The use of advanced and emerging technologies for adaptive ecosystem-based management of the Great Lakes

Authors

  • Edward M. Verhamme Freeboard Technology and LimnoTech, 501 Avis Dr., Ann Arbor, MI, 48108
  • John F. Bratton LimnoTech, Ann Arbor, MI
  • Jay A. Austin University of Minnesota-Duluth
  • Caren E. Binding Environment and Climate Change Canada. Burlington, ON
  • Paris D. Collingsworth Illinois-Indiana Sea Grant, Chicago, IL
  • Gregory J. Dick University of Michigan, Ann Arbor, MI
  • Joanna Grand Audubon Society, Northampton, MA
  • John H. Hartig University of Windsor, Windsor, ON
  • Hayden M. Henderson Michigan Technological University, Houghton, MI
  • R. Michael McKay University of Windsor, Windsor, ON
  • Basia Pioro-McGuire University of Windsor, Windsor, ON
  • Catherine M. Riseng Michigan Sea Grant (retired), Ann Arbor, MI
  • Emily Varga University of Windsor, Windsor, ON

Keywords:

dyanmics, autonomous, instrumentation, buoy, community science, Indigenous Knowledge

Abstract

The Great Lakes and connecting waters encompass a vast and diverse ecosystem that presents scale challenges for management similar to those of the coastal ocean. Technological approaches to overcome the scale challenges have primarily been adapted from oceanographic applications and technologies, and from upscaling inland lake methods designed for shallower and calmer water bodies. Many standard methods for studying Great Lakes habitat and biota have long lag times between field collection and data availability. Many also miss much of the dynamics, three-dimensional complexity, and spatial variability needed to manage the system effectively. Even baseline conditions are not well characterized for many parts of the Great Lakes ecosystem (e.g. bathymetry and critical habitat, life cycles and food webs, night and winter movement and activity of organisms). Emerging technologies are beginning to address these needs but require coordination, consistent investment, training, and governance linkages. Here we survey recent technological advances and show how they are contributing to improved adaptive management of the Great Lakes ecosystem by reducing uncertainty and increasing understanding of physical, biological, and chemical processes, and the human dimensions of resource management and restoration.

Published

2024-04-01