Marine Resource Management
Decision support challenge:
To communicate both the state of marine populations (e.g., fish, krill, and other
targeted species), the uncertainties inherent to model projections, and the costs
associated with alternative policy decisions. To enable policy-makers and other stakeholders
to conduct scenario planning and compare alternative policies by developing interactive
visualization tools.
Decision makers or end users:
Decision-makers include trained fisheries scientists serving on science and statistical
committees or fisheries management councils, US State Department representatives and
politicians, as well as fishermen, tour operators, and seafood processors. These stakeholders
may have sharply divergent perspectives, especially when resources are shared across
national boundaries.
Currently, scientists assessing current population size and future productivity fail to fully convey uncertainty in population models and the likely impact of management decisions on the productivity of a natural resource. This non-interactive approach fails to both address the consequences of particular management decisions and overcome major cultural barriers between stakeholders.
Research challenges and data skills relating to decision making-process:
There are many exciting avenues for innovation in the area of quantitative fisheries
management, including but not limited to the application of “deep-learning” methods
for improved population forecasting. Marine resource management data encompass spatially-resolved
information on species’ abundances, bathymetry, demographic data, satellite or oceanographic
data recorded on the scale of minutes to days, and even the output from Global Climate
Models. These advances in computational analysis will have far greater impact if students
can tailor outputs to address the needs of policy-makers. To really translate scientific
findings into better decision making, students must work with stakeholders throughout
the modeling process and thus overcome the cultural barriers that often disconnect
the social science and natural science teams working on these complex socioeconomic
challenges. Interactive applications and visualization tools, for example, can allow
stakeholders to test various management scenarios, but modelers often lack the programming
skills required to build interactive websites. Improvements to science and communication
will enable participatory Management Strategy Evaluation (MSE), a process by which
multiple models or scenarios are tested under the assumption that no one model or
scenario is “right” but rather represents a range of options. This process, which
would be taught to trainees through their required coursework, forces stakeholders
to verbalize their goals and recognize that some goals come at the expense of others
or are not fully attainable.
Assessing improved decision making:
The effectiveness of these approaches to management can be assessed by the number
of overfished stocks and other metrics indicating improved status of wildlife or ecosystems
such as a decrease in the number of invasive species, increases in biodiversity and
higher profitability of fisheries. Natural resource management is often contentious,
especially when resources are not sustainably managed. The well-being of fishing communities
and satisfaction of stakeholders can also be quantified to indicate whether management
is effective in both.