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Using near-term forecasts and uncertainty partitioning to improve predictions of low- frequency cyanobacterial events
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  • Mary E. Lofton,
  • Jennifer A. Brentrup,
  • Whitney S. Beck,
  • Jacob A. Zwart,
  • Ruchi Bhattacharya,
  • Ludmila S. Brighenti,
  • Sarah H. Burnet,
  • Ian M. McCullough,
  • Bethel G. Steele,
  • Cayelan C. Carey,
  • Kathryn L. Cottingham,
  • Michael C. Dietze,
  • Holly A. Ewing,
  • Kathleen C. Weathers,
  • Shannon L. LaDeau
Mary E. Lofton
Virginia Tech

Corresponding Author:[email protected]

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Jennifer A. Brentrup
University of Vermont
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Whitney S. Beck
Colorado State
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Jacob A. Zwart
United States Geological Survey
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Ruchi Bhattacharya
University of Waterloo
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Ludmila S. Brighenti
Universidade do Estado de Minas Gerais
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Sarah H. Burnet
University of Idaho
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Ian M. McCullough
Michigan State University
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Bethel G. Steele
Cary Institute of Ecosystem Studies
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Cayelan C. Carey
Virginia Tech
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Kathryn L. Cottingham
Dartmouth College
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Michael C. Dietze
Boston University
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Holly A. Ewing
Bates College
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Kathleen C. Weathers
Cary Institute of Ecosystem Studies
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Shannon L. LaDeau
Cary Institute of Ecosystem Studies
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Abstract

Near-term ecological forecasts provide resource managers advance notice of changes in ecosystem services, such as fisheries stocks, timber yields, or water and air quality. Importantly, ecological forecasts can identify where uncertainty enters the forecasting system, which is necessary to refine and improve forecast skill and guide interpretation of forecast results. Uncertainty partitioning identifies the relative contributions to total forecast variance (uncertainty) introduced by different sources, including specification of the model structure, errors in driver data, and estimation of initial state conditions. Uncertainty partitioning could be particularly useful in improving forecasts of high-density cyanobacterial events, which are difficult to predict and present a persistent challenge for lake managers. Cyanobacteria can produce toxic or unsightly surface scums and advance warning of these events could help managers mitigate water quality issues. Here, we calibrate fourteen Bayesian state-space models to evaluate different hypotheses about cyanobacterial growth using data from eight summers of weekly cyanobacteria density samples in an oligotrophic (low nutrient) lake that experiences sporadic surface scums of the toxin-producing cyanobacterium, Gloeotrichia echinulata. We identify dominant sources of uncertainty for near-term (one-week to four-week) forecasts of G. echinulata densities over two years. Water temperature was an important predictor in calibration and at the four-week forecast horizon. However, no environmental covariates improved over a simple autoregressive (AR) model at the one-week horizon. Even the best fit models exhibited large variance in forecasted cyanobacterial densities and often did not capture rare peak density occurrences, indicating that significant explanatory variables in calibration are not always effective for near-term forecasting of low-frequency events. Uncertainty partitioning revealed that model process specification and initial conditions uncertainty dominated forecasts at both time horizons. These findings suggest that observed densities result from both growth and movement of G. echinulata, and that imperfect observations as well as spatial misalignment of environmental data and cyanobacteria observations affect forecast skill. Future research efforts should prioritize long-term studies to refine process understanding and increased sampling frequency and replication to better define initial conditions. Our results emphasize the importance of ecological forecasting principles and uncertainty partitioning to refine and understand predictive capacity across ecosystems.