Difference between revisions of "Signal Representation/Signal classification"

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$\text{Definition:}$ To calculate the (mean)  $\text{power}$,  $T_{\rm M}$  must be divided by the timebefore the limit crossing:
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$\text{Definition:}$ To calculate the (mean)  $\text{power}$,  $T_{\rm M}$  must be divided by the time before the limit crossing:
  
 
:$$P_x = \lim_{T_{\rm M} \to \infty} \frac{1}{T_{\rm M} } \cdot \int^{T_{\rm M}/2} _{-T_{\rm M}/2} x^2(t)\,{\rm d}t.$$
 
:$$P_x = \lim_{T_{\rm M} \to \infty} \frac{1}{T_{\rm M} } \cdot \int^{T_{\rm M}/2} _{-T_{\rm M}/2} x^2(t)\,{\rm d}t.$$

Revision as of 14:58, 7 June 2021

Deterministic and Stochastic Signals


In every communications system both  "deterministic signals"  and  "stochastic signals"  occur.

$\text{Definition:}$  A  $\text{deterministic signal}$  exists,  if its time functions  $x(t)$  can be described completely in analytical form.


Since the time function  $x(t)$  for all times  $t$  is known and can be specified unambiguously,  there always exists a spectral function  $X(f)$  which can be calculated using the  Fourier series  or the  Fourier transform .

$\text{Definition:}$  One refers to a  $\text{stochastic signal}$   or to a  $\text{random signal}$,  if the signal course  $x(t)$  is not - or at least not completely – describable in mathematical form.  Such a signal cannot be predicted exactly for the future.


Example of a deterministic signal (top) and
a stochastic signal (bottom)

$\text{Example 1:}$  The graph shows time histories of a deterministic and a stochastic signal:

  • At the top a periodic square wave signal  $x_1(t)$  with period duration  $T_0$   ⇒   deterministic signal,
  • below a Gaussian noise signal  $x_2(t)$  with the mean value  $2\ \rm V $   ⇒   stochastic signal.


For such a non–deterministic signal  $x_2(t)$  no spectral function  $X_2(f)$  can be specified, since Fourier series and Fourier transform requires the exact knowledge of the time function for all times  $t$.


Information-carrying signals are always of stochastic nature.  Their description and the definition of suitable parameters is given in the book  Theory of Stochastic Signals.

However, the deterministic signals are also of great importance for Communications Engineering.  Examples of this are:

  • Test signals for the design of communication systems,
  • carrier signals for frequency multiplex systems,  and
  • a  "Dirac delta train"  for sampling an analog signal or for time regeneration of a digital signal.


Causal and Non-Causal Signals


In  Communications Engineering  one often reckons with temporally unlimited signals;  the definition range of the signal then extends from  $t = -\infty$   to  $t=+\infty$.

In reality, however, there are no such signals, because every signal had to be switched on at some point.  If one chooses - arbitrarily, but nevertheless meaningfully - the switch-on time  $t = 0$,  then one comes to the following classification:

$\text{Definition:}$ 

  • A signal  $x(t)$  is called  $\text{causal}$,  if it does not exist for all times  $t < 0$  or is identical zero.
  • If this condition is not fulfilled, then one speaks of a  $\text{non-causal}$  signal (or system).


In this book  "Signal representation"  mostly causal signals and systems are considered.  This has the following reasons:

  • Non-causal signals  (and systems)  are mathematically easier to handle than causal ones.  For example, the spectral function can be determined here by means of Fourier transform and one does not need extensive knowledge of function theory as in the Laplace transform.
  • Non-causal signals and systems describe the situation completely and correctly, if one ignores the problem of the switch-on process and is therefore only interested in the  "steady state".
  • The description of causal signals and systems using the  Laplace Transform  is shown in the book   Linear Time-Invariant Systems.


Causal system (top) and non-causal system (bottom)

$\text{Example 2:}$  You can see a causal system in the upper graphic:

  • If a unit step function  $x(t)$  is applied to its input, then the output signal  $y(t)$  can only increase from zero to its maximum value after time  $t = 0$.
  • Otherwise the causal connection that the effect cannot begin before the cause would not be fulfilled.


