase at similar rates. (c) localised but severe degradation, later becoming more widespread. Ecosystems that just fail to meet the thresholds for Vulnerable status (e.g. extremely severe (>80%) decline in environmental quality over 20–30% of distribution, or severe (>30%) decline over 70–80% of distribution) may be assigned Near Threatened (NT) status.
Examples of variables potentially suitable for assessing the severity of environmental degradation under criterion C.
| Degradation process | Example variables | Sources |
| Desertification of rangelands | Proportional cover of bare ground, soil density, soil compaction indices, remote sensing landcover indices |
|
| Eutrophication of soils, freshwaterstreams or lakes | Levels of dissolved or soil nitrogen, phosphorus, cations, oxygen, turbidity, bioassay |
|
| De-humidification of cloud forests | Cloud cover, cloud altitude |
|
| Deforestation by acid rain | Rain water chemistry |
|
| Homogenisation of microhabitats | Diversity of micro-terrain features, spatial variance in inundation depth and duration |
|
| Changed water regime or hydroperiod | Field-based monitoring of stream flow volume, or piezometric water table depth; remotesensing of spatial extent of surface water, frequency and depth of inundation |
|
| Salinisation of soils or wetlands | Field monitoring of salinity of soils or groundwater, remote sensing of ground surface albido |
|
| Sedimentation of streams, coral reefs | Sediment accumulation rates, sediment load of streams, discharge, turbidity of water column, frequency and intensity of sediment plume spectral signatures |
|
| Structural simplification of benthic marine ecosystems (e.g. by bottom trawling) | Microrelief, abundance of benthic debris, trawling frequency and spatial pattern |
|
| Sea level rise | Acoustic monitoring of sea level, extent of tidal inundation |
|
| Retreat of ice masses | Remote sensing of sea ice extent |
|
Examples of biotic variables potentially suitable for assessing the severity of disruption to biotic interactions under criterion D.
| Variable | Role in ecosystem resilience and function | Example |
| Species richness (number ofspecies within a taxonomic groupper unit area) | Ecological processes decline at an accelerating rate withloss of species | Response of graminoid diversity and relative abundance to varying levels of grazing in grassland |
| Species composition and dominance | Shifts in dominance and community structureare symptoms of change in ecosystembehaviour and identity | Shift in diet of top predators (killer whales) due to overfishing effects on seals, caused decline of sea otters reduced predation of kelp-feeding urchins, causing their populations to explode with consequent collapse of giant kelp, structural dominants of the benthos |
| Abundance of key species (ecosystem engineers, keystone predators and herbivores, dominant competitors,structural dominants, transformerinvasive species) | Invasions of certain alien species may alter ecosystembehaviour and identity, and make habitat unsuitablefor persistence of some native biota. Transformeralien species are distinguished from benigninvasions that do not greatly influenceecosystem function and dynamics | Invasion of crazy ants simplifies forest structure, reduces faunal diversity and native ecosystem engineers |
| Functional diversity (number and evenness of types) | High diversity of species functional types (e.g. resourceuse types, disturbance response types) promotesco-existence through resource partitioning, nichediversification and mutualisms | High diversity of plant-derived resources sustains composition, diversity and function of soil biota |
| Functional redundancy (number oftaxa per type; within- and cross-scaleredundancy; see (Allen et al. 2005) | Functionally equivalent minor species may substitutefor loss or decline of dominants if many species performsimilar functional roles (functional redundancy).Low species richness may be associated with lowresilience and high risks to ecosystem function underenvironmental change | Response of bird communities to varying levels of land use intensity |
| Functional complementarity (dissimilarity between types or species) | Functional complementarity between species (e.g. inresource use, body size, stature, trophic status,phenology) enhances coexistence through nichepartitioning and maintenance of ecosystemprocesses | High functional complementarity within both plant and pollinator assemblages promotes recruitment of more diverse plant communities |
| Interaction diversity (interaction frequencies and dominance, properties of network matrices) | Interactions shape the organisation of ecosystems,mediate evolution and persistence of participating speciesand influence ecosystem-level functions,e.g. productivity | Overgrazing reduced diversity of pollination interactions |
| Trophic diversity (number of trophic levels, interactions within levels, food web structure) | Compensatory effects of predation andresource competition maintain coexistence of inferior competitorsand prey. Loss or reduction of some interactions(e.g. by overexploitation of top predators) mayprecipitate trophic cascades via competitiveelimination or overabundance ofgeneralist predators | Diverse carnivore assemblages (i.e. varied behaviour traits and densities) promote coexistence of plant species |
| Spatial flux of organisms (rate, timing, frequency and duration of species movements between ecosystems) | Spatial exchanges among local systems in heterogeneous landscapes provide spatial insurance for ecosystem function | Herbivorous fish and invertebrates migrate into reefs from seagrass beds and mangroves, reducing algal abundance on reefs and maintaining suitable substrates for larval establishment of corals after disturbance |
| Structural complexity (e.g.complexityindices, number and cover of verticalstrata in forests, reefs, remotesensing indices) | Simplified architecture reduces niche diversity, providingsuitable habitats for fewer species, greater exposureto predators or greater competition for resources(due to reduced partitioning) | Structurally complex coral reefs support greater fish diversity |
Summary of trial assessments for 17 ecosystems from freshwater (F), terrestrial (T), marine (M) and subterranean (S) environments.
