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Prediction of macroinvertebrate communities in sediments of Flemish watercourses based on artificial neural networks

Prediction of macroinvertebrate communities in sediments of Flemish watercourses based on artificial neural networks

Internationale Vereinigung fuer Theoretische und Angewandte Limnologie Verhandlungen 282: 777-780

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Accession: 023397207

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DOI: 10.1080/03680770.2001.11901819

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