LSTM networks provide efficient cyanobacterial blooms forecasting even with incomplete spatio-temporal data
Claudia Fournier, Raul Fernandez-Fernandez, Samuel Cir\'es, Jos\'e A., L\'opez-Orozco, Eva Besada-Portas, Antonio Quesada

TL;DR
This study develops an effective early warning system using LSTM neural networks to forecast cyanobacterial blooms with incomplete spatio-temporal data, achieving high accuracy and long-term prediction capabilities.
Contribution
It introduces a probe-agnostic data preprocessing method and compares multiple predictive models, demonstrating LSTM's superior performance in bloom forecasting.
Findings
LSTM achieved up to 90% accuracy in bloom prediction.
LSTM effectively forecasted blooms 16 to 28 days in advance.
Multivariate models outperformed univariate models across metrics.
Abstract
Cyanobacteria are the most frequent dominant species of algal blooms in inland waters, threatening ecosystem function and water quality, especially when toxin-producing strains predominate. Enhanced by anthropogenic activities and global warming, cyanobacterial blooms are expected to increase in frequency and global distribution. Early warning systems (EWS) for cyanobacterial blooms development allow timely implementation of management measures, reducing the risks associated to these blooms. In this paper, we propose an effective EWS for cyanobacterial bloom forecasting, which uses 6 years of incomplete high-frequency spatio-temporal data from multiparametric probes, including phycocyanin (PC) fluorescence as a proxy for cyanobacteria. A probe agnostic and replicable method is proposed to pre-process the data and to generate time series specific for cyanobacterial bloom forecasting.…
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Taxonomy
MethodsSigmoid Activation · Tanh Activation · Linear Regression · BLOOM · Long Short-Term Memory
