4.7 Article

Fine-Tuning Heat Stress Algorithms to Optimise Global Predictions of Mass Coral Bleaching

期刊

REMOTE SENSING
卷 13, 期 14, 页码 -

出版社

MDPI
DOI: 10.3390/rs13142677

关键词

marine heatwaves; sea surface temperature; mass coral bleaching; algorithm optimisation; spatiotemporal Bayesian modelling; R-INLA

资金

  1. Natural Environment Research Council's ONE Planet Doctoral Training Partnership [NE/S007512/1]
  2. European Research Council Horizon 2020 project CORALASSIST [725848]
  3. NOAA at the University of Maryland/ESSIC [NA19NES4320002]
  4. European Research Council (ERC) [725848] Funding Source: European Research Council (ERC)

向作者/读者索取更多资源

Increasingly intense marine heatwaves threaten marine ecosystems, with mass coral bleaching causing catastrophic coral mortality. Fine-tuning coral bleaching prediction algorithms can improve accuracy of predictions and reduce detrimental impacts on coral reefs.
Increasingly intense marine heatwaves threaten the persistence of many marine ecosystems. Heat stress-mediated episodes of mass coral bleaching have led to catastrophic coral mortality globally. Remotely monitoring and forecasting such biotic responses to heat stress is key for effective marine ecosystem management. The Degree Heating Week (DHW) metric, designed to monitor coral bleaching risk, reflects the duration and intensity of heat stress events and is computed by accumulating SST anomalies (HotSpot) relative to a stress threshold over a 12-week moving window. Despite significant improvements in the underlying SST datasets, corresponding revisions of the HotSpot threshold and accumulation window are still lacking. Here, we fine-tune the operational DHW algorithm to optimise coral bleaching predictions using the 5 km satellite-based SSTs (CoralTemp v3.1) and a global coral bleaching dataset (37,871 observations, National Oceanic and Atmospheric Administration). After developing 234 test DHW algorithms with different combinations of the HotSpot threshold and accumulation window, we compared their bleaching prediction ability using spatiotemporal Bayesian hierarchical models and sensitivity-specificity analyses. Peak DHW performance was reached using HotSpot thresholds less than or equal to the maximum of monthly means SST climatology (MMM) and accumulation windows of 4-8 weeks. This new configuration correctly predicted up to an additional 310 bleaching observations globally compared to the operational DHW algorithm, an improved hit rate of 7.9%. Given the detrimental impacts of marine heatwaves across ecosystems, heat stress algorithms could also be fine-tuned for other biological systems, improving scientific accuracy, and enabling ecosystem governance.

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