Ko, C H and Cheng, M Y (2007) Dynamic prediction of project success using artificial intelligence. Journal of Construction Engineering and Management, 133(4), pp. 316-324. ISSN 0733-9364
Abstract
The purpose of construction management is to successfully accomplish projects, which requires a continuous monitoring and control procedure. To dynamically predict project success, this research proposes an evolutionary project success prediction model (EPSPM). The model is developed based on a hybrid approach that fuses genetic algorithms (GAs), fuzzy logic (FL), and neural networks (NNs). In EPSPM, GAs are primarily used for optimization, FL for approximate reasoning, and NNs for input-output mapping. Furthermore, the model integrates the process of continuous assessment of project performance to dynamically select factors that influence project success. The validation results show that the proposed EPSPM, driven by a hybrid artificial intelligence technique, could be used as an intelligent decision support system, for project managers, to control projects in a real time base.
Item Type: | Article |
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Uncontrolled Keywords: | artificial intelligence; evolutionary computation; fuzzy sets; neural networks; predictions; project management |
Date Deposited: | 11 Apr 2025 19:42 |
Last Modified: | 11 Apr 2025 19:42 |