Difference between revisions of "Mobile Communications/General Description of Time Variant Systems"
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|Nächste Seite=Multipath reception in mobile communications}} | |Nächste Seite=Multipath reception in mobile communications}} | ||
− | == # | + | == # SYNOPSIS TO SECOND MAIN CHAPTER # == |
<br> | <br> | ||
− | + | After the time variance, the term '''frequency selectivity''' is now introduced and illustrated with examples, a channel property which is also of great importance for mobile communication. As in the entire book, the description is given in the equivalent low-pass range. | |
− | + | It is covered in detail: | |
− | * | + | *the difference between time invariant and time variant systems, |
− | * | + | *the time variant impulse response as an important descriptive function of time variant systems, |
− | * | + | *multi-way reception as the cause of frequency-selective behaviour, |
− | * | + | *a detailed derivation and interpretation of the GWSSUS channel model, |
− | * | + | *the characteristics of the GWSSUS model: coherence bandwidth, correlation duration, etc. |
− | == | + | == Transfer function and impulse response == |
<br> | <br> | ||
− | + | The description parameters of a message transmission system have already been described in the chapters | |
− | * [[Lineare_zeitinvariante_Systeme/Systembeschreibung_im_Frequenzbereich|Systembeschreibung im Frequenzbereich]] | + | * [[Lineare_zeitinvariante_Systeme/Systembeschreibung_im_Frequenzbereich|Systembeschreibung im Frequenzbereich]] and |
* [[Lineare_zeitinvariante_Systeme/Systembeschreibung_im_Zeitbereich|Systembeschreibung im Zeitbereich]] | * [[Lineare_zeitinvariante_Systeme/Systembeschreibung_im_Zeitbereich|Systembeschreibung im Zeitbereich]] | ||
− | [[File:EN_Mob_T_2_1_S1.png|right|frame| | + | [[File:EN_Mob_T_2_1_S1.png|right|frame|Considered LTI system|class=fit]] |
− | + | of the book "Linear Time Variant Systems". | |
− | + | The most important results are briefly explained again here.<br> | |
− | + | We assume a ''linear and time invariant system'' ⇒ '''LZI–System''' with the signal $s(t)$ at the input and the output signal $r(t)$. For the sake of simplicity, let $s(t)$ and $r(t)$ be real. Then the following applies: | |
− | * | + | *The system can be completely characterized by the [[Lineare_zeitinvariante_Systeme/Systembeschreibung_im_Frequenzbereich#.C3.9Cbertragungsfunktion_-_Frequenzgang|transfer function]] $H(f)$ Which is also referred to as the <i> Frequency response</i>. By definition :$$H(f) = R(f)/S(f).$$ |
− | :$$H(f) = R(f)/S(f).$$ | ||
− | * | + | *Similarly, the system is defined by the [[Lineare_zeitinvariante_Systeme/Systembeschreibung_im_Zeitbereich#Impulsantwort|Impulse response]] $h(t)$ , which is the [[Signaldarstellung/Fouriertransformation_und_-rücktransformation#Das_zweite_Fourierintegral|inverse Fourier transformation]] of $H(f)$ The output signal results from the convolution: |
::<math>r(t) = s(t) \star h(t) \hspace{0.4cm} {\rm mit} \hspace{0.4cm} h(t) | ::<math>r(t) = s(t) \star h(t) \hspace{0.4cm} {\rm mit} \hspace{0.4cm} h(t) | ||
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{{BlaueBox|TEXT= | {{BlaueBox|TEXT= | ||
− | $\text{ | + | $\text{Definitions:}$ |
− | + | The following input signals are suitable for detecting the linear distortions caused by $H(f)$ or $h(t)$ | |
− | * | + | *a [[Signaldarstellung/Einige_Sonderf%C3%A4lle_impulsartiger_Signale#Diracimpuls|Dirac impulse]]: |
− | :$$s(t) = \delta(t) \hspace{0.3cm}\Rightarrow \hspace{0.3cm} r(t) = \delta(t) \star h(t)= h(t)\hspace{0.3cm}\Rightarrow \hspace{0.3cm} \text{ | + | :$$s(t) = \delta(t) \hspace{0.3cm}\Rightarrow \hspace{0.3cm} r(t) = \delta(t) \star h(t)= h(t)\hspace{0.3cm}\Rightarrow \hspace{0.3cm} \text{Impulse response,}$$ |
