Return to Neverland: Shifting Baselines Affect Eutrophication Restoration Targets
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The implicit assumption of many scientific and regulatory frameworks that ecosystems impacted by human pressures may be reverted to their original condition by suppressing the pressure was tested using coastal eutrophication. The response to nutrient abatement of four thoroughly studied coastal ecosystems that received increased nutrient inputs between the 1970s and the 1980s showed that the trajectories of these ecosystems were not directly reversible. All four ecosystems displayed convoluted trajectories that failed to return to the reference status upon nutrient reduction. This failure is proposed to result from the broad changes in environmental conditions, all affecting ecosystem dynamics, that occurred over the 30 years spanning from the onset of eutrophication to the reduction of nutrient levels. Understanding ecosystem response to multiple shifting baselines is essential to set reliable targets for restoration efforts.
KeywordsEutrophication Baselines Global change Nutrients
Widespread ecosystems degradation due to mounting human pressures has prompted efforts to reverse this process. These efforts are guided by the identification of the pressures responsible for the deterioration of the ecosystems and a target or reference status to which the ecosystem is supposed to return upon reduction of the pressures. Whereas scientific research has made tremendous progress in the first domain, the definition of a reference status to be achieved upon release of direct anthropogenic pressures remains a major stumbling block. In the absence of sound scientific principles, many legal and managerial frameworks refer to tentative assessments of the status of the ecosystems prior to the onset of significant pressures to set these targets, e.g., EC Water Framework Directive (EC 2000), US Clean Water Act (USEPA 2002)
J.M. Barrie, author of the celebrated children’s play Peter Pan and Wendy (1911), created an island, Neverland, where everything remained perpetually unchanged. We submit that the expectation that ecosystems can be returned to an idealized past reference status by virtue of reducing direct human pressures is as likely as the existence of Neverland. We argue that concurrent changes, human-induced and otherwise, lead to shifting baselines imposing dynamic trajectories for reference ecosystem status.
We illustrate this problem using the outcome of efforts to reduce coastal eutrophication. Coastal eutrophication, derived from increased nutrient inputs, is a mounting threat to coastal waters worldwide (Nixon 1995; Vidal et al. 1999). Boesch (2002) reported that 67% of the combined surface area of US estuaries exhibited moderate to high degrees of eutrophication and a similar picture has emerged in Europe (Conley et al. 2002; Escaravage et al. 2006; Vidal et al. 1999) and other continents (e.g., Asia, Oceania; Boesch 2002). The effects of eutrophication include the development of noxious blooms of opportunistic algae and toxic algae, the development of hypoxia, loss of valuable seagrasses, and in general a deterioration of the ecosystem quality and the services they provide (Boesch 2002; Cloern 2001; Duarte 1995; Nixon 1995).
The causes of coastal eutrophication are often bound within the coastal ecosystems and their watersheds and are, therefore, amenable to intervention at the individual ecosystem scale. Indeed, efforts to reduce nutrient inputs have resulted in a shift in trajectories, with many coastal systems entering, beginning in the 1990s, an oligotrophication phase (e.g., Boesch 2002; Carstensen et al. 2006; Cloern 2001). Reduced nutrient inputs have lead to improved water quality in some ecosystems, as reflected, for instance, in reduced chlorophyll a (chla) concentration following reduced nutrient inputs to Tampa Bay (Greening and Janicki 2006) and the Patuxent and Potomac Rivers (Kemp et al. 2005). Yet, reducing nutrient inputs does not always yield the expected ecosystem benefits (Colijn and Cadée 2003; Paerl et al. 2004; Philippart and Cadée 2000). For instance, changes in oceanographic forcing in San Francisco Bay were reported to lead to food web changes resulting in increased phytoplankton biomass despite a parallel decline in nutrient inputs (Cloern et al. 2007). Hence, responses of coastal ecosystems to oligotrophication may be more complex than expected as other control factors maybe changing at the same time.
