2024
DOI: 10.1111/mice.13387
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Machine learning‐aided prediction of windstorm‐induced vibration responses of long‐span suspension bridges

Alireza Entezami,
Hassan Sarmadi

Abstract: Long‐span suspension bridges are significantly susceptible to windstorm‐induced vibrations, leading to critical challenges of field measurements along with multicollinearity and nonlinearity between wind features and bridge dynamic responses. To address these issues, this article proposes an innovative machine learning‐assisted predictive method by integrating a predictor selector developed from regularized neighborhood components analysis and kernel regression modeling through a regularized support vector mac… Show more

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