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040 _aAIKTC-KRRC
_cAIKTC-KRRC
100 _918152
_aVigneshwaran, R.
245 _aPrediction of wind-induced pressure on pentagon plan shape building using artificial neural network
250 _aVol.103(2), June
260 _aNew York
_bSpringer
_c2022
300 _a581-600p.
520 _aNowadays, with the development of composite materials and construction technique, it is feasible to construct tall buildings to a desired height. In the design of tall buildings, wind loads are the major design criteria to be considered by structural engineers and architects. This paper explores the mean pressure coefficient (mean Cp) on pentagon plan shape building using artificial neural networks (ANN). The input for ANN is obtained by performing CFD simulation for the wind angles 0° to 180° at an interval of 15°. The Levenberg–Marquardt training function and mean square error (MSE) performance function are utilized to train the target data. The network is trained till the correlation (R) reaches between 0.9 and 1, respectively. The results have shown that the mean values of Cp obtained from CFD and ANN are in good agreement. Furthermore, mean pressure coefficient (Cp) for intermediate wind angles for pentagon plan shape building is obtained using ANN. A sample check is made on the wind angles 35° and 165°, and the obtained results are within the permissible limits.
650 0 _94642
_aHumanities and Applied Sciences
700 _913605
_aPrabavathy, S.
773 0 _dSwitzerland Springer
_tJournal of the institution of engineers (India): Series A
_x 2250-2149
856 _uhttps://link.springer.com/article/10.1007/s40030-022-00626-4
_yClick here
942 _2ddc
_cAR