− | * | + | *a [[Lineare_zeitinvariante_Systeme/Systembeschreibung_im_Zeitbereich#Sprungantwort|Heaviside step function]]: |
− | :$$s(t) = \gamma(t) \hspace{0.3cm}\Rightarrow \hspace{0.3cm} r(t) = \gamma(t) \star h(t)\hspace{1.5cm}\Rightarrow \hspace{0.3cm} \text{ | + | :$$s(t) = \gamma(t) \hspace{0.3cm}\Rightarrow \hspace{0.3cm} r(t) = \gamma(t) \star h(t)\hspace{1.5cm}\Rightarrow \hspace{0.3cm} \text{step response,}$$ |
− | * | + | *a [[Signaldarstellung/Zeitdiskrete_Signaldarstellung#Diracpuls_im_Zeit-_und_im_Frequenzbereich|Dirac impulse train]]: |
− | :$$s(t) = p_\delta(t) \hspace{0.25cm}\Rightarrow \hspace{0.3cm} r(t) = p_\delta(t) \star h(t)\hspace{1.3cm}\Rightarrow \hspace{0.3cm} \text{ | + | :$$s(t) = p_\delta(t) \hspace{0.25cm}\Rightarrow \hspace{0.3cm} r(t) = p_\delta(t) \star h(t)\hspace{1.3cm}\Rightarrow \hspace{0.3cm} \text{impulse response train.}$$}} |
− | + | On the other hand, a DC signal $s(t) = A$ is not suitable to make the frequency dependence of the LTI system visible: <br> With a low-pass system the output signal would then be always constant, independent of $H(f)$ $r(t) = A \cdot H(f= 0)$.<br> | |
− | + | On the next page we consider a Dirac impulse train $p_\delta(t)$ as an input signal $s(t)$ : <br> Hereby the similarities and differences between time-invariant and time-variant systems can be shown clearly.<br> | |
− | <i> | + | <i>Note:</i> The properties of $H(f)$ and $h(t)$ are covered in detail in the learning video [[Einige_Anmerkungen_zur_Übertragungsfunktion_(Lernvideo)|Some remarks on the transfer function]] .<br> |
− | == | + | |
+ | == Time invariant vs. time variant channels == | ||
<br> | <br> | ||
− | + | The graphic is intended to illustrate the difference between a time invariant channel $\rm (LTI)$ and a time variant channel $\rm (LTV)$ .<br> | |
− | [[File:EN_Mob_T_2_1_S2.png|right|frame| | + | [[File:EN_Mob_T_2_1_S2.png|right|frame|Time invariant and time variant channel|class=fit]] |
− | + | One can see from this illustration: | |
− | * | + | *The transmitted signal $s(t)$ is a Dirac impulse train $p_\delta(t)$, i.e. an infinite sequence of Dirac impulses in equidistant intervals $T$, all with the weight $1$ (see upper graph): |
::<math>s(t) = p_{\rm \delta} (t) = \sum_{n = -\infty}^{+\infty} {\rm \delta} (t - n \cdot T) | ::<math>s(t) = p_{\rm \delta} (t) = \sum_{n = -\infty}^{+\infty} {\rm \delta} (t - n \cdot T) | ||
\hspace{0.05cm}.</math> | \hspace{0.05cm}.</math> | ||
− | * | + | *The Dirac impulse at $t = 0$ is marked in green. The signal at the channel output is equal to $r(t) = h(t)$ , with $s(t) = {\rm \delta}(t)$ , also indicated in green. As a condition, it is assumed that the extension of the impulse response $h(t)$ is smaller than $T$.<br>. |
− | * | + | *The entire received signal after the LTI channel, according to the middle graph, can then be written as: |
::<math>r(t) = p_{\rm \delta} (t) \star h(t) = \sum_{n = -\infty}^{+\infty} h (t - n \cdot T) | ::<math>r(t) = p_{\rm \delta} (t) \star h(t) = \sum_{n = -\infty}^{+\infty} h (t - n \cdot T) | ||
\hspace{0.05cm}.</math> | \hspace{0.05cm}.</math> | ||
− | * | + | *For a time-variant channel (lower graph) this equation is not applicable. In each time interval, a (slightly) different signal shape is obtained. |
{{BlaueBox|TEXT= | {{BlaueBox|TEXT= | ||
− | $\text{ | + | $\text{Conclusion:}$ With a '''time-variant channel''' you cannot specify neither a one-parameter impulse response $h(t)$ nor a transfer function $H(f)$ .}}<br> |
