2023
DOI: 10.1111/jace.19549
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Can domain knowledge benefit machine learning for concrete property prediction?

Zhanzhao Li,
Te Pei,
Weichao Ying
et al.

Abstract: Understanding and predicting process–structure–property–performance relationships for concrete materials is key to designing resilient and sustainable infrastructure. While machine learning has emerged as a powerful tool to supplement empirical analysis and physical modeling, its capabilities are yet to be fully realized due to the massive data requirements and generalizability challenges. To address these limitations, we propose a knowledge‐informed machine learning framework for concrete property prediction … Show more

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Cited by 6 publications
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References 78 publications
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