Estimation of infrastructure performance models using state-space specifications of time series models

We consider state-space specifications of autoregressive moving average models (ARMA) and structural time series models as a framework to formulate and estimate inspection and deterioration models for transportation infrastructure facilities. The framework provides a rigorous approach to exploit the abundance and breadth of condition data generated by advanced inspection technologies. From a managerial perspective, the framework is attractive because the ensuing models can be used to forecast infrastructure condition in a manner that is useful to support maintenance and repair optimization, and thus they constitute an alternative to Markovian transition probabilities. To illustrate the methodology, we develop performance models for asphalt pavements. Pressure and deflection measurements generated by pressure sensors and a falling weight deflectometer, respectively, are represented as manifestations of the pavement’s elasticity/load-bearing capacity. The numerical results highlight the advantages of the two classes of models; that is, ARMA models have superior data-fitting capabilities, while structural time series models are parsimonious and provide a framework to identify components, such as trend, seasonality and random errors. We use the numerical examples to show how the framework can accommodate missing values, and also to discuss how the results can be used to evaluate and select between inspection technologies.

[1]  Frannie Humplick,et al.  HIGHWAY PAVEMENT DISTRESS EVALUATION: MODELING MEASUREMENT ERROR , 1992 .

[2]  Andrew Harvey,et al.  Forecasting, Structural Time Series Models and the Kalman Filter , 1990 .

[3]  Matthew G. Karlaftis,et al.  Probabilistic Infrastructure Deterioration Models with Panel Data , 1997 .

[4]  Moshe E. Ben-Akiva,et al.  Optimal Inspection and Repair Policies for Infrastructure Facilities , 1994, Transp. Sci..

[5]  Melvin J. Hinich,et al.  Time Series Analysis by State Space Methods , 2001 .

[6]  William D. O. Paterson Road Deterioration and Maintenance Effects: Models for Planning and Management , 1988 .

[7]  Moshe Ben-Akiva,et al.  Modeling Infrastructure Performance and User Costs , 1995 .

[8]  Pablo Luis Durango-Cohen,et al.  Estimation of dynamic performance models for transportation infrastructure using panel data , 2008 .

[9]  Chih-Yuan Chu Estimation of Latent Infrastructure Performance Models Using Time Series Analysis , 2005 .

[10]  Pablo Luis Durango-Cohen,et al.  A time series analysis framework for transportation infrastructure management , 2007 .

[11]  W L Gramling Current practices in determining pavement condition , 1994 .

[12]  Kamal Golabi,et al.  INNOVATIVE PAVEMENT MANAGEMENT AND PLANNING SYSTEM FOR ROAD NETWORK OF PORTUGAL , 2003 .

[13]  Samer Madanat,et al.  Computation of Infrastructure Transition Probabilities using Stochastic Duration Models , 2002 .

[14]  Moshe E. Ben-Akiva,et al.  An Approach for Predicting Latent Infrastructure Facility Deterioration , 1993, Transp. Sci..

[15]  S. Emerson,et al.  AASHTO (American Association of State Highway and Transportation Officials). 2001. A Policy on Geometric Design of Highways and Streets. Fourth Edition. Washington, D.C. , 2007 .

[16]  M. Morf,et al.  Square-root algorithms for least-squares estimation , 1975 .