International Concrete Abstracts Portal

  


Title: Comparative Cost Analysis of Using High-Performance Concrete in Tall Building Construction by Artificial Neural Networks

Author(s): C. M. Tam and Clara F. Fang

Publication: Structural Journal

Volume: 96

Issue: 6

Appears on pages(s): 927-936

Keywords: construction costs; high-performance concrete; structural design.

DOI: 10.14359/767

Date: 11/1/1999

Abstract:
Artificial neural networks are used in this investigation to establish the relationship between the quantities/costs of concrete and formwork required for the structural elements of high-rise commercial buildings (including solid slabs, beams, columns and shear walls, and the entire structure) and the design variables (grid sizes, number of stories, and grades of concrete). Two neural network-based schemes—hierarchical and hybrid predictions on cost estimation—are compared. The fast back-propagation algorithm is used for training the feed-forward network. After training, the neural network models have been proven to be accurate in predicting the costs of using high-performance concrete in wall-frame structures for high-rise building construction. Verifications are also conducted using a separate set of design parameters. The paper concludes with a comprehensive discussion on the prediction results.


ALSO AVAILABLE IN:

Electronic Structural Journal



  


ABOUT THE INTERNATIONAL CONCRETE ABSTRACTS PORTAL

  • The International Concrete Abstracts Portal is an ACI led collaboration with leading technical organizations from within the international concrete industry and offers the most comprehensive collection of published concrete abstracts.