Comparative cost analysis of using high-performance concrete in tall building construction by artificial neural networks

Authors
Citation
Cm. Tam et Cf. Fang, Comparative cost analysis of using high-performance concrete in tall building construction by artificial neural networks, ACI STRUC J, 96(6), 1999, pp. 927-936
Citations number
23
Categorie Soggetti
Civil Engineering
Journal title
ACI STRUCTURAL JOURNAL
ISSN journal
08893241 → ACNP
Volume
96
Issue
6
Year of publication
1999
Pages
927 - 936
Database
ISI
SICI code
0889-3241(199911/12)96:6<927:CCAOUH>2.0.ZU;2-D
Abstract
Artificial neural networks are used in this investigation to establish the relationship between the quantities/costs of concrete and form-work require d for the structural elements of high-rise commercial buildings (including solid slabs, beams, columns and shear walls, and thr entire structure) and the design variables (grid sizes, number of stories, ann,grades of concrete ). Two neural network-based schemes-hierarchical and hybrid predictions on cost estimation-are compared. The fast back-propagation algorithm is used f or training the feed-forward network. After training, the neural network wo rk models have been proven to be accurate in predicting the costs of using high-performance concrete in wall-frame structures for high-rise building c onstruction. Verifications ale also conducted using a separate set of desig n parameters. The paper concludes with a comprehensive discussion on the pr ediction results.