Discrete-time Signals Prof. Siripong Potisuk. Mathematical Representation x[n] represents a DT signal, i.e., a sequence of numbers defined only at integer.

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Presentation transcript:

Discrete-time Signals Prof. Siripong Potisuk

Mathematical Representation x[n] represents a DT signal, i.e., a sequence of numbers defined only at integer values of n (undefined for noninteger values of n) Each number x[n] is called a sample x[n] may be a sample from an analog signal x d [n] = x a (nT s ), where T s = sampling period

Discrete-time Signals Discrete-time, continuous-valued amplitude (sampled-data signal) Discrete-time, discrete-valued amplitude (digital signal) In practice, we work with digital signals

Signal Transformations Operations performed on the independent and the dependent variables 1) Reflection or Time Reversal or Folding 2) Time Shifting 3) Time Scaling 4) Amplitude Scaling 5) Amplitude Shifting Note: The independent variable is assumed to be n representing sample number.

Time reversal or Folding or Reflection For DT signals, replace n by –n, resulting in y[n] is the reflected version of x[n] about n = 0 (i.e., the vertical axis).

Time Shifting (Advance or Delay)

Time Scaling Sampling rate alteration

Amplitude Scaling For DT signals, multiply x[n] by the scaling factor A, where A is a real constant. If A is negative, y[n] is the amplitude-scaled and reflected version of x[n] about the horizontal axis

Amplitude Shifting For DT signals, add a shifting factor A to x[n], where A is a real constant.

Signal Characteristics Deterministic vs. Random Finite-length vs. Infinite-length Right-sided/ Left-sided/ Two-sided Causal vs. Anti-causal Periodic vs. Aperiodic (Non-periodic) Real vs. Complex Conjugate-symmetric vs. Conjugate-antisymmetric Even vs. Odd

Even & Odd DT Signals A real-valued signal x[n]) is said to be A complex-valued sequence x[n] is said to be

DT Periodic Signals A DT signal x[n] is said to be periodic if N 0 is the smallest positive integer called the fundamental period (dimensionless)    N 0 = the fundamental angular frequency (radians)

DT Sinusoidal Signals n is dimensionless (sample number)    and  have units of radians x[n] may or may not be periodic periodic if  0 is a rational multiple of 2 ,i.e.,

DT Unit Impulse DT Unit impulse (Kronecker delta function) Properties:

Unit Step Function u [n] can be written as a sum of shifted unit Impulse as

Exponential Signals

Signal Metrics Energy Power Magnitude Area

Energy An infinite-length sequence with finite sample values may or may not have finite energy

Power - A finite energy signal with zero average power is called an ENERGY signal - An infinite energy signal with finite average power is called a POWER signal

Average Power Average over one period for periodic signal, e.g., Root-mean-square power:

Magnitude & Area