Post on 23-Feb-2016
description
Establishment of Relation between Pavement Surface Friction and Mixture Design PropertiesMozhdeh RajaeiNima Roohi Sefidmazgi
Ames, IAAugust 15-16,
2013
Hussain Bahia, Ph.D.
Outline1. Background and Introduction2. Materials and Methods3. Results and Conclusions
BACKGROUND AND INTRODUCTION
Friction in Pavement• The cost for highway accidents in 2000 exceeded
$230 billion. Many of these crashes are tied to wet road conditions, and inadequate friction characteristics (Noyce et al., 2007).
• Factors affecting friction: pavement surface characteristics,vehicle characteristics, tire characteristics, and environmental conditions
Surface Texture• Surface texture refers to the combination of different
aggregate shapes and sizes used in asphalt mixtures. Surface texture is defined in terms of wavelength (λ, distance along the surface) and amplitude (a, height above the surface).
(Henry 2000)
Factors Affecting Texture
(Sandberg 2000, Hall 2009, Ahamed 2009)
Property Texture RangeNominal Maximum Aggregate Size
(NMAS) Macro-Texture
Mixture Coarse Aggregate Type Macro-TextureMicro-Texture
Mixture Fine Aggregate Type Macro-TextureMicro-Texture
Asphalt Binder Content Macro-TextureAggregate Gradation Macro-Texture
Mixture Air Voids Macro-Texture
Objectives of Study
1. Relate lab/field friction measures to mixture properties
2. Relating lab texture measurements to field friction measures
Stationary Laser Profilometer (SLP)Circular Track Meter (CTM)Friction Number (FN)
Materials and Methods
Methods• Field Friction Measurement: –Friction Number (FN)
• Field Texture Measurement:–Circular Track Meter (CTM)
• Laboratory Texture Measurement:–Stationary Laser Profilometer (SLP)
Pavement Friction Measures• Friction number (FN): The average coefficient of friction measured by a locked-
wheel test device as specified in ASTM E274. This device was developed to use in situations with no anti-
lock brakes. Skid Trailer was K.J. Law Profiler.
FN (V) = 100 * μ = 100 * F/W• V is velocity of the test tire, km/hr (65 km/hr).• μ is the coefficient of friction.• F is the tractive horizontal force applied to the tire, kg.• W is the vertical load applied to the tire, kg.
Stationary Laser Profilometer (SLP)
• Used both in the laboratory and in the field. • Texture measurements described in ISO 13473-4.
Lab Texture Measure• Mean Profile Depth (MPD):
MPD values yield a two-dimensional representation of the surface texture (ISO 13473-1 2004).
MPD texture parameters provide averaged values for surface texture but do not quantify the distribution of asperities at the pavement surface.
0 500 1000 1500 2000 2500 3000 3500 4000
-4.0
-2.0
0.0
2.0
4.0
Data Point
Profi
le D
epth
(m
m)
Circular Track Meter (CTM)• Measures pavement
macro-texture in circular area– SLP make’s linear
measure.• Standardized under
ASTM E2157 2009.
Materials• Field sections and corresponding
cores from across WI.• Field Sections and corresponding
cores from MnROAD, MN.• Both dense graded and porous/gap
graded.• Different mixture properties:–Varying NMAS, Pb, gradation and
density.
Weibull Distribution • In order to describe gradation with the minimum
number of variables, a Weibull distribution is fitted to gradation curve. • x is the aggregate
size (mm)• κ is the shape factor • λ is the scale factor
0%
20%
40%
60%
80%
100%
Sieve Size 0.45
Perc
ent P
assi
ng
Increasing λ
0%
20%
40%
60%
80%
100%
Sieve Size 0.45
Perc
ent P
assi
ngIncreasing κ
ANALYSIS AND DISCUSSION
Regression Analysis• Regression analysis has been
performed using Minitab16.• The magnitude of the statistical
parameter, p-value, for each variable is an indicator of the significance of that variable –p-value closer to zero indicates high
significance.–Significance of values approaching 1.0 is
negligible.