Global changes in human activity and key environmental traits between 1970, the onset of coastal eutrophication research, and 2005
CO2 emissions (Pg year−1)
Climate warming, increased photosynthetic rates, ocean acidification
Forster et al. (2007)
Atmospheric CO2 (ppm)
Climate warming, increased photosynthetic rates, ocean acidification
Forster et al. (2007)
Human population (million)a
Increased appropriation of natural resources
UN population database (UN 2006)
Freshwater withdrawal (km3 year−1)
Reduced runoff, salinization of coastal aquifers, deteriorated water quality
Food production on land (million tons)a
Increased cropland and pasture area, increased fertilizer use, increased pesticide use
Fertilizer use (million tons N year−1)a
Increased eutrophication of freshwater and coastal waters
Mean global temperature (°C, relative to 1961–1990 mean)
Increased respiration, reduced oxygen content of waters, increased stratification, species shift
Forster et al. (2007)
Mean global sea level (mm, relative to 1961–1990 mean)
Increased coastal erosion, increased salinization of coastal aquifers
Bindoff et al. (2007)
Fish and invertebrate taxa lost from large marine ecosystems (% relative to 1950)
Disruption of food webs and ecosystem processes
Worm et al. (2006)
Fisheries landings (million tons)
Marine food web changes, increased eutrophication
Marine aquaculture production (million tons)a
Increased eutrophication of coastal waters
Arable land (106 km2)a
Increased eutrophication and siltation of coastal waters
We examined the adequacy of these scenarios to describe the trajectories followed by the mean chlorophyll a concentration, a powerful indicator of ecosystem response to nutrient inputs (Cloern 2001; Duarte 1995; Nixon 1995), using four thoroughly studied coastal ecosystems where significantly increased nutrient inputs, eutrophication phase, were followed by nutrient abatement significantly reducing nutrient inputs, oligotrophication phase.
Materials and Methods
For the Marsdiep example, annual means of chla from De Jonge (1997) were updated with recent data from the Dutch national monitoring program (www.waterbase.nl). Total nitrogen inputs from Lake Ijssel discharging to the Marsdiep were obtained by intercalibrating data (1972–1992) from De Jonge (1997) with data (1977–2002) from Paetsch and Lenhart (2004) using linear regression.
Phytoplankton carbon biomass for Helgoland was provided by the Alfred Wegener Institute at Helgoland. Biomass of the dominating functional group, diatoms, was used only because flagellate data have been subject to systematic errors (Paetsch and Lenhart 2004). Nutrient inputs (1978–2006) and freshwater discharge (1874–2006) from the Elbe River, the largest contributor of many rivers to the southeastern North Sea, were provided by ARGE ELBE. Nutrient inputs between 1962 and 1997 were reconstructed by estimating a transfer function (similar to Conley et al. 2007) of nitrogen surplus in the watershed (Hussain et al. 2004) multiplied by freshwater discharge after subtracting point sources (approximately 37%).
Nitrogen input (entire watershed) and chla data for Odense Fjord were obtained from Fyns county in Denmark.
For the Gulf of Riga, chla data were provided by the Latvian Institute of Aquatic Ecology, University of Latvia, and nutrient input from the Daugava River (largest source of nutrients) was from Laznik et al (1999), with updated data from ICES (2007). Smoothed curves were obtained by 5-year central moving averages.
The four ecosystems experienced broad changes in nutrient (three to fivefold range) and algal biomass (three to tenfold) along the eutrophication and subsequent oligotrophication periods (Fig. 2). Neither one of the four ecosystems examined reached chlorophyll a concentrations above 16 μg/L, indicating that they did not reach hypereutrophic conditions, and their corresponding trajectories may not be representative of more heavily eutrophied coastal systems.
The Marsdiep ecosystem experienced a clear, significant increase in nutrient inputs from 1970 to the mid 1980s, followed by a significant reduction in nutrient inputs to reach values comparable to those in the early 1970s (Fig. 2a). Chlorophyll a increased rapidly following increased nutrient inputs and declined equally rapidly during the initial phase of the oligotrophication period. However, chlorophyll a concentration level off with subsequent oligotrophication at levels almost twice as high as those observed under similar nutrient inputs at the onset of the eutrophication phase (Fig. 2a).
The Helgoland ecosystem experienced a doubling of nitrogen inputs between 1960 and 1980, followed by an oligotrophication phase involving an abrupt decline followed by a more gradual decline in nutrient inputs over the past decade (Fig. 2b). The biomass of diatoms showed, as for the Marsdiep, a clear increase during the eutrophication phase followed by an initial decline during the oligotrophication phase and a recent increase in diatom biomass despite sustained oligotrophication (Fig. 2b).
The Odense fjord experienced a rapid eutrophication during the late 1980s followed by a more gradual, still ongoing oligotrophication to reach nutrient inputs below those recorded at the onset of the monitoring program (Fig. 2c). The sixfold change in chlorophyll a concentration along this record did not follow any consistent pattern with the eutrophication and oligotrophication phase, resulting in a very complex trajectory (Fig. 2c).
The pattern of eutrophication and oligotrophication in the Gulf of Riga closely resembled that in the Marsdiep ecosystem (Fig. 2d). However, the increase in chlorophyll a concentration was far more modest and there was no clear decline in chlorophyll a concentration along the oligotrophication phase (Fig. 2d).
