Robotics 1
♻ ☆ Estimating Spatially-Dependent GPS Errors Using a Swarm of Robots
Praneeth Somisetty, Robert Griffin, Victor M. Baez, Miguel F. Arevalo-Castiblanco, Aaron T. Becker, Jason M. O'Kane
External factors, including urban canyons and adversarial interference, can
lead to Global Positioning System (GPS) inaccuracies that vary as a function of
the position in the environment. This study addresses the challenge of
estimating a static, spatially-varying error function using a team of robots.
We introduce a State Bias Estimation Algorithm (SBE) whose purpose is to
estimate the GPS biases. The central idea is to use sensed estimates of the
range and bearing to the other robots in the team to estimate changes in bias
across the environment. A set of drones moves in a 2D environment, each
sampling data from GPS, range, and bearing sensors. The biases calculated by
the SBE at estimated positions are used to train a Gaussian Process Regression
(GPR) model. We use a Sparse Gaussian process-based Informative Path Planning
(IPP) algorithm that identifies high-value regions of the environment for data
collection. The swarm plans paths that maximize information gain in each
iteration, further refining their understanding of the environment's positional
bias landscape. We evaluated SBE and IPP in simulation and compared the IPP
methodology to an open-loop strategy.
comment: 6 pages, 7 figures, 2025 IEEE 21st International Conference on
Automation Science and Engineering