User perceptions of highway roughness

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Presentation transcript:

User perceptions of highway roughness Kevan Shafizadeh and Fred Mannering

Supporting Material See online paper: Shafizadeh, K., Mannering, F., 2006. Statistical modeling of user perceptions of infrastructure condition: An application to the case of highway roughness. Journal of Transportation Engineering 132(2), 133-140. See Chapter 14 (new book)

Background States invest millions of dollars annually measuring the physical condition of their highways Such measurements are used to allocate resources for repair and reconstruction Are the correct factors being measured? How do physical measurements correspond to public perceptions?

Factors usually measured: Rutting Faulting Cracking Patching Scaling

Rutting (surface deflection in wheel path):

Alligator (fatigue) Cracking:

Slippage Cracking:

Traverse Thermal Cracking:

Patching:

Scaling:

Faulting:

International Roughness Index (IRI) Widely accepted measure of pavement condition IRI procedures were developed by the World Bank in Brazil Measures suspension movement over some longitudinal distance (in/mi) IRI correlates with vertical passenger acceleration and tire load

International Roughness Index (IRI)

IRI and pavement quality Very good (<60 in/mi), Good (61-94 in/mi), Fair (95-119 in/mi for Interstates, 95-170 in/mi for other roads), Mediocre (120-170 in/mi for Interstates, 171-220 in/mi for other roads) and Poor (>170 in/mi for Interstates, >220 in/mi for other roads)

PSI and pavement condition (what we used) Excellent (4.1– 5.0) ~ (IRI<60 in/mi), Good (3.1– 4.0) ~ (61-94 in/mi), Fair (2.1– 3.0) ~ (95-170 in/mi for Interstates, 95-220 in/mi for other roads), Poor (1.1– 2.0) ~ (>170 in/mi for Interstates, >220 in/mi for other roads) Very Poor (0 – 1.0)

Study Motivation To determine how user perceptions of pavement roughness relate to the IRI and other factors

What makes a road feel rough?

Factors likely to determine roughness opinion Socioeconomic (age, income, etc.) Type of vehicle driven Interior noise level Passenger expectations when driving from one pavement condition to the next Physical measures of pavement condition

Study approach: Have 31 individuals drive a variety of vehicles (mid-sized sedan, sport-utility vehicle, pick-up truck, minivan) Individuals drive over a circuit of Seattle freeways that includes 37 segments with detailed data from pavement databases (IRI, Pavement structural condition, patching, pavement type, etc.)

Seattle Freeway Map:

Study approach (continued): In addition to physical pavement measurements, on the 37 sections data are collected on: 1(smooth) to 5 (rough) scale of roughness impression Interior vehicle noise Vehicle speed Weather conditions Pavement surface (wet or dry)

Statistical Modeling Methodology Ratings of roadway roughness on a scale from one to five – with one being the smoothest and five being the roughest. Use an ordered probit model. Define an unobserved variable z for each observation n zn = βXn + εn where: X is a vector of variables determining the discrete ordering for observation n, β is a vector of estimable coefficients, and ε is a random disturbance

Observed ordinal data are defined: where: μ’s are estimable thresholds that define yn

Figure 11-6: Illustration of an ordered probability model with 0= 0. 0.3 y = 3 0.2 y = 2 y = 4 0.1 y = 1 y = 5 - X 1- X 2- X 3- X 

Figure 11-7: Illustration of an ordered probability models with an increase in X (with 0= 0). 0.3 y = 3 0.2 y = 2 y = 4 0.1 y = 1 y = 5 - X 1- X 2- X 3- X 

Random effects: To account for repeat observations (37 opinions for each person) we use a random effects model: zic = βXic + εic + φi Where: I denotes an individual (1 to 31); c denotes roadway segments (1 to 37) and, φi is an individual specific error term that is normally distributed

General results (midsized vehicle) Poor

General results (SUV) Poor

General results (pickup truck) Poor

General results (minivan) Poor

Summary data: Percent of male/female respondents 64.5/35.5 Avg. household size 2.7 Average household annual 55,000 – 64,999 income category (US dollars) Avg. respondent age category (years) 41 – 45

Summary data (continued): Avg. test segment IRI 122.75 measurement (in/mi) (fair/mediocre) Avg. roadway segment 17.43 surface age (years) Pavement structural condition (PSC) 90.78 index of roadway Percent of segments by surface type: 35.1/64.9 rigid/flexible

Interpretation of results: Marginal effects Marginal effects give the change in category probabilities (1=smooth, 2, 3, 4, 5=rough) resulting from a one unit change in the variable. Obtained by integrating the probability density function

Figure 11-7: Illustration of an ordered probability models with an increase in X (with 0= 0). 0.3 y = 3 0.2 y = 2 y = 4 0.1 y = 1 y = 5 - X 1- X 2- X 3- X 

Results: Socioeconomics (1=smooth, 5=rough) Variable Marginal Effects [ y = 1 ] [ y = 2 ] [ y = 3 ] [y = 4 ] [ y = 5 ] Gender indicator (1 if participant was female, 0 if male) 0.0451 0.0994 -0.0669 -0.0598 -0.0178 Older age indicator (1 if participant was over age 55, 0 otherwise) 0.0620 0.1190 -0.0916 -0.0693 -0.0200

Results: Pavement condition (1=smooth, 5=rough) Variable Marginal Effects [ y = 1 ] [ y = 2 ] [ y = 3 ] [ y =4 ] [ y = 5 ] IRI measurement (in/mi) of roadway segment -0.0008 -0.0019 0.0011 0.0012 0.0004 Age of roadway segment surface (years) -0.0017 -0.0043 0.0026 0.0008 Patch indicator (1 if the segment appeared to have patch work, 0 otherwise) -0.0363 -0.1035 0.0462 0.0704 0.0232 Pavement structural condition (PSC) 0.0017 0.0043 -0.0026

Results: Vehicle (1=smooth, 5=rough) Variable Marginal Effects [ y = 1 ] [ y = 2 ] [ y = 3 ] [ y = 4] [ y = 5 ] Noise (dB) inside test vehicle during evaluation -0.0085 -0.0209 0.0126 0.0128 0.0039 Noise increase indicator (1 if the noise inside test vehicle during evaluation increases by 3 dB or more between two adjacent test segments, 0 otherwise) -0.0410 -0.1326 0.0386 0.0993 0.0358 Speed (km/h) of test vehicle during evaluation 0.0011 0.0028 -0.0017 -0.0005

Results: Vehicle (continued) (1=smooth, 5=rough) Variable Marginal Effects [ y = 1 ] [ y = 2 ] [ y = 3 ] [ y = 4] [ y = 5 ] Sport-utility test vehicle indicator (1 if sport utility was test vehicle type, 0 otherwise) 0.0892 0.1629 -0.1270 -0.0968 -0.0283 Minivan test vehicle indicator (1 if minivan was test vehicle type, 0 otherwise) 0.0530 0.0995 -0.0791 -0.0571 -0.0163

Summary Physical measurements of the pavement are correlated to public perceptions, but many other factors are significant Must consider more than IRI in determining pavement condition

END