The four ecosystems examined followed a diversity of complex phytoplankton biomass trajectories during the eutrophication and oligotrophic phases, which appeared to be rather idiosyncratic among ecosystems (Fig. 2). Only after considerable smoothing of the time trajectories did some pattern emerge (Fig. 2). Whereas phytoplankton biomass generally increased with increasing nutrient inputs, the trajectory during the oligotrophication phase did not follow an inverse path. Indeed, the pattern observed deviates in all four ecosystems from that expected under the “Return to Neverland” scenario (Fig. 1a), as none of the trajectories show evidence of a return of mean chlorophyll a concentrations to levels comparable to those observed at the onset of the time series following reduction of nutrient inputs to comparable, or lower, levels (Fig. 2, inserts). The smoothed trajectories (Fig. 2) resemble, instead, those expected under the combined “Regime Shift and Shifting Baselines” scenario (Fig. 1d).
The observation of complex trajectories of coastal ecosystems in response to eutrophication and subsequent oligotrophication suggests that the expectation that eutrophication can be reverted back to historical reference values by reducing nutrient inputs alone may be unsupported, as oligotrophication does not seem to be occurring to the expected extent. Ad hoc explanations are typically offered to account for failure of coastal ecosystems to return to reference status upon reducing nutrient inputs (e.g., alternative nutrient sources, internal loading, shifts in limiting nutrients, colimitation effects of nutrients and light, decreased filter-feeders activity, e.g., Colijn and Cadée 2003; Paerl et al. 2004; Philippart and Cadée 2000). A decline in chlorophyll a concentration in moderately eutrophic coastal ecosystems may be triggered by factors other than oligotrophication, particularly through changes in food web structure (e.g., Heck and Valentine 2007; Cloern 2001). These observations are comparable to the much longer experience in reverting lake eutrophication. Lake ecosystems have been reported to follow convoluted trajectories following nutrient reduction, with internal loading, changes in food webs, the impacts of climate change, and 10–15-year time lags from nutrient reduction to reduced algal biomass put forward as the causes for the complex lake trajectories observed (Jeppesen et al. 2005).
We submit that the expectation that ecosystems will return to the original conditions tracking reversed trajectories following reduced nutrient inputs may be fundamentally flawed, as it ignores the consequences of shifting baselines, deriving from concurrent changes in multiple pressures, along the time elapsed between pressures and restoration (about 30 years, Table 1). For instance, historical overfishing has altered coastal food webs, removing ecological buffers (Duarte 1995) and rendering coastal ecosystem more prone to eutrophication (e.g., Heck and Valentine 2007; Jackson et al. 2001). Environmental changes induced by human activity, superimposed upon natural trends and fluctuations, have led to major, extreme, and unprecedented changes in the environment since coastal eutrophication emerged in the 1970s that could potentially affect the trophic status of coastal waters (Table 1). These changes are of such magnitude and simultaneously affect so many fundamental factors affecting the functioning of coastal ecosystems that they would have forced, through the combination of their separate and synergetic effects, coastal ecosystems to drift away from their “reference” status even in the absence of direct anthropogenic nutrient inputs.
Failure of coastal ecosystems to return to past ecological conditions upon significant reduction in nutrient inputs is disturbing both to scientists and managers, as current models and management frameworks (e.g., EU Water Framework Directive, EC 2000) assume a direct, continuous response of coastal ecosystems to altered nutrient inputs. These frameworks are derived from the widespread observation of water quality and ecosystem deterioration upon increasing nutrient inputs (e.g., Boesch 2002; Nixon 1995) and implicitly assume that opposite trajectories would be followed upon nutrient reduction, returning the ecosystems to acceptable deviation from preexisting reference conditions (e.g., EU Water Framework Directive, EC 2000). Lack of recovery of coastal ecosystems following reduced nutrient inputs is likely to create frustration, potentially leading to inaction when targets of ecosystem restoration efforts fail to be met. The scientific community is to bear much of the burden for the frustration of managers and society in general when confronted with failure to restore eutrophied ecosystems, as the role of nutrient inputs in controlling phytoplankton biomass has been generally oversimplified in the dialog between scientists and managers, possibly driven by the benign intention to deliver a message clear enough as to prompt restoration efforts. Thorough, sophisticated accounts of the interplay between nutrient inputs and other factors, intrinsic and extrinsic to the ecosystems, in controlling phytoplankton biomass abound in the scientific literature (e.g., Cloern 2001; Jackson et al. 2001; Sharp 2001; Wilkerson et al. 2006; Howarth and Marino 2006) but have not been effectively communicated to managers and policy makers.
