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Biomass and carbon estimation for scrub mangrove forests and examination of their allometric associated uncertainties. | LitMetric

AI Article Synopsis

  • The study focused on estimating biomass and carbon storage in scrub forests dominated by Avicennia germinans using both existing and novel allometric models for above-ground (AGB) and below-ground (BGB) biomass.
  • Data were collected destructively from 45 trees across three height classes, revealing that increasing topography and salinity positively influenced AGB but negatively affected tree height and BGB contribution.
  • The research suggested that specific allometric models for different height classes improve accuracy in estimating biomass and carbon storage, addressing uncertainties in previous global assessments of mangrove forests.

Article Abstract

Reliable estimates of biomass and carbon storage are essential for the understanding of the environmental drivers and processes that regulate the productivity of scrub forests. The present study estimated total (above-ground, AGB + below-ground, BGB) biomass and carbon storage of a scrub forest dominated by Avicennia germinans (L.) L. based on the existing allometric models for the AGB, while novel models were developed to estimate the BGB. Data collection followed a destructive approach by using the "sampling method", from 45 trees divided into three height classes. Tree height and diameter were used to estimate the BGB of these forests, providing more accurate estimates of their biomass. Our findings indicate the existence of a direct relationship with increasing topography and interstitial salinity, which result in an increase in the percentage contribution of the AGB. By contrast, increasing topography also led to reduction in tree height and contribution of the BGB, although this compartment represents approximately half of the total biomass of these forests. The contribution of BGB estimates increased from 43 to 49.5% from the lowest to the highest height class and the BGB and AGB values reached approximately 87 Mg ha-1 (48.6%) and 91.7 Mg ha-1 (51.4%), respectively. The estimates of the biomass and carbon stocks of scrub mangroves vary considerably worldwide, which reflects the uncertainties derived from the application of distinct sampling methods. Specific models developed for each height class should be considered instead generalist models to reduce the general uncertainties on the production and distribution of biomass and the storage of carbon. Overall, our results overcome a major lacuna in the development of allometric equations to estimate the production of BGB and the storage of carbon by scrub mangrove forests, contributing to the refinement of the total biomass estimates for this type of mangrove forest.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7064231PMC
http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0230008PLOS

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