Driving volatility captures the extent of speed variations when a vehicle is
being driven. Extreme longitudinal variations signify hard acceleration or
braking. Warnings and alerts given to drivers can reduce such volatility
potentially improving safety, energy use, and emissions. This study develops a
fundamental understanding of instantaneous driving decisions, needed for hazard
anticipation and notification systems, and distinguishes normal from anomalous
driving. In this study, driving task is divided into distinct yet unobserved
regimes. The research issue is to characterize and quantify these regimes in
typical driving cycles and the associated volatility of each regime, explore
when the regimes change and the key correlates associated with each regime.
Using Basic Safety Message (BSM) data from the Safety Pilot Model Deployment in
Ann Arbor, Michigan, two- and three-regime Dynamic Markov switching models are
estimated for several trips undertaken on various roadway types. While
thousands of instrumented vehicles with V2V and V2I communication systems are
being tested, nearly 1.4 million records of BSMs, from 184 trips undertaken by
71 instrumented vehicles are analyzed in this study. Then even more detailed
analysis of 43 randomly chosen trips (N = 714,340 BSM records) that were
undertaken on various roadway types is conducted. The results indicate that
acceleration and deceleration are two distinct regimes, and as compared to
acceleration, drivers decelerate at higher rates, and braking is significantly
more volatile than acceleration. Different correlations of the two regimes with
instantaneous driving contexts are explored. With a more generic three-regime
model specification, the results reveal high-rate acceleration, high-rate
deceleration, and cruise/constant as the three distinct regimes that
characterize a typical driving cycle. (Continued