Understanding the complex dynamics controlling marine ecosystem structure and productivity is challenging given the large spatial and temporal scales over which these dynamics occur. A new global database including fisheries stock assessments, research surveys, and ecosystem models has been assembled covering 13 Large Marine Ecosystems. Using these, it is possible to investigate themes directly related to the ecosystem approach to fisheries: (1 the interaction of productivity across fish stocks in ecosystems and the response to fishing pressure, (2 how the trade-off between sustainable yield and ecosystem impacts can be minimized, and (3 analysis of rebuilding rates in over-exploited marine fish stocks, and biological and management drivers of the differential performance of different stocks. There is a central hypothesis associated with each theme: (1 fishing affects the distribution of productivity within the ecosystem but not the total amount, (2 there are irreducible interactions in fishing mortality such that minimizing depletion of less productive stocks will always involve loss of potential yield of more productive stocks and (3 heavily exploited stocks show depensatory responses and rebuild more slowly than assumed in normal compensatory population models. The investigators will conduct analyses across species and ecosystems to determine: mean ecosystem trophic level changes according to catch, survey and stock assessment data and whether the trophic level of catch reflects changes in the ecosystem; correlations in productivity amongst species, trophic levels and functional groups; shifts in community structure from trawl surveys; the extent to which environmental changes or fishing impacts drive productivity; depensation in recruitment and surplus production; the extent of lost yield due to overfishing; catch and assessment data as metrics of ecosystem status; correlations in historical fishing pressure across species, trophic levels and functional groups; the extent to which correlations in fishing pressure can be reduced by spatial management, individual incentives such as catch shares, and changes in fishing technology; rebuilding rates in over-exploited stocks; biological and management drivers of recovery; and management responses to stock over-exploitation. These analyses address fundamental questions of significant intellectual merit about population dynamics, ecosystem structure and productivity, as well as ecosystem interaction and human response.

Most of this project addresses indices of ecosystem status and understanding the trade-off between sustainable yield and ecosystem impacts. This will have broad impacts because understanding trade-offs is the most important challenge in ecosystem based management and will have direct application to formulation of the ecosystem approach to fisheries management. In addition to outreach through journal articles, the investigators plan on writing a series of papers in general interest journals on the impacts of fishing on ecosystems and stocks, as well as ongoing policy outreach through legislative staff and media.

Project Report

The primary outcomes of this research are: (1) an expanded and enhanced global database of open access information on fish population dynamics; (2) a better understanding of the role of regime shifts in driving changes in fish populations; (3) identification of the factors that determine how rapidly fish populations recover from depletion. The RAM Legacy Stock Assessment Database is a global repository of information on fish population dynamics. Since the earliest version of the database was released in 2009, it has supported 23 peer-reviewed publications. An updated version of the database was developed as part of this NSF CAMEO project and is freely available at: http://ramlegacy.org/ The RAM Legacy database is rapidly becoming a critical resource for researchers hoping to understand fish population changes or the effectiveness of different fishery management strategies through a data-driven comparison of multiple fish populations. Use of the database has already broadened well beyond our own research group. There is already one paper in revision and several others in preparation that are based on the RAM Legacy Database, but do not include any of our group as co-authors. It has long been known that fish populations, even in the absence of fishing, do not stay at a constant equilibrium population size. Changes in productivity (essentially the amount a population grows or shrinks in the absence of fishing) from year to year were known to occur, but generally believed to be small compared to the changes in productivity that result when fishing reduces the population size. Our research conducted under this NSF CAMEO grant and published in the Proceedings of the National Academy of Sciences (Vert-pre et al. 2013) has established that changes in fish productivity come in alternating multi-year periods of high and low productivity. In fact, these "productivity regime shifts" better explain fluctuations in fish populations than do the mathematical models typically used by fishery management organizations. As a consequence, the predicted increase in fish productivity from reducing fishing rates and allowing populations to rebuild is far from guaranteed. Perhaps more importantly, fishing rates that proved to be sustainable during a period of high productivity can may be unsustainably high during periods of low productivity. Detecting these productivity regime shifts in time to adjust fishing rates remains a critical scientific challenge. Analysis of fish populations in the RAM Legacy database has also shed light on the process of recovery for depleted fish populations. In paper published in Science (Neubauer et al. 2013), we showed that marine fish populations are surprisingly resilient to overfishing and can generally rebuild to sustainable levels within a decade or so, if fishing is substantially reduced at the first signs of overexploitation. Unfortunately, globally, we don't have a good track record of making necessary fishing cuts when depletion is first recognized. Of 62 currently depleted stocks, less than a quarter are fished below rates needed for rebuilding. The findings show that if we don't detect depleted fish populations early and respond quickly with appropriate reductions in catch, then our options become very poor. We're left with either drastic reductions in catch that have severe economic and social consequences or slow and uncertain recovery.

Agency
National Science Foundation (NSF)
Institute
Division of Ocean Sciences (OCE)
Type
Standard Grant (Standard)
Application #
1041678
Program Officer
David Garrison
Project Start
Project End
Budget Start
2010-08-15
Budget End
2013-07-31
Support Year
Fiscal Year
2010
Total Cost
$187,110
Indirect Cost
Name
Rutgers University
Department
Type
DUNS #
City
Piscataway
State
NJ
Country
United States
Zip Code
08854