Emphasis in returning ecosystems to a particular past state, an unlikely outcome in a world of shifting baselines, should be replaced by targets ensuring the maintenance of key ecosystem functions and, thereby, the constant supply of valuable ecosystem services to society. For instance, the examination of the four cases presented may be interpreted as evidence that nutrient reduction was ineffective. Yet, reduced nutrient inputs have halted further eutrophication, reducing associated damage and vulnerabilities, and improved some indicators of ecosystem status in many ecosystems (e.g., oxygen levels, macrophyte cover; Carstensen et al. 2006; Kemp et al. 2005). Moreover, the literature also contains examples of ecosystems that did improve following reduced nutrient inputs, such as Tampa Bay (Greening and Janicki 2006) or the Potomac River (Kemp et al. 2005). Hence, efforts to reduce nutrient inputs to eutrophied coastal ecosystems have indeed delivered important benefits by either leading to an improved status of coastal ecosystems or preventing damages and risks associated to further eutrophication.
The apparent lack of a common trajectory of coastal ecosystems represents a major challenge for scientists but also for managers and policy makers, who must consider the possible occurrence of shifting baselines and regime shifts in the ecosystems to evaluate possible outcomes of restoration efforts. Managers, and the public at large, must be educated to accommodate the possibility that ecosystem responses may display hysteresis, due to time lags in the responses and nonlinearities in the system, in the expected outcomes of managerial interventions (Kemp et al. 2005), so that expectations include observed ecosystem responses. It is, however, critical that scientific understanding of ecosystem trajectories progresses to identify what ecosystem traits determine the likelihood of individual coastal ecosystem to show the different trajectories proposed here (Fig. 1) in response to reduced nutrient inputs, to better inform managerial decisions. More generally, the scientific underpinnings of ecosystem restoration efforts must progress to reach the capacity to forecast the trajectories of ecosystems subject to multiple simultaneous pressures and changes, thereby considering the dynamic nature of reference conditions. This requires a dynamic approach to ecosystem responses, considering not only direct responses to pressures but also random drifts, shifting baselines, and nonlinear effects. Ecological thresholds must be identified, also providing boundaries for management strategies, and methods to identify these without the need to cross them are urgently needed (Strange 2007).
The impact of shifting baselines on the capacity to return ecosystems to an idealized past reference status is not exclusive of coastal ecosystems but affects all domains of environmental restoration. An example is the failure to restore the ozone layer to levels before chlorofluorocarbon (CFC) release after the implementation of the Montreal Protocol in 1987, which has been argued to derive from the combined effects of climate warming and the release of new chemicals impacting on ozone levels (Weatherhead and Andersen 2006), illustrating the need to consider shifting baselines. As for nutrient reduction efforts, the decreased release of CFCs in the Montreal Protocol was not ineffective, as it prevented further deterioration of the ozone layer. The widespread aim of preserving ecosystems unchanged in protected areas, such as national parks, represents an effort to anchor them on the shores of Neverland against the action of shifting baselines and clearly irreversible events, such as species extinctions and invasions, which will likely be met with failure. Fisheries science has also faced a general failure to predict stock recovery following reduced fishing pressure, which has led to pleas for a more ecosystem-based approach to fisheries science and management (Botsford et al. 1997), which should consider community and food web interactions and the dynamic nature of marine ecosystems, including their responses to climate change. Similarly, coastal ecosystems must be managed from an ecosystems perspective that extends beyond the role of nutrient inputs to consider the concurrent dynamics of the drivers of change and their interactions.
Society, and its actors most directly involved in ecosystem stewardship, scientists, managers and policy makers, must reconsider the targets of their efforts to focus on maintaining a healthy environment, abandoning scenarios revolving around idealized Neverlands, to confront shifting baselines. Whereas we can reasonably predict the statistical trend that ecosystems will follow upon changes in nutrient inputs, we must acknowledge that our capacity to predict the trajectories of individual ecosystems is still primitive as is challenged by elements of idiosyncrasy in the individual responses that cannot be derived from the statistical responses of multiple coastal ecosystems. Confronted with the need to act to prevent further ecosystem deterioration, we must accept the limits to governability of coastal ecosystems and the need to consider some degree of what Jentoft, addressing similar failures to manage fisheries, has referred to as “a technology of foolishness,” which emphasizes institutional experimentation and learning by doing (Jentoft 2007).
There is a major pending revolution in concepts, paradigms, and approaches in the way we manage nature that should no longer strive at delivering a planet to future generations identical to that we experienced at one point of our lives but one that maintains functional integrity and services of ecosystems conducive to a sustainable future. Ecology and restoration science must, as the character Wendy in J.M. Barrie’s play, grow to face change.
This research is a contribution to the Thresholds Integrated Project, funded by Framework Program 6 of the European Commission (contract # 003933-2) and COMPACT, a Marine Curie Chair for Daniel Conley (MEXC-CT-2006-042718). We thank Karen Wiltshire (AWI Helgoland), Michael Bergemann (ARGE ELBE), Jørgen Windolf (National Environmental Research Institute), and Bärbel Müller-Karulis (Latvian Institute of Aquatic Ecology) for supplying data and J. Cloern, L. McManus, and two anonymous reviewers for useful comments.
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