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MREN 223  Signals and Systems  Units: 4.00  
This course covers the basic concepts and techniques for the modeling and analysis of signals and systems. Topics include signals, system properties, linear time-invariant systems, convolution, impulse response in continuous-time and discrete-time domains; Fundamentals of Fourier series; Fourier transforms, spectral analysis; Laplace transforms, and frequency response; sampling, reconstruction, and digitization; z transform and frequency response; fundamental concepts of filtering in continuous-time and discrete-time domains; Computational realizations of the analysis tools and their applications are explored in the laboratory.
(Lec: 3, Lab: 0.5, Tut: 0.5)
Requirements: Prerequisites: ELEC 221, and MTHE 235 or MTHE 237 Corequisites: Exclusions:   
Offering Term: W  
CEAB Units:    
Mathematics 12  
Natural Sciences 0  
Complementary Studies 0  
Engineering Science 36  
Engineering Design 0  
Offering Faculty: Smith Engineering  

Course Learning Outcomes:

  1. Classify systems based on their properties: in particular, to understand and exploit the implications of linearity, time-invariance, causality, memory, and bounded-input, bounded-out (BIBO) stability.
  2. Apply the concepts of convolution, impulse response and transfer function to linear time-invariant systems.
  3. Determine, interpret and plot Fourier transform magnitude and phase for continuous- and discrete-time functions.
  4. Apply Laplace transform and its inverse to solve differential equations and to determine the response of linear time-invariant systems to known inputs.
  5. Use Z transform and its inverse to solve difference equations and to determine the response of linear time-invariant systems to known inputs.
  6. Derive the Fourier Transforms and use it as a tool for frequency-domain analysis.
  7. Simulate signals and systems using modern computer software packages.
  8. Use linear systems tools, especially transform analysis and convolution, to analyze and predict the behavior of linear systems.
  9. Investigate sampling theorem, aliasing and eth effect of quantization.