000 01897nam a2200193Ia 4500
003 MX-MdCICY
005 20250625162428.0
040 _cCICY
090 _aB-19280
245 1 0 _aMachine Learning Applications for Building Structural Design and Performance Assessment: State-of-the-Art Review
490 0 _vJournal of Building Engineering, 33(101816), 2021
520 3 _aMachine learning models have been shown to be useful for predicting and assessing structural performance, identifying structural condition and informing preemptive and recovery decisions by extracting patterns from data collected via various sources and media. This paper presents a review of the historical development and recent advances in the application of machine learning to the area of building structural design and performance assessment. To this end, an overview of machine learning theory and the most relevant algorithms is provided with the goal of identifying problems suitable for machine learning and the appropriate models to use. The machine learning applications in building structural design and performance assessment are then reviewed in four main categories: (1)predicting structural response and performance, (2)interpreting experimental data and formulating models to predict component-level structural properties, (3)information retrieval using images and written text and (4)recognizing patterns in structural health monitoring data. The challenges of bringing machine learning into structural engineering practice are identified, and future research opportunities are discussed.
700 1 2 _aSun, H.
700 1 2 _aBurton, H. V.
700 1 2 _aHuang, H.
856 4 0 _uhttps://drive.google.com/file/d/1LNDronNd8JdbiY9wq0vznjU-ZFFLyiFg/view?usp=drivesdk
_zPara ver el documento ingresa a Google con tu cuenta: @cicy.edu.mx
942 _2Loc
_cREF1
008 250602s9999 xx |||||s2 |||| ||und|d
999 _c53417
_d53417