4.7 Article

Quantifying the statistical power of monitoring programs for marine protected areas

Journal

ECOLOGICAL APPLICATIONS
Volume 31, Issue 1, Pages -

Publisher

WILEY
DOI: 10.1002/eap.2215

Keywords

integral projection model; monitoring design; remotely operated vehicle; simulation; spatial point process

Funding

  1. California Ocean Protection Council
  2. National Science Foundation [OCE-1909303]

Ask authors/readers for more resources

Marine Protected Areas (MPAs) are being established globally as management tools for conservation and fisheries objectives. This study presents a novel approach combining spatial point process models, integral projection models (IPMs), and sampling simulations to assess the power of different sampling designs across MPAs. Results show that increasing sampling effort is more effective in detecting MPA effects on fish populations, and detectability is higher in sites with higher initial densities.
Marine Protected Areas (MPAs) are increasingly established globally as a spatial management tool to aid in conservation and fisheries management objectives. Assessing whether MPAs are having the desired effects on populations requires effective monitoring programs. A cornerstone of an effective monitoring program is an assessment of the statistical power of sampling designs to detect changes when they occur. We present a novel approach to power assessment that combines spatial point process models, integral projection models (IPMs) and sampling simulations to assess the power of different sample designs across a network of MPAs. We focus on the use of remotely operated vehicle (ROV) video cameras as the sampling method, though the results could be extended to other sampling methods. We use empirical data from baseline surveys of an example indicator fish species across three MPAs in California, USA as a case study. Spatial models simulated time series of spatial distributions across sites that accounted for the effects of environmental covariates, while IPMs simulated expected trends over time in abundances and sizes of fish. We tested the power of different levels of sampling effort (i.e., the number of 500-m ROV transects) and temporal replication (every 1-3 yr) to detect expected post-MPA changes in fish abundance and biomass. We found that changes in biomass are detectable earlier than changes in abundance. We also found that detectability of MPA effects was higher in sites with higher initial densities. Increasing the sampling effort had a greater effect than increasing sampling frequency on the time taken to achieve high power. High power was best achieved by combining data from multiple sites. Our approach provides a powerful tool to explore the interaction between sampling effort, spatial distributions, population dynamics, and metrics for detecting change in previously fished populations.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.7
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available