Abstract

AbstractAimMangrove forests are among the most threatened and rapidly vanishing, but poorly understood ecosystems. We aim to uncover the variables driving mangrove biodiversity and produce baseline biodiversity maps for the Sundarbans world heritage site—the Earth's largest contiguous mangrove ecosystem.LocationThe Bangladesh Sundarbans, South Asia.MethodsWe collected species abundance, environmental and disturbance data from 110 permanent sample plots (PSPs) covering the entire Bangladesh Sundarbans (6,017 km2). We applied generalized additive models to determine the key variables shaping the spatial distributions of mangrove diversity and community composition. Biodiversity maps were constructed using covariate‐driven habitat models, and their predictive performances were compared with covariate‐free (i.e., direct interpolation) approaches to see whether the inclusion of habitat variables bolster spatial predictions of biodiversity or whether we can rely on direct interpolation approaches when environmental data are not available.ResultsHistorical forest exploitation, disease, siltation and soil alkalinity were the key stressors causing loss of alpha and gamma diversity in mangrove communities. Both alpha and gamma diversity increased along the downstream‐to‐upstream and riverbank‐to‐forest interior gradients. Mangrove communities subjected to intensive past tree harvesting, disease outbreaks and siltation were more homogeneous in species composition (beta diversity). In contrast, heterogeneity in species composition increased along decreasing salinity and downstream‐to‐upstream gradients. We find that the surviving biodiversity hotspots (comprising many globally endangered tree species) are located outside the established protected area network and hence open to human exploitation. We therefore suggest bringing them immediately under protected area management.Main conclusionsWe provide the first habitat‐based modelling and mapping of alpha, beta and gamma diversity in threatened mangrove communities. In general, habitat‐based models showed better predictive ability than the covariate‐free approach. Nevertheless, the small margin of differences between the approaches demonstrates the utility of direct interpolation approaches when environmental data are unavailable.

Highlights

  • Contrary to the common assumption that one or two straightforward environmental gradients control mangrove biodiversity (Ellison, 2001), our results revealed that several environmental drivers, biotic interactions and historical events contribute to the emergence of observed spatial patterns of mangrove biodiversity

  • This study provides the first comprehensive and coherent quantification and habitat‐based modelling of alpha, beta and gamma diversity in threatened mangrove communities of the Sundarbans

  • We find that several environmental drivers, biotic interactions and historical events have combined effects on the biodiversity components

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Summary

| METHODS

The Sundarbans (10,017 km2), a part of Earth's largest delta, the Ganges–Brahmaputra, is distributed in Bangladesh and India. The RI of the covariates in influencing biodiversity indices varied when we changed weight on species relative abundances in the SCs. For example, while HH had no influence on 0ρ (possibly due to high number of shared species between SCs or HH did not lead to species extirpation), it had stronger effects on 1ρand 2ρ, indicating that the influence of past tree harvesting in shaping current community composition becomes clearer when we account for the variability in species relative abundances across the SCs. In general, several abiotic and biotic drivers had combined effects on the spatial distributions of the biodiversity indices. In case of beta diversity, while the predictive ability of the GAM was better than that of kriging for 0ρand 1ρ, both approaches had almost similar prediction error for 2ρ (Table 2)

Findings
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