Predicting eutrophication effects in the Burrinjuck Reservoir (Australia) by means of the deterministic model SALMO and the recurrent neural network model ANNA
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Friedrich Recknagel | F. Recknagel | M. Walter | C. Carpenter | M. Bormans | Mark Walter | Craig Carpenter | Myriam Bormans
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