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Predicting productivity loss caused by change orders using the evolutionary fuzzy support vector machine inference model

    Min-Yuan Cheng Affiliation
    ; Dedy Kurniawan Wibowo Affiliation
    ; Doddy Prayogo Affiliation
    ; Andreas F. V. Roy Affiliation

Abstract

Change orders in construction projects are very common and result in negative impacts on various project facets. The impact of change orders on labor productivity is particularly difficult to quantify. Traditional approaches are inadequate to calculate the complex input-output relationship necessary to measure the effect of change orders. This study develops the Evolutionary Fuzzy Support Vector Machines Inference Model (EFSIM) to more accurately predict change-order-related productivity losses. The EFSIM is an AI-based tool that combines fuzzy logic (FL), support vector machine (SVM), and fast messy genetic algorithm (fmGA). The SVM is utilized as a supervised learning technique to solve classification and regression problems; the FL is used to quantify vagueness and uncertainty; and the fmGA is applied to optimize model parameters. A case study is presented to demonstrate and validate EFSIM performance. Simulation results and our validation against previous studies demonstrate that the EFSIM predicts the impact of change orders significantly better than other AI-based tools including the artificial neural network (ANN), support vector machine (SVM), and evolutionary support vector machine inference model (ESIM).

Keyword : change orders, productivity loss, fuzzy logic, support vector machine, fast messy genetic algorithm

How to Cite
Cheng, M.-Y., Wibowo, D. K., Prayogo, D., & Roy, A. F. V. (2015). Predicting productivity loss caused by change orders using the evolutionary fuzzy support vector machine inference model. Journal of Civil Engineering and Management, 21(7), 881-892. https://doi.org/10.3846/13923730.2014.893922
Published in Issue
Jul 10, 2015
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This work is licensed under a Creative Commons Attribution 4.0 International License.