In the lower graph the causality is no longer given.  As you can easily see in this example, an additional runtime of one millisecond is enough to change from the non-causal to the causal representation.


Energy–Limited and Power–Limited Signals


At this place first two important signal description quantities must be introduced, namely the  energy  and the  power.

  • In terms of physics, energy corresponds to work and has, for example, the unit "Ws".
  • The power is defined as "work per time" and therefore has the unit "W".


According to the elementary laws of electrical engineering, both values are dependent on the resistance  $R$ . In order to eliminate this dependency, the resistance  $R=1 \,\Omega$  is often used as a basis in communications engineering. Then the following definitions apply:

$\text{Definition:}$  The  $\text{energy}$  of the signal  $x(t)$  is to calculate as follows:

$$E_x=\lim_{T_{\rm M}\to\infty} \int^{T_{\rm M}/2} _{-T_{\rm M}/2} x^2(t)\,{\rm d}t.$$


$\text{Definition:}$ To calculate the (mean)  $\text{power}$,  $T_{\rm M}$  must be divided by the time before the limit crossing:

$$P_x = \lim_{T_{\rm M} \to \infty} \frac{1}{T_{\rm M} } \cdot \int^{T_{\rm M}/2} _{-T_{\rm M}/2} x^2(t)\,{\rm d}t.$$

$T_{\rm M}$  is the assumed measurement duration during which the signal is observed, symmetrically with respect to the time origin  $(t = 0)$.  In general, this time interval must be chosen very large;  ideally  $T_{\rm M}$  should be towards infinity.


If  $x(t)$  denotes an electrical voltage curve  $($unit:  $\text{V)}$, then according to the above equations:

  • The signal energy has the unit  $\text{V}^2\text{s}$.
  • The signal power has the unit  $\text{V}^2$.


This statement also means:   In the above definitions the reference resistance  $R=1\,\Omega$  is already implicit.

Energy limited and power limited signals

$\text{Example 3:}$  Now the energy and power of two exemplary signals are calculated.

The upper graphic shows a rectangular pulse  $x_1(t)$  with amplitude  $A$  and duration  $T$.

  • The signal energy of this pulse is  $E_1 = A^2 \cdot T$.
  • For the signal power,  division by  $T_{\rm M}$  and limit formation  $(T_{\rm M} \to \infty)$  the value is  $P_1 = 0$.


For the cosine signal  $x_2(t)$  with amplitude  $A$  applies according to the sketch below:

  • The signal power is  $P_2 = A^2/2$,  regardless of the frequency.
  • The signal energy  $E_2$  (integral over power for all times)  is infinite.


With  $A = 4 \ {\rm V}$  results for the power  $P_2 = 8 \ {\rm V}^2$.   With the resistance of  $R = 50 \,\,\Omega$  this corresponds to the physical power  ${8}/{50} \,\,{\rm V}\hspace{-0.1cm}/{\Omega}= 160\,\, {\rm mW}$.


According to this example there are the following classification characteristics:

$\text{Definition:}$  A signal  $x(t)$  with finite energy  $E_x$  and infinitely small power  $(P_x = 0)$  is called  $\text{energy–limited}$.

  • With pulse-shaped signals like the signal  $x_1(t)$  in the above example,  the energy is always limited.  Mostly, the signal values here are different from zero only for a finite period of time.  In other words:  Such signals are often time-limited, too.
  • But even signals that are unlimited in time can have a finite energy.  In later chapters you will find more information about energy–limited and therefore aperiodic signals, for example the   Gaussian pulse  and the  Exponential pulse.


$\text{Definition:}$  A signal  $x(t)$  with finite power  $P_x$  and accordingly infinite energy  $(E_x \to \infty)$  is called  $\text{power–limited}$.


Value-Continuous and Value-Discrete Signals


$\text{Definitions:}$ 

  • A signal is called  $\text{value-continuous}$, if the decisive signal parameter - for example the instantaneous value - can take all values of a continuum  (for example of an interval) .
  • In contrast, if only countable many different values are possible for the signal parameter, then the signal is  $\text{value-discrete}$. The number  $M$  of possible values is called the  "level number"  or the "symbol set size".


