Probabilistic modeling framework for prediction of seismic retrofit cost of buildings

Nasrazadani, H; Mahsuli, M; Talebiyan, H and Kashani, H (2017) Probabilistic modeling framework for prediction of seismic retrofit cost of buildings. Journal of Construction Engineering and Management, 143(8), ISSN 0733-9364

Abstract

This study presents a framework that utilizes Bayesian regression to create probabilistic cost models for retrofit actions. Performance improvement is the key parameter introduced in the proposed framework. The incorporation of this novel feature facilitates the characterization of retrofit cost as a continuous function of the desired performance improvement. Accounting for the performance gained from retrofit enables the use of the models in determining the optimal level of retrofit. Furthermore, accounting for the model uncertainty facilitates the use of the models in risk and reliability analyses. The proposed framework is applied to create seismic retrofit cost models for masonry school buildings in Iran. A cost database of 167 masonry retrofit projects was compiled and used to create cost models for three retrofit actions, namely, Shotcrete, fiber-reinforced polymer, and steel belt. The proposed framework identifies the most influential variables that govern building retrofit cost. Practitioners can use the proposed framework to create cost models for various retrofit actions to decide whether to retrofit a building and to identify the least costly retrofit action.

Item Type: Article
Uncontrolled Keywords: Bayesian regression; probabilistic model; quantitative methods; retrofit cost
Date Deposited: 11 Apr 2025 19:46
Last Modified: 11 Apr 2025 19:46