Probabilistic Forecasting of Project Duration Using Kalman Filter and the Earned Value Method |
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Authors: | Byung-Cheol Kim Kenneth F. Reinschmidt |
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Affiliation: | 1Assistant Professor, Dept. of Civil Engineering, Ohio Univ., 114 Stocker Center, Athens, OH 45701-2927 (corresponding author). E-mail: kimb@ohio.edu 2Professor of Civil Engineering and J.L. “Corky” Frank/Marathon Ashland Petroleum LLC Chair in Engineering Project Management, Zachry Dept. of Civil Engineering, Texas A&M Univ., 3136 TAMU, College Station, TX 77843-3136.
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Abstract: | The earned value method (EVM) is recognized as a viable method for evaluating and forecasting project cost performance. However, its application to schedule performance forecasting has been limited due to poor accuracy in predicting project durations. Recently, several EVM-based schedule forecasting methods were introduced. However, these are still deterministic and have large prediction errors early in the project due to small sample size. In this paper, a new forecasting method is developed based on Kalman filter and the earned schedule method. The Kalman filter forecasting method (KFFM) provides probabilistic predictions of project duration at completion and can be used from the beginning of a project without significant loss of accuracy. KFFM has been programmed in an add-in for Microsoft Excel and it can be implemented on all kinds of projects monitored by EVM or any other S-curve approach. Applications on two real projects are presented here to demonstrate the advantages of KFFM in extracting additional information from data about the status, trend, and future project schedule performance and associated risks. |
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Keywords: | Forecasting Scheduling Kalman filters Construction management |
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