| Localthreat status | IUCN status | # criteria assessed | # subcriteria assessed | # subcriteria supporting overall status | Spatial criteria assessed | Functional criteria assessed | Criteria determining overall status | |
| 1 Coastal sandstone upland swamps,Australia (F) | EN | EN-CR | 4 | 9 | 2 | + | + | A2,C2 |
| 2 Raised bogs, Germany | CR | CR | 3 | 6 | 2 | + | + | A3,C3 |
| 3 German tamarisk pioneer vegetation,Europe (F) | EN | EN | 2 | 5 | 3 | + | A1,A3, B2a,b | |
| 4 Swamps, marshes and lakes in theMurray-Darling Basin, Australia (F) | NE | EN-CR | 4 | 10 | 2 | + | + | D1,D3 |
| 5 Aral Sea, Uzebekistan and Kazakhstan (F) | CO | 4 | 12 | 9 | + | + | A1-3, C1-3, D1-3 | |
| 6 Reedbeds, Europe (F) | LC | VU | 4 | 8 | 3 | + | + | A1,A3,D1 |
| 7 Gonakier forests of SenegalRiver floodplain (F) | CR | 3 | 6 | 2 | + | + | A1,A3 | |
| 8 Floodplain Ecosystem of river red gumand black box, south-easternAustralia (F) | NE | VU | 4 | 12 | 3 | + | + | A2,C1,C2 |
| 9 Coolibah - Black Box woodland,Australia (F/T) | EN | EN | 3 | 7 | 1 | + | + | C1 |
| 10 Semi-evergreen vine thicket, Australia (T) | EN | EN | 2 | 2 | 2 | + | A3,B2a | |
| 11 Tepui shrubland, Venezuela (T) | LC | LC | 3 | 8 | 8 | + | + | A1-3,B1-3, D1-3 |
| 12 Granite gravel fields & sandplains,New Zealand (T) | LC | LC | 4 | 11 | 11 | + | + | A1-3,B1-3, C1-3,D1-3 |
| 13 Cape Sand Flats Fynbos, South Africa (T) | CR | CR | 2 | 6 | 1 | + | B1a,b | |
| 14 Tapia Forest, Madagascar (T) | NE | EN | 2 | 4 | 1 | + | A3 | |
| 15 Great Lakes Alvar (T) | VU-EN | 3 | 5 | 1 | + | + | A3 | |
| 16 Giant kelp forests, Alaska (M) | NE | EN-CR | 2 | 4 | 2 | + | + | D1,D3 |
| 17 Caribbean coral reefs (M) | NE | EN-CR | 2 | 5 | 2 | + | + | D1,D3 |
| 18 Seagrass meadows, South Australia (M) | NE | EN-CR | 3 | 6 | 2 | + | + | A1,C1 |
| 19 Coorong lagoons, Australia (F/M) | NE | CR | 5 | 9 | 4 | + | + | B1a,b,C2, D1,E |
| 20 Karst rising springs, South Australia (C/F) | NE | CR | 3 | 7 | 3 | + | + | B1b,C1,C2 |
Figure 7Number of ecosystems assessed for each criterion and number for which each criterion determined overall status.
Figure 8Sensitivity of risk assessment outcomes (relative to uncertainty bounds of the original assessment) to variation in threshold values for (a) all five criteria in combination; (b) criterion A only; (c) criterion B only; (d) criterion C only; (e) criterion D only; and (f) criterion E only.