Predicting the Distribution of Commercially Important Invertebrate Stocks under Future Climate

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Abstract

The future management of commercially exploited species is challenging because techniques used to predict the future distribution of stocks under climate change are currently inadequate. We projected the future distribution and abundance of two commercially harvested abalone species (blacklip abalone, Haliotis rubra and greenlip abalone, H. laevigata) inhabiting coastal South Australia, using multiple species distribution models (SDM) and for decadal time slices through to 2100. Projections are based on two contrasting global greenhouse gas emissions scenarios. The SDMs identified August (winter) Sea Surface Temperature (SST) as the best descriptor of abundance and forecast that warming of winter temperatures under both scenarios may be beneficial to both species by allowing increased abundance and expansion into previously uninhabited coasts. This range expansion is unlikely to be realised, however, as projected warming of March SST is projected to exceed temperatures which cause up to 10-fold increases in juvenile mortality. By linking fine-resolution forecasts of sea surface temperature under different climate change scenarios to SDMs and physiological experiments, we provide a practical first approximation of the potential impact of climate-induced change on two species of marine invertebrates in the same fishery. © 2012 Russell et al.

Figures

  • Figure 1. Forecast change in the abundance (number of individuals per 100 m2) of Haliotis rubra (blacklip abalone) and H. laevigata (greenlip abalone) by 2100 based on projections of August SST according to two climate change emissions scenarios: a high CO2 concentration stabilising scenario (WRE750) and a heavy mitigation Policy option (LEV1). doi:10.1371/journal.pone.0046554.g001
  • Figure 2. Changes in potential fishing grounds for Haliotis rubra (blacklip abalone) and H. laevigata (greenlip abalone) in 2100 based on projections of August SST according to two climate change scenarios: a high CO2 concentration stabilising scenario (WRE750) and an alternative scenario that assumes strong mitigation (LEV1). Potential fishing grounds are defined based on a minimum abundance of 20 individuals/100 m2. doi:10.1371/journal.pone.0046554.g002
  • Figure 3. Box plots of the density of (a) greenlip and (b) blacklip abalone within their current distribution in South Australia, categorised according to average March Sea Surface Temperatures. Note the decrease in density of individuals for both species at 20uC and above. doi:10.1371/journal.pone.0046554.g003
  • Figure 4. The percentage of South Australian waters at different mean-March temperatures. (a). Grey bars show currentday temperatures across the entire area, while the white and black bars show the percentage of the current distributions of greenlip (white bars) and blacklip abalone (black bars),at predicted temperatures for 2100 under the high-CO2 Reference scenario and (b) the percentage of predicted abalone distributions (based on SDMs using August SST) which would be at different March temperatures in 2100. The current day temperatures (grey bars) are the same for both (a) and (b). Also note for both (a) and (b) the increase percentage of the area at or above 20uC, meaning that these predicted distributions may not be realised. doi:10.1371/journal.pone.0046554.g004
  • Figure 5. Schematic diagram of a hybrid-modelling approach to identify potential climate-driven changes in the distribution and abundance of commercially harvested species, and to test different fisheries management scenarios. The modelling steps that have been completed are located above the dotted line. The next step is to couple this approach with spatially explicit stochastic-demographic models, to capture some of the complexities and uncertainties underlying biological mechanisms driving species distribution and abundance patterns in response to forecasts of future climate change and harvest pressure. doi:10.1371/journal.pone.0046554.g005

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CITATION STYLE

APA

Russell, B. D., Connell, S. D., Mellin, C., Brook, B. W., Burnell, O. W., & Fordham, D. A. (2012). Predicting the Distribution of Commercially Important Invertebrate Stocks under Future Climate. PLoS ONE, 7(12). https://doi.org/10.1371/journal.pone.0046554

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