Designing More Informative Multiple-Driver Experiments

Ann Rev Mar Sci. 2024 Jan 17:16:513-536. doi: 10.1146/annurev-marine-041823-095913. Epub 2023 Aug 25.

Abstract

For decades, multiple-driver/stressor research has examined interactions among drivers that will undergo large changes in the future: temperature, pH, nutrients, oxygen, pathogens, and more. However, the most commonly used experimental designs-present-versus-future and ANOVA-fail to contribute to general understanding or predictive power. Linking experimental design to process-based mathematical models would help us predict how ecosystems will behave in novel environmental conditions. We review a range of experimental designs and assess the best experimental path toward a predictive ecology. Full factorial response surface, fractional factorial, quadratic response surface, custom, space-filling, and especially optimal and sequential/adaptive designs can help us achieve more valuable scientific goals. Experiments using these designs are challenging to perform with long-lived organisms or at the community and ecosystem levels. But they remain our most promising path toward linking experiments and theory in multiple-driver research and making accurate, useful predictions.

Keywords: anthropogenic change; experimental design; interactions; multiple stressors; predictive ecology; theory–experiment integration.

Publication types

  • Review

MeSH terms

  • Ecology*
  • Ecosystem*
  • Nutrients
  • Oxygen
  • Temperature

Substances

  • Oxygen