MAE 6760

MAE 6760

Course information provided by the Courses of Study 2015-2016.

Course covers a variety of ways in which models and experimental data can be used to estimate model quantities that are not directly measured. Covers methods for solving the class of inverse problems that take the following form: given partial information about a system, what is the behavior of the whole system? Main estimation methods presented are batch least-squares-type estimation for general problems and Kalman filtering for dynamic system problems. Course deals with the issue of observability, which amounts to a consideration of whether a given inverse problem has a unique solution, and briefly covers the concept of statistical hypothesis testing. Techniques for linear and nonlinear models are taught. Both theory and application are presented.

When Offered Fall.

Permission Note Enrollment limited to: M.S./Ph.D. students or permission of instructor.
Prerequisites/Corequisites Prerequisite: linear algebra, differential equations, undergraduate-level probability theory, MATLAB programming, and MAE 4780/MAE 5780 or ECE 5210 (may be taken concurrently).

View Enrollment Information

Syllabi: none
  •   Regular Academic Session.  Choose one lecture and one discussion.

  • 4 Credits Graded

  • 18530 MAE 6760   LEC 001

  • 18531 MAE 6760   DIS 201