Statistical Model Lab Friction vs. Mix Design Properties
• Laser MPD = 9.47 - 3.20 Gmb - 0.356 Pb + 0.0846 NMAS + 1.35 κ - 1.48 λ – Where MPD is the mean profile depth in millimeter, – Gmb is bulk asphalt mixture density (g/cm3), – Pb is the binder percent,– NMAS is the nominal maximum aggregate size in millimeter,– κ and λ are the Weibull distribution parameters.
Predictor Coefficient Standard Error Coefficient T value P valueConstant 9.467 4.040 2.340 0.036
Gmb -3.197 1.115 -2.870 0.013Pb -0.356 0.315 -1.130 0.278
NMAS 0.085 0.043 1.940 0.074κ 1.354 0.234 5.800 0.000λ -1.476 0.360 -4.100 0.001
Model Quality of Fit
0 0.5 1 1.5 2 2.5 30
0.5
1
1.5
2
2.5
R² = 0.597622636541067
R² = 0.918062031149123Dense Graded and PorousLinear (Dense Graded and Porous)
Measured SLP MPD (mm)
Est
imat
ed S
LP
MPD
(mm
)
Discussion of Model• NMAS: Positive coefficient
– Gradations with higher NMAS, (generally coarser gradations) result in higher MPD
• Bulk specific gravity (Gmb): Negative Coefficient– Lower Gmb, (thus higher air voids and porosity), leads to higher MPD.
• Binder Content (Pb): Negative Coefficient– Lower Pb reduces binder film thickness around aggregates as well as
reducing the aggregate packing level, thus increasing MPD.• Weibull Shape Factor (κ): Positive coefficient
– Higher κ values will result in gradations closer to a one-sized gradation and further from the maximum density line, thus resulting in higher MPD values.
• Weibull Scale Factor (λ): Negative coefficient– Decreasing λ will generally result in finer gradation. If all curves
above max density line, lower λ will being further from line.
Discussion of Model: Gradation
• It hypothesized that what is important for gradation is being further from the maximum density line, and not only the overall coarseness or fineness of the gradation.
0.00 0.50 1.00 1.50 2.00 2.50 3.000%
10%
20%
30%
40%
50%
60%
70%
80%
90%
100%
Sieve Opeining Size (mm0.45)
% P
assi
ng
Decreasing λ
Filed Friction vs. Lab Friction
• CTM MPD is the mean profile depth (mm) measured using the CTM in the field,• SLP MPD is the mean profile depth (mm) measured using the laser profilometer in the
laboratory.
Almost equivale
nt for dataset
Relating Laboratory Texture to Field Friction
• FN is the smooth-tire friction number from field measurements,
• CTM MPD is the mean profile depth (mm) measured using the CTM in the field.
• FN is the smooth-tire friction number from field measurements,
• SLP MPD is the mean profile depth (mm) measured using the laser profilometer in the laboratory
Using SLP-CTM Model
Conclusions• Using statistical analysis mixture design parameters
(i.e. volumetric and aggregate gradation properties) could be related to laboratory texture measurements (MPD).
• Knowing mixture design properties can lead to the estimation of road texture parameters.
• It was shown that increasing the distance of the gradation curve from the maximum density line (on both the coarse or fine side) is more important than the overall coarseness or fineness of the gradation in terms of increasing the expected texture.
Conclusions• Laboratory measured friction parameters (MPD)
can be related to field friction values (FN) using regression analysis.
• Utilizing the models developed in this study, by further investigation, mixture designers can have a guideline to estimate friction.
• Models developed in this study showed that the measurements for field and laboratory compacted samples from SLP device can be used to estimate friction parameters.
• A limited data set were used to develop models in this study, therefore more tests and analysis are needed to verify the results.
Acknowledgements• This research was sponsored by CFIRE
under project I.D. 07-09 and the Western Research Institute "Asphalt Research Consortium".
• Authors would also like to acknowledge the contributions of Mr. Timothy Miller, formerly of UW-Madison; as well as MnROAD for use of their test track database friction measurements.
Thank You!
www.uwmarc.orgQuestions?
Mozhdeh Rajaeirajaei@wisc.eduNima Roohi Sefidmazgiroohisefidma@wisc.eduHussain Bahiabahia@engr.wisc.edu