− | <i> | + | <i>Note:</i> The learning video [[Eigenschaften_des_Übertragungskanals_(Lernvideo)|Properties of the transmission channel]] describes the differences between LTI and LTV systems.<br> |
− | == | + | == Two-dimensional impulse response== |
<br> | <br> | ||
− | [[File:EN_Mob_T_2_1_S3.png|right|frame| | + | [[File:EN_Mob_T_2_1_S3.png|right|frame|Two-dimensional impulse response|class=fit]] |
− | + | To identify a time-variant impulse response, a second parameter is used and the impulse response is preferably mapped in a three-dimensional coordinate system.<br> | |
− | + | The condition for this is that the channel is still linear; one speaks then of a $\rm LTV System$ ("linear time-variant"). | |
− | + | The following relations apply: | |
::<math>\text{LZI:}\hspace{0.5cm} r(t) = \int_{-\infty}^{+\infty} h(\tau) \cdot s(t-\tau) \hspace{0.15cm}{\rm d}\tau \hspace{0.05cm},</math> | ::<math>\text{LZI:}\hspace{0.5cm} r(t) = \int_{-\infty}^{+\infty} h(\tau) \cdot s(t-\tau) \hspace{0.15cm}{\rm d}\tau \hspace{0.05cm},</math> | ||
::<math>\text{LZV:}\hspace{0.5cm} r(t) \hspace{-0.1cm} = \hspace{-0.1cm} \int_{-\infty}^{+\infty} h(\tau, \hspace{0.1cm}t) \cdot s(t-\tau) \hspace{0.15cm}{\rm d}\tau \hspace{0.05cm}.</math> | ::<math>\text{LZV:}\hspace{0.5cm} r(t) \hspace{-0.1cm} = \hspace{-0.1cm} \int_{-\infty}^{+\infty} h(\tau, \hspace{0.1cm}t) \cdot s(t-\tau) \hspace{0.15cm}{\rm d}\tau \hspace{0.05cm}.</math> | ||
<br clear=all> | <br clear=all> | ||
− | + | Regarding the last equation and the above graph, it should be noted | |
− | * | + | *The parameter $\tau$ specifies the '''Delay time''' to denote the time dispersion. By writing out the convolution operation, it was possible to make $\tau$ also the parameter of the LZI–impulse response. On the last pages we spoke about $h(t)$ .<br> |
− | * | + | *The second parameter of the impulse response or the second axis marks the '''absolute time''' $t$, which is used, among other things, to describe the time variance. At different times $t$ the impulse response $h(\tau, \hspace{0.05cm}t)$ has a different form.<br> |
− | * | + | *A peculiarity of the 2D representation is that the $t$–axis is always plotted time-discretely $($at multiples of $T)$ while the $\tau$–axis can be continuous in time as in the example shown. However, in mobile communications, a time-discrete $h(\tau, \hspace{0.05cm}t_0)$ with respect to $\tau$ is assumed $($„echoes”$)$. |
− | * | + | *The LTV–equation is only applicable if the time change of the channel is slow in comparison to the maximum delay $\tau_{\rm max}$ $($marked in the figure by the parameter $T$ $)$. In mobile communications this condition ⇒ $\tau_{\rm max} < T$ is almost always fulfilled. |
− | * | + | *Selecting whether to apply the first Fourier integral to the parameter $\tau$ or $t$ leads to different spectral functions. In the [[Aufgaben:Exercise 2.1Z: 2D-Frequency and 2D-Time Representations|Excercise 2.1Z]] for example, the time variant '''2D–Transfer function''' is considered: |
::<math>H(f,\hspace{0.05cm} t) | ::<math>H(f,\hspace{0.05cm} t) | ||
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− | == | + | ==Excercises to the chapter== |
− | [[Aufgaben: | + | [[Aufgaben:Exercise 2.1: Two-Dimensional Impulse Response]] |
− | [[ | + | [[Aufgaben:Exercise 2.1Z: 2D-Frequency and 2D-Time Representations]] |
{{Display}} | {{Display}} |
Revision as of 21:52, 6 July 2020
Contents
# SYNOPSIS TO SECOND MAIN CHAPTER #
After the time variance, the term frequency selectivity is now introduced and illustrated with examples, a channel property which is also of great importance for mobile communication. As in the entire book, the description is given in the equivalent low-pass range.
