Collisions between heavy trucks and passenger cars are a major concern because of the severity of injuries. This research has two objectives. One is to examine the impact of various factors on injuries to passenger car occupants involved in such collisions. Due to the complex interaction of factors influencing injury levels in truck-car collisions, the ordered probit model is used to identify specific variables significantly influencing levels of injury in two-vehicle rear-end involvements on divided roadways. Another objective is to demonstrate the use of the ordered probit in this complex highway safety problem. A set of vehicle, occupant, roadway, and environmental factors expected to influence injury severity was developed. Given two-vehicle passenger car-truck rear-end collisions, the variables that increase passenger vehicle occupant injury severity include darkness; high speed differentials; high speed limits; grades, especially when they are wet; being in a car struck to the rear (as opposed to being in a car striking a truck to the rear); driving while drunk; and being female. The interaction effects of cars being struck to the rear with high speed differentials and car rollovers were significant. Variables decreasing severity include snowy or icy roads, congested roads, being in a station wagon struck to the rear (as opposed to a sedan), and using a child restraint. With injuries ordered in five classes from no injury to fatalities, the marginal effects of each factor on the likelihood of each injury class are reported.Collisions between passenger cars and heavy trucks are of major concern to the traveling public and the trucking industry in the United States. This is largely due to the severity of injuries occurring in these events. The Insurance Institute for Highway Safety Fatality Facts 1996 edition reports that in 1995, tractor trailers had a higher fatal crash involvement rate [2.9 per 161 million km (100 million mi)] than passenger cars [1.9 per 161 million km (100 million mi)]. In 1995, though large trucks accounted for 3 percent of registered vehicles and 7 percent of vehicle kilometers (or miles) traveled, they were in crashes involving 12 percent of all motor vehicle deaths. Because of the importance of this problem and the complex nature of truckcar crashes, this study uses the ordered probit method for understanding the specific factors that influence injury severity in rear-end crashes involving these two vehicle types. This technique is particularly appropriate for analyzing ordinal categorical injury data, but has not been widely used in transportation safety.This paper seeks to understand how the personal attributes of passenger car occupants and drivers in combination with the vehicle, roadway, and environmental conditions influence the severity of an individual's injury in a rear-end collision involving a heavy truck. To test hypotheses empirically, the Federal Highway Administration's Highway Safety Information System (HSIS) database is used for
Concern over crashes involving bicycles and motor vehicles is largely due to the severity of injuries. The impacts of physical and environmental factors on the severity of injury to bicyclists are examined. North Carolina Highway Safety Information System crash and inventory data for state-controlled, two-lane, undivided roadways are analyzed. The injury severity distribution, measured on the KABCO scale, is as follows: no injury, 1.8 percent; complaint of pain, 24.4 percent; nonincapacitating injury, 42.5 percent; incapacitating injury, 25.5 percent; and fatal injury, 5.9 percent. The total number of involvements in this data set was 1,025, with a majority of the involvements occurring outside urbanized areas (80.5 percent). Using the ordered probit model, the effect of a set of roadway, environmental, and crash variables on injury severity is explored. Variables that significantly increase injury severity include straight grades, curved grades, darkness, fog, and speed limit. Higher average annual daily traffic, an interaction of speed limit and shoulder-width variables, and dark conditions with street lighting significantly lower injury severity. Separate models are estimated for rural and urban locations. Marginal effects of each factor on the likelihood of each injury-severity class are reported. Policy implications and possible countermeasures are then discussed.
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