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Hydroscience Journal
Volume 108, 2022 - Issue 1
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Research Article

Intelligent generation method of emergency plan for hydraulic engineering based on knowledge graph – take the South-to-North Water Diversion Project as an example

Méthode de génération intelligente d’un plan d’urgence pour l’ingénierie hydraulique à partir d’un graphe de connaissances – l’exemple du projet de dérivation des eaux Sud–Nord

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Article: 2153629 | Published online: 18 Jan 2023

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