It is covered in detail:
- the difference between time invariant and time variant systems,
- the time variant impulse response as an important descriptive function of time variant systems,
- multi-way reception as the cause of frequency-selective behaviour,
- a detailed derivation and interpretation of the GWSSUS channel model,
- the characteristics of the GWSSUS model: coherence bandwidth, correlation duration, etc.
Transfer function and impulse response
The description parameters of a message transmission system have already been described in the chapters
of the book "Linear Time Variant Systems".
The most important results are briefly explained again here.
We assume a linear and time invariant system ⇒ LZI–System with the signal $s(t)$ at the input and the output signal $r(t)$. For the sake of simplicity, let $s(t)$ and $r(t)$ be real. Then the following applies:
- The system can be completely characterized by the transfer function $H(f)$ Which is also referred to as the Frequency response. By definition :$$H(f) = R(f)/S(f).$$
- Similarly, the system is defined by the Impulse response $h(t)$ , which is the inverse Fourier transformation of $H(f)$ The output signal results from the convolution:
- \[r(t) = s(t) \star h(t) \hspace{0.4cm} {\rm mit} \hspace{0.4cm} h(t) \hspace{0.2cm} \circ\!\!-\!\!\!-\!\!\!-\!\!\bullet \hspace{0.2cm} H(f) \hspace{0.05cm}.\]
$\text{Definitions:}$
The following input signals are suitable for detecting the linear distortions caused by $H(f)$ or $h(t)$
- $$s(t) = \delta(t) \hspace{0.3cm}\Rightarrow \hspace{0.3cm} r(t) = \delta(t) \star h(t)= h(t)\hspace{0.3cm}\Rightarrow \hspace{0.3cm} \text{Impulse response,}$$
- $$s(t) = \gamma(t) \hspace{0.3cm}\Rightarrow \hspace{0.3cm} r(t) = \gamma(t) \star h(t)\hspace{1.5cm}\Rightarrow \hspace{0.3cm} \text{step response,}$$
- $$s(t) = p_\delta(t) \hspace{0.25cm}\Rightarrow \hspace{0.3cm} r(t) = p_\delta(t) \star h(t)\hspace{1.3cm}\Rightarrow \hspace{0.3cm} \text{impulse response train.}$$
On the other hand, a DC signal $s(t) = A$ is not suitable to make the frequency dependence of the LTI system visible:
With a low-pass system the output signal would then be always constant, independent of $H(f)$ $r(t) = A \cdot H(f= 0)$.
On the next page we consider a Dirac impulse train $p_\delta(t)$ as an input signal $s(t)$ :
Hereby the similarities and differences between time-invariant and time-variant systems can be shown clearly.
Note: The properties of $H(f)$ and $h(t)$ are covered in detail in the learning video Some remarks on the transfer function .