  • Analog transmission systems always work with value-continuous signals.
  • For digital systems, on the other hand, most but not all signals are value-discrete.


Value-continuous and value-discrete signal

$\text{Example 4:}$  The upper diagram shows in blue a section of a value–continuous signal  $x(t)$, which can take values between  $\pm 8\ \rm V$ .

  • In red you can see the signal  $x_{\rm Q}(t)$  discretised on   $M = 8$  quantization levels with the possible signal values  $\pm 1\ \rm V$,  $\pm 3\ \rm V$,  $\pm 5\ \rm V$  and  $\pm 7\ \rm V$.
  • For this signal  $x_{\rm Q}(t)$  the instantaneous value was considered the decisive signal parameter.


FSK-Signal - value-continuous and still binary





In an FSK system  ("Frequency Shift Keying")  on the other hand, the instantaneous frequency is the essential signal parameter.

Therefore the signal  $s_{\rm FSK}(t)$  shown below is also called discrete with level number  $M = 2$  and possible frequencies  $1 \ \ \rm kHz$  and  $5 \ \ \rm kHz$, although the instantaneous value is value-continuous.


Time-Continuous and Time-Discrete Signals


For the signals considered so far, the signal parameter was defined at any given time.  Such a signal is called  "time-continuous".

$\text{Definitions:}$ 

  • With a  $\text{time-discrete signal}$  on the contrary, the signal parameter is defined only at the discrete points  $t_\nu$. 
  • These points in time are usually chosen equidistant:  
$$t_\nu = \nu \cdot T_{\rm A}.$$
  • We refer  $T_{\rm A}$  as  "sampling time interval"  and its reciprocal  $f_{\rm A} = 1/T_{\rm A}$  as  "sampling frequency",  because such a signal may be created by sampling a time-continuous signal.



Time–continuous and time–discrete signal

$\text{Example 5:}$  The time–discrete signal  $x_{\rm A}(t)$  is obtained after sampling the time–continuous and value–continuous signal  $x(t)$  equidistant in time  $(T_{\rm A})$.

  • The time plot  $x_{\rm R}(t)$  outlined below differs from the real time-discrete representation  $x_{\rm A}(t)$  in that the infinitely narrow samples  (mathematically describable with Dirac pulses)  are replaced by rectangular pulses of duration  $T_{\rm A}$ .
  • Such a signal can also be called  "time-discrete"  according to the above definition.










Furthermore applies:

  • A time-discrete signal $x(t)$  is completely determined by its series  $\left \langle x_\nu \right \rangle$  of sampled values. .
  • These sampled values can either be value-continuous or value-discrete.
  • The mathematical description of time-discrete signals is given in chapter 
    Time Discrete Signal Representation .


Analog and Digital Signals


Analog and digital signals

$\text{Example 6:}$  The signal properties

  • "value-continuous",
  • "value-discrete",
  • "time-continuous",
  • "time-discrete"


are illustrated in the diagram on the right using an example.


In addition, the following specifications apply:

$\text{Definition:}$ 

  • If a signal is both value–continuous  and  time–continuous, it is called a  $\text{analog signal}$.  Such signals represent a continuous process continuously.
  • Examples are speech signals, music signals and image signals.


$\text{Definition:}$ 

  • A  $\text{digital signal}$,  on the other hand,  is always value–discrete  and  time-discrete and the message contained therein consists of the symbols of a symbol set.
  • For example, it can be a sampled and quantized (as well as coded in any form) voice, music or image signal,
  • but also a data signal when a file is downloaded from a server on the Internet.


Depending on the number of levels, digital signals are also known by other names, for example

  • with $M = 2$:   binary digital signal or  $\text{binary signal}$,
  • with $M = 3$:   ternary digital signal or   $\text{ternary signal}$,
  • with $M = 4$:   quaternary digital signal or  $\text{quaternary signal}$.


The following (German language) learning video summarizes the classification features discussed in this chapter in a compact way:
         Analoge und digitale Signale   ⇒   Analog and Digital Signals.


Exercises for the Chapter


Exercise 1.2: Signal Classification

Exercise 1.2Z: Puls Code Modulation