Predicting Imminent Cyanobacterial Blooms in Lakes Using Incomplete Timely Data

Author:

Heggerud Christopher M.12ORCID,Xu Jingjing13,Wang Hao1ORCID,Lewis Mark A.13,Zurawell Ron W.4ORCID,Loewen Charlie J. G.5ORCID,Vinebrooke Rolf D.3ORCID,Ramazi Pouria6ORCID

Affiliation:

1. Department of Mathematical and Statistical Sciences University of Alberta Edmonton AB Canada

2. Department of Environmental Science and Policy University of California, Davis Davis CA USA

3. Department of Biological Sciences University of Alberta Edmonton AB Canada

4. Alberta Environment and Protected Areas Edmonton AB Canada

5. Department of Ecology, Evolution, and Organismal Biology Iowa State University Ames IA USA

6. Department of Mathematics and Statistics Brock University St. Catharines ON Canada

Abstract

AbstractToxic cyanobacterial blooms (CBs) are becoming more frequent globally, posing a threat to freshwater ecosystems. While making long‐range forecasts is overly challenging, predicting imminent CBs is possible from precise monitoring data of the underlying covariates. It is, however, infeasibly costly to conduct precise monitoring on a large scale, leaving most lakes unmonitored or only partially monitored. The challenge is hence to build a predictive model that can use the incomplete, partially‐monitored data to make near‐future CB predictions. By using 30 years of monitoring data for 78 water bodies in Alberta, Canada, combined with data of watershed characteristics (including natural land cover and anthropogenic land use) and meteorological conditions, we train a Bayesian network that predicts future 2‐week CB with an area under the curve (AUC) of 0.83. The only monitoring data that the model needs to reach this level of accuracy are whether the cell count and Secchi depth are low, medium, or high, which can be estimated by advanced high‐resolution imaging technology or trained local citizens. The model is robust against missing values as in the absence of any single covariate, it performs with an AUC of at least 0.78. While taking a major step toward reduced‐cost, less data‐intensive CB forecasting, our results identify those key covariates that are worth the monitoring investment for highly accurate predictions.

Publisher

American Geophysical Union (AGU)

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