Conservation Risks: When Will Rhinos be Extinct?
Authored by Timothy C Haas, Sam M Ferreira
Date Published: 2016
DOI: 10.1109/tcyb.2015.2470520
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Mathematical description
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Abstract
We develop a risk intelligence system for biodiversity enterprises. Such
enterprises depend on a supply of endangered species for their revenue.
Many of these enterprises, however, cannot purchase a supply of this
resource and are largely unable to secure the resource against theft in
the form of poaching. Because replacements are not available once a
species becomes extinct, insurance products are not available to reduce
the risk exposure of these enterprises to an extinction event. For many
species, the dynamics of anthropogenic impacts driven by economic as
well as noneconomic values of associated wildlife products along with
their ecological stressors can help meaningfully predict extinction
risks. We develop an agent/individual-based economic-ecological model
that captures these effects and apply it to the case of South African
rhinos. Our model uses observed rhino dynamics and poaching statistics.
It seeks to predict rhino extinction under the present scenario. This
scenario has no legal horn trade, but allows live African rhino trade
and legal hunting. Present rhino populations are small and threatened by
a rising onslaught of poaching. This present scenario and associated
dynamics predicts continued decline in rhino population size with
accelerated extinction risks of rhinos by 2036. Our model supports the
computation of extinction risks at any future time point. This
capability can be used to evaluate the effectiveness of proposed
conservation strategies at reducing a species' extinction risk. Models
used to compute risk predictions, however, need to be statistically
estimated. We point out that statistically fitting such models to
observations will involve massive numbers of observations on consumer
behavior and time-stamped location observations on thousands of animals.
Finally, we propose Big Data algorithms to perform such estimates and to
interpret the fitted model's output.
Tags
Management
models
Market
Speculation
patterns
growth
Legal trade
Supply chain risk
Species extinction
Rhinoceros