2024
DOI: 10.1038/s41598-024-79983-y
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Applying clustered artificial neural networks to enhance contaminant diffusion prediction in geotechnical engineering

Shaymaa Alsamia,
Edina Koch

Abstract: This paper introduces a novel approach using Clustered Artificial Neural Networks (CLANN) to address the challenge of developing predictive models for multimodal dataset with extreme parameter values. The CLANN method strategically decomposes the dataset, derived from Finite Element Analysis (FEA), into clusters, each representing distinct diffusion behaviors, and applies specialized neural networks within these clusters. The CLANN model was rigorously evaluated and demonstrated superior accuracy and consisten… Show more

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