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Realtime Estimation of Accident Likelihood for Safety Enhancement

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Accident Likelihood Estimation. Issues on Accident Study. Advanced ... Possible to identify traffic conditions leading to more accidents (Accident Likelihood) ... – PowerPoint PPT presentation

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Title: Realtime Estimation of Accident Likelihood for Safety Enhancement


1
Real-time Estimation of Accident Likelihood for
Safety Enhancement
Jun Oh, Ph.D., PE, PTOEWestern Michigan
UniversityMarch 14, 2007
2
Background / Motivation
  • Is it possible to predict occurrence of
    accidents?
  • Maybe NOT. / Almost impossible
  • Are there certain traffic conditions that lead to
    more accidents?
  • Maybe YES.
  • Then, is it possible to identify such traffic
    conditions?
  • What will be possible indicators?

3
Contents
  • Previous Studies
  • Traffic Dynamics and Accident
  • Empirical Example
  • Accident Likelihood Estimation
  • Issues on Accident Study
  • Advanced Surveillance System

4
So far, previous studies...
  • Analyzed long term historical data
  • To identify relationships between traffic
    variables or geometric elements and accidents
  • off-line studies
  • Incident detection and incident traffic
    management
  • after-incident

5
Objectives
  • To enhance traffic safety under ITS
  • To identify traffic conditions leading to more
    accidents
  • Real time
  • Before accident
  • To estimate accident likelihood

6
Occurrence of Traffic Accidents
Traffic Dynamics
Environment
Driver Characteristics
Accident
Vehicle Characteristics
7
Accident Indicator
Accident occurs
Implication starts
Traffic Dynamics (Indicator)
Normal traffic condition
Disruptive traffic condition
T-x
T
TIME
8
Empirical Example
  • Freeway traffic data
  • I-880, California
  • Volume, Occupancy, and Speed (double-loop)
  • 10-second periods from upstream detector stations
  • Accident profiles (52 accidents)
  • Traffic Variables
  • Occupancy, Flow, and Speed
  • 5 minute Mean and STD

9
Pattern Classification
  • Two traffic conditions
  • Normal traffic condition a 5-minute period apart
    from traffic accident (more than 30 minutes
    apart)
  • Disruptive traffic condition a 5-minute period
    right before an accident
  • Non-parametric density estimation
  • kernel smoothing technique
  • Best indicator STD of speed

10
Estimation PDF
11
Bayesian Model for Accident Likelihood
  • P(A/X) Posterior probability that given
    traffic measurement belongs to traffic
    conditions leading to an accident
    occurrence
  • P(A) Prior probability that given traffic
    measurement belongs to
    disruptive traffic condition
  • P(N) Prior probability that given traffic
    measurement belongs to normal
    traffic conditions

12
Estimation of Accident Likelihood
13
Real-time Application
14
Identification of Accidents
  • The percentage of time when P(A/X) was above the
    given threshold

15
GIS Database for Enhanced System
  • Traffic Accident Data Mapping
  • Linear Referencing Dynamic Segmentation
  • Reconstruction of highway segments
  • Detector location and accident location
  • Other Characteristics
  • Weather
  • Highway Geometry
  • Real-time Traffic Data

16
Database Example
Real-time Traffic Data
Accident location and type
17
Possible Application Framework
Real-time traffic measurement with highway
geometry and weather
Real-time estimation of accident likelihood
Is traffic condition stable?
Yes
No
Provide safety information at upstream via VMS
18
Issues on Accident Study
  • Accident data availability and accuracy
  • Need more data
  • Accurate accident occurrence time
  • Accident duration
  • Other measures?
  • Wide-area detection
  • Individual vehicle tracking
  • Need better surveillance systems

19
An Advanced Surveillance System
  • Present traffic surveillance systems
  • mostly use inductive loop detectors (ILDs)
  • have significant limitations (e.g. point
    estimates) and errors
  • reduce the ability to effectively manage and
    control freeway and arterial traffic systems, and
    to implement ATMIS
  • Advanced sensor systems
  • Integration of weather and surface sensors
  • Individual vehicle detection for details
  • Vehicle reidentification techniques utilizing
    existing and future infrastructure

20
Vehicle Reidentification
  • Volume
  • Occupancy
  • Speed
  • Vehicle Types
  • Section Density
  • Section Delay
  • Travel Time
  • Level of service
  • Lane-by-lane travel time
  • Lane changing pattern

21
Concluding Comments
  • Speed variance can be a good surrogate
  • Traffic dynamics reflects hazardous factors
  • Temporal spatial speed variation
  • Advanced surveillance systems may provide better
    exposure
  • Lane-by-lane travel time
  • Lane-changing pattern
  • Possible to identify traffic conditions leading
    to more accidents (Accident Likelihood)
  • Integration of traffic, weather, and geometry
    information

22
Thank you Q A Jun Oh jun.oh_at_wmich.edu
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