2 Linear Time-Invariant Systems --Analysis of Signals and Systems in time-domain An arbitrary signal can be represented as the supposition of scaled.

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Presentation transcript:

2 Linear Time-Invariant Systems --Analysis of Signals and Systems in time-domain An arbitrary signal can be represented as the supposition of scaled (weighted) and shifted unit impulse functions. A LTI system can be completely characterized in terms of its unit impulse response. Solving and analyzing a TLI system using its unit impulse response.

2.1 Discrete-Time Signals and Systems 2.1.1 The representation of Discrete-Time Signals in Terms of Impulses

2.1.1 The representation of Discrete-Time Signals in Terms of Impulses

2.1.2 The Discrete-Time Unit Impulse Response and the Convolution-Sum Representation of LTI Systems [n]  h [n] : Unit Impulse Response [n-k]  h [n-k] : Time-Invariant Property x[k][n-k]  x[k] h [n-k] : Linear Property x[k][n-k]  x[k] h [n-k] : Linear Property x[n]  y [n]