Technical Papers
Feb 25, 2013

Predicting Construction Materials Prices Using Fuzzy Logic and Neural Networks

Publication: Journal of Construction Engineering and Management
Volume 139, Issue 9

Abstract

Changes in construction materials prices have a great impact on the cost of construction projects. Such changes in prices occur randomly at different rates over time. There is no clear relationship that can be used to provide accurate calculations of materials prices. One of the biggest problems that faces the construction contracts is unbalanced rights and obligations between owners and contractors (the two parties of construction contracts). It is necessary to have a system that is capable of estimating the size and amount of the change in materials prices at reasonable accuracy. There is also a need to predict the change in building materials prices (either increase or decrease) during the execution phase of the project as well as during the preparation of tenders. Thus, determination of the appropriate lead time to order needed building materials to execute various activities could be done. This research presents a system that utilizes fuzzy logic to identify construction materials that are most sensitive to the change in prices. The research proposes a methodology for identification of construction materials that are most sensitive to the change in prices to be used in modifying the contract price with an attempt to predict the amount of future change in materials prices using neural networks technique. To achieve this objective, the research classifies construction cost items into four different components (building materials, equipment, labor, and administrative expenses), which represent the basic cost elements of any cost item. The system is based on the study of the changes in materials prices that occurred in the Egyptian market from 2000 to 2010. It also provides the impact on the prices of cost items in the priced bill of quantities (BOQ), which is determined by the change in prices of cost items’ materials and their share percent on forming the cost item. Getting to identify materials’ share in the bill of quantities’ items has a great influence on the price of the cost item and the priority in ordering these materials according to their impact on the item’s price. The developed system aids construction contractors in studying bids during the tendering stage and procurement planning during the project’s execution. It can also be used by owners’ representatives to estimate the expected total cost of upcoming projects. The system data are obtained from the Central Agency for Public Mobilization and Statistics in Egypt through published periodicals. A numerical example is presented to demonstrate the use of the proposed system.

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References

Akintoye, S. A., and Skitmore, R. M. (1994). “A comparative analysis of three macro price forecasting models.” Constr. Manage. Econ., 12(3), 257–270.
Ashuri, B., and Lu, J. (2010). “Time series analysis of ENR construction cost index.” J. Constr. Eng. Manage., 136(11), 1227–1237.
Cakir, O., and Canbolat, M. S. (2008). “A web-based decision support system for multi-criteria inventory classification using fuzzy AHP methodology.” Expert Syst. Appl., 35(3), 1367–1378.
Chan, A. P. C., Chan, D. W. M., and Yeung, J. F. Y. (2009). “Overview of the application of fuzzy techniques in construction management research.” J. Constr. Eng. Manage., 135(11), 1241–1252.
Chin, T. C., and Mital, D. P. (1998). “Time series modelling and forecasting of Singapore property price: An optimal control approach.” Proc., 2nd Int. Conf. on Knowledge-Based Intelligent Electronic Systems, IEEE, New York, 370–375.
Fellows, R. F. (1991). “Escalation management: Forecasting the effects of inflation on building projects.” Constr. Manage. Econ., 9(2), 187–204.
Koehn, E., and Navvabi, M. H. (1989). “Economics and social factors in construction.” Coastal Eng., 31(10), 15–18.
Mccaffer, R., McCaffrey, M. J., and Thorpe, A. (1984). “Predicting the tender price of buildings in the early design stage: Method and validation.” J. Oper. Res. Soc., 35(5), 415–424.
Ng, S. T., Cheung, S. O., Skitmore, R. M., Lam, K. C., and Wong, L. Y. (2000). “The prediction of tender price index directional changes.” Constr. Manage. Econ., 18(7), 843–852.
Plebankiewicz, E. (2009). “Contractor prequalification model using fuzzy sets.” J. Constr. Eng. Manage., 15(4), 377–385.
Runeson, K. G. (1988). “Methodology and method for price-level forecasting in the building industry.” Constr. Manage. Econ., 6(1), 49–55.
Singh, D., and Tiong, R. L. K. (2005). “A fuzzy decision framework for contractor selection.” J. Constr. Eng. Manage., 131(1), 62–70.
Sivarao, B. P., El-Tayeb, N. S. M., and Vengkatesh, V. C. (2009). “Mamdani fuzzy inference system modeling to predict surface roughness in laser machining.” Int. J. Intell. Inf. Technol. Appl., 2(1), 12–18.
Taylor, R. G., and Bowen, P. A. (1987). “Building price-level forecasting: An examination of techniques and applications.” Constr. Manage. Econ., 5(1), 21–44.
Trost, S. M., and Oberlender, G. D. (2003). “Predicting accuracy of early cost estimates using factor analysis and multivariate regression.” J. Constr. Eng. Manage., 129(2), 98–204.
Wang, C. H., and Mei, Y. H. (1998). “Model for forecasting construction cost indices in Taiwan.” Constr. Manage. Econ., 16(2), 147–157.
Wong, M. W., Chan, P. C., and Chiang, Y. H. (2005). “Time series forecasts of construction labor market in Hong Kong: The Box-Jenkins approach.” Constr. Manage. Econ., 23(9), 979–991.
Zadeh, L. A. (1975). “The concept of a linguistic variable and its application to approximate reasoning.” Inf. Sci., 8(3), 199–249.

Information & Authors

Information

Published In

Go to Journal of Construction Engineering and Management
Journal of Construction Engineering and Management
Volume 139Issue 9September 2013
Pages: 1190 - 1198

History

Received: Oct 8, 2011
Accepted: Feb 22, 2013
Published online: Feb 25, 2013
Discussion open until: Jul 25, 2013
Published in print: Sep 1, 2013

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Authors

Affiliations

Mohamed Marzouk [email protected]
Associate Professor, Structural Engineering Dept., Faculty of Engineering, Cairo Univ., Giza 12211, Egypt (corresponding author). E-mail: [email protected]
Ahmed Amin
Graduate Student, Structural Engineering Dept., Faculty of Engineering, Cairo Univ., Giza 12211, Egypt.

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