Data Driven Methods for Civil Structural Health Monitoring and Resilience: Latest Developments and Applications provides a comprehensive overview of data-driven methods for structural health monitoring (SHM) and resilience of civil engineering structures, mostly based on artificial intelligence or other advanced data science techniques. This allows existing structures to be turned into smart structures, thereby able to provide intelligible information about their state of health and performance on a continuous, relatively real-time basis. Artificial-intelligence based methodologies are becoming increasingly more attractive for civil engineering and SHM applications; machine learning and deep learning methods can be applied and further developed to transform the available data into valuable information for engineers and decision makers.

Data Driven Methods for Civil Structural Health Monitoring and Resilience - Latest Developments and Applications / Noori, Mohammad; Rainieri, Carlo; Domaneschi, Marco; Sarhosis, Vasilis. - STAMPA. - (2023), pp. 1-341. [10.1201/9781003306924]

Data Driven Methods for Civil Structural Health Monitoring and Resilience - Latest Developments and Applications

Marco Domaneschi;
2023

Abstract

Data Driven Methods for Civil Structural Health Monitoring and Resilience: Latest Developments and Applications provides a comprehensive overview of data-driven methods for structural health monitoring (SHM) and resilience of civil engineering structures, mostly based on artificial intelligence or other advanced data science techniques. This allows existing structures to be turned into smart structures, thereby able to provide intelligible information about their state of health and performance on a continuous, relatively real-time basis. Artificial-intelligence based methodologies are becoming increasingly more attractive for civil engineering and SHM applications; machine learning and deep learning methods can be applied and further developed to transform the available data into valuable information for engineers and decision makers.
2023
1032308370
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/2979118