Spatial and Temporal Variability in Stream Thermal Regime Drivers for Three River Networks During the Summer Growing Season.

Matthew R Fuller, Naomi E Detenbeck, Peter Leinenbach, Rochelle Labiosa, Daniel Isaak
Author Information
  1. Matthew R Fuller: Oak Ridge Institute for Science and Education Postdoc at the Atlantic Coastal Environmental Sciences Division, U.S. Environmental Protection Agency, Narragansett, Rhode Island, USA [Currently: Northern Research Station, U.S. Forest Service, Amherst, Massachusetts, USA].
  2. Naomi E Detenbeck: Atlantic Coastal Environmental Sciences Division, U.S. Environmental Protection Agency, Narragansett, Rhode Island, USA.
  3. Peter Leinenbach: Region 10, U.S. Environmental Protection Agency, Seattle, Washington, USA.
  4. Rochelle Labiosa: Region 10, U.S. Environmental Protection Agency, Seattle, Washington, USA.
  5. Daniel Isaak: Rocky Mountain Research Station, U.S. Forest Service, Boise, Idaho, USA.

Abstract

Many cold-water dependent aquatic organisms are experiencing habitat and population declines from increasing water temperatures. Identifying mechanisms which drive local and regional stream thermal regimes facilitates restoration at ecologically relevant scales. Stream temperatures vary spatially and temporally both within and among river basins. We developed a modeling process to identify statistical relationships between drivers of stream temperature and covariates representing landscape, climate, and management-related processes. The modeling process was tested in 3 study areas of the Pacific Northwest USA during the growing season (May [start], August [warmest], September [end]). Across all months and study systems, covariates with the highest relative importance represented the physical landscape (elevation [1], catchment area [3], main channel slope [5]) and climate covariates (mean monthly air temperature [2] and discharge [4]). Two management covariates (ground water use [6] and riparian shade [7]) also had high relative importance. Across the growing season (for all basins) local reach slope had high relative importance in May, but transitioned to a regional main channel slope covariate in August and September. This modeling process identified regionally similar and locally unique relationships among drivers of stream temperature. High relative importance of management-related covariates suggested potential restoration actions for each system.

Keywords

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Grants

  1. EPA999999/Intramural EPA

Word Cloud

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