Published January 27, 2023 | Version v1
Dataset Open

The undetectability of global biodiversity trends using local species richness

  • 1. German Center for Integrative Biodiversity Research
  • 2. Natural History Museum
  • 3. World Conservation Monitoring Centre

Description

Although species are being lost at alarming rates, previous research has provided conflicting results on the extent and even direction of global biodiversity change at the local scale. Here, we assessed the ability to detect global biodiversity trends using local species richness and how it is affected by the number of monitoring sites, sampling interval (i.e., time between original survey and re-survey of the site), measurement error (error of the measurement of the local species richness), spatial grain of monitoring (a proxy for the taxa mobility), and spatial sampling biases (i.e., site-selection biases). We use PREDICTS model-based estimates as a proxy for the real-world distribution of biodiversity and randomly selected monitoring sites to calculate local species richness trends. We found that while a monitoring network with hundreds of sites could detect global change in species richness within a 30-year period, the number of sites for detecting trends doubled for a decade, increased 10-fold within three years, and yearly trends were undetectable. Measurement errors had a non-linear effect on statistical power, with a 1% error reducing statistical power by a slight margin and a 5% error drastically reducing the power to reliably detect any trend. The ability to detect global change in local species richness was also related to spatial grain, making it harder to detect trends for sites sampled at smaller plot sizes. Spatial sampling biases not only reduced the ability to detect negative global biodiversity trends but sometimes yielded positive trends. We conclude that detecting accurate global biodiversity trends using local richness may simply be unfeasible with current approaches. We suggest that monitoring a representative network of sites implemented at the national level, combined with models accounting for errors and biases, can help improve our understanding of global biodiversity change.

Notes

RStudio

R packages:

library(rgdal)  # package to work with shapefiles
library(tidyverse)
library(raster) # package to work with rasters
library(boot) # package to bootstrap
library(ggplot2)
library(reshape)
library(dplyr)
library(rms) #ordinary least square models
library(wesanderson) #color palette
library(pwr) #power analyses
library(ebvcube)#work with netcdf files
library(rhdf5)#for the netCDF

Funding provided by: Horizon 2020
Crossref Funder Registry ID: http://dx.doi.org/10.13039/501100007601
Award Number: 101003553

Files

PREDICTS_models_netCDF.zip

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