Time invariant vs. time variant channels
The graphic is intended to illustrate the difference between a time invariant channel $\rm (LTI)$ and a time variant channel $\rm (LTV)$ .
One can see from this illustration:
- The transmitted signal $s(t)$ is a Dirac impulse train $p_\delta(t)$, i.e. an infinite sequence of Dirac impulses in equidistant intervals $T$, all with the weight $1$ (see upper graph):
- \[s(t) = p_{\rm \delta} (t) = \sum_{n = -\infty}^{+\infty} {\rm \delta} (t - n \cdot T) \hspace{0.05cm}.\]
- The Dirac impulse at $t = 0$ is marked in green. The signal at the channel output is equal to $r(t) = h(t)$ , with $s(t) = {\rm \delta}(t)$ , also indicated in green. As a condition, it is assumed that the extension of the impulse response $h(t)$ is smaller than $T$.
.
- The entire received signal after the LTI channel, according to the middle graph, can then be written as:
- \[r(t) = p_{\rm \delta} (t) \star h(t) = \sum_{n = -\infty}^{+\infty} h (t - n \cdot T) \hspace{0.05cm}.\]
- For a time-variant channel (lower graph) this equation is not applicable. In each time interval, a (slightly) different signal shape is obtained.
$\text{Conclusion:}$ With a time-variant channel you cannot specify neither a one-parameter impulse response $h(t)$ nor a transfer function $H(f)$ .
Note: The learning video Properties of the transmission channel describes the differences between LTI and LTV systems.
Two-dimensional impulse response
To identify a time-variant impulse response, a second parameter is used and the impulse response is preferably mapped in a three-dimensional coordinate system.
The condition for this is that the channel is still linear; one speaks then of a $\rm LTV System$ ("linear time-variant").
The following relations apply:
- \[\text{LZI:}\hspace{0.5cm} r(t) = \int_{-\infty}^{+\infty} h(\tau) \cdot s(t-\tau) \hspace{0.15cm}{\rm d}\tau \hspace{0.05cm},\]
- \[\text{LZV:}\hspace{0.5cm} r(t) \hspace{-0.1cm} = \hspace{-0.1cm} \int_{-\infty}^{+\infty} h(\tau, \hspace{0.1cm}t) \cdot s(t-\tau) \hspace{0.15cm}{\rm d}\tau \hspace{0.05cm}.\]
Regarding the last equation and the above graph, it should be noted
- The parameter $\tau$ specifies the Delay time to denote the time dispersion. By writing out the convolution operation, it was possible to make $\tau$ also the parameter of the LZI–impulse response. On the last pages we spoke about $h(t)$ .
- The second parameter of the impulse response or the second axis marks the absolute time $t$, which is used, among other things, to describe the time variance. At different times $t$ the impulse response $h(\tau, \hspace{0.05cm}t)$ has a different form.
- A peculiarity of the 2D representation is that the $t$–axis is always plotted time-discretely $($at multiples of $T)$ while the $\tau$–axis can be continuous in time as in the example shown. However, in mobile communications, a time-discrete $h(\tau, \hspace{0.05cm}t_0)$ with respect to $\tau$ is assumed $($„echoes”$)$.
- The LTV–equation is only applicable if the time change of the channel is slow in comparison to the maximum delay $\tau_{\rm max}$ $($marked in the figure by the parameter $T$ $)$. In mobile communications this condition ⇒ $\tau_{\rm max} < T$ is almost always fulfilled.
- Selecting whether to apply the first Fourier integral to the parameter $\tau$ or $t$ leads to different spectral functions. In the Excercise 2.1Z for example, the time variant 2D–Transfer function is considered:
- \[H(f,\hspace{0.05cm} t) \hspace{0.2cm} \bullet\!\!-\!\!\!-\!\!\!-\!\!\circ \hspace{0.2cm} h(\tau,\hspace{0.05cm}t) \hspace{0.05cm}.\]
Excercises to the chapter
Exercise 2.1: Two-Dimensional Impulse Response
Exercise 2.1Z: 2D-Frequency and 2D-Time Representations