Applied Mathematics

AM 273 System Identification for Aerial Robotic Systems

Introduces data-driven system identification methods for dynamical modeling of atmospheric, ocean, and robotic vehicles from experimental data. Topics include experiment design; model structure selection; parameter and state estimation; regression-based and maximum-likelihood approaches; and data analysis in both time and frequency domains. Emphasis is placed on integrating physical modeling with data-driven techniques and on assessing model validity and uncertainty.

Requirements

Prerequisite(s): Enrollment is restricted to graduate students. Seniors may enroll by instructor permission. AM 100, AM 114, AM 147, or equivalent courses are expected but not required.

Credits

5