Experiments and Theoretical Analysis of
Terrain-based Vehicle Localization to Obtain GPS-Equivalent Vehicle Location Accuracy
Professor Sean Brennan
Department of Mechanical Engineering
Penn State University
Abstract t GPS is a fragile sensing system: it is easily
blocked by commonplace roadside features, easily confused by multi-path
reflections, and easily jammed in wartime. Even so, the potential of using
position information to enhance vehicle stability and performance has driven
extensive research the past several decades. Recent GPS-based algorithms show
great potential to save money, the environment, and human lives through
enhanced estimation of driving conditions, improving performance of hybrid
vehicle power management controllers, and autonomous vehicle guidance or
driver-assist for dangerous situations. This talk will present experimental and
theoretical results of an alternate to GPS for roadway positioning that uses
the small rocking motions of the driven vehicle as a location-specific ÒfingerprintÓ
of the road, thus enabling a map-equipped vehicle to calculate its position
using only on-vehicle inertial measurements. Experiments using data collected
this past year from over 6000 miles of roadway indicate that, by correlating
such roll and pitch disturbances, it is relatively straightforward to achieve
sub-meter longitudinal localization accuracy in real-time. Further, once can
clearly discriminate laterally which lane the vehicle is traveling in,
discriminate roadway departure, and identify sensor faults.
The
correlation of a disturbance signal to a digital map presents interesting
theoretical problems: both the map and disturbance signals are noisy and
subject to drift, the probability density function of the uninitialized
estimate is inherently multi-modal which makes linear estimators difficult to
use. Data-storage limits require that the map be sparsely sampled to a level
that makes extended Kalman filters impossible to use. To overcome these issues,
we present a hybrid method using both a Particle Filter (PF) to initialize the
algorithm, and an Unscented Kalman Filter (UKF) to maintain the estimate at
steady-state. Similarities between the two methods are exploited to obtain an
explicit solution for the steady-state PF accuracy using the Algebraic Ricattti
Equation. Analysis of the sampling step of the PF shows that prediction of the
theoretical accuracy requires a solution to the Lambert W function. The
predicted accuracy using this hybrid analysis show remarkable agreement to
experimentally measured accuracies measured across a wide variety of driving
conditions. The talk will conclude
with a discussion of ongoing work and future challenges related to advanced
vehicle guidance.
Bio: Dr. Sean Brennan has been an Assistant Professor of
Mechanical Engineering at Penn State University since 2003 and shares a joint
faculty appointment with the Thomas D. Larson Pennsylvania Transportation
Institute. Since 1998, he has published on topics ranging from vehicle systems
dynamics; robust control; and vehicle chassis sensing and
control. His current areas of study include modeling and experimental
validation of vehicle dynamics, hardware- and human-in-the-loop experimental
testing, electric vehicle primary power management and control, and design and control
of UGVs. In addition to being the secretary of the International Forum for Road
Transport Technology, he is currently the Chair of the ASME Dynamic Systems and
Control Technical Committee on Automotive and Transportation Systems, and the
Chair of the Education Subcommittee for Transportation Visualization of the
Transportation Research Board of the National Academies. In 2006 he was
selected for Penn StateÕs Premier Service Award for his initiation of an annual
high-school summer camp focused on advanced vehicle and robotics technologies.
In 2007, he won the Engineering College Outstanding Teaching Award, the top
honor at Penn State University for engineering faculty, and in 2008 he was
selected for the 2008 Spirko Award at Penn State for technology educators, and
the 2008 SAE Teetor Award for educators in the area of mobility.
Friday, January 16, 2009
3:30 – 4:30p.m
Rm. 1500 EECS