ECE 5110

ECE 5110

Course information provided by the Courses of Study 2023-2024.

Introduction to models for random signals in discrete and continuous time; Markov chains, Poisson process, queuing processes, power spectral densities, Gaussian random process. Response of linear systems to random signals. Elements of estimation and inference as they arise in communications and digital signal processing systems.

When Offered Fall.

Permission Note Enrollment limited to: graduate students.
Prerequisites/Corequisites Prerequisite: ECE 2720, ECE 3100, and ECE 3250 or equivalents.

Outcomes
  • Knowledge of a variety of mathematical models for random phenomena.
  • Ability to classify models with respect to stationarity, Markov property, asymptotics, and more.
  • Ability to make optimal inferences and estimates with respect to such criteria as minimum error probability, and minimum mean square error.
  • Become aware of applications to communications, machine learning, statistical physics and more.
  • Response of linear systems to random process inputs (time permitting).

View Enrollment Information

Syllabi:
  •   Regular Academic Session.  Choose one lecture and one discussion. Combined with: ECE 4110

  • 4 Credits Graded

  •  8178 ECE 5110   LEC 001

  • Instruction Mode: In Person

  •  8179 ECE 5110   DIS 201

  • Instruction Mode: In Person