Difference between revisions of "Aufgaben:Exercise 4.8Z: AWGN Channel"
From LNTwww
(13 intermediate revisions by 4 users not shown) | |||
Line 1: | Line 1: | ||
− | {{quiz-Header|Buchseite= | + | {{quiz-Header|Buchseite=Theory_of_Stochastic_Signals/Linear_Combinations_of_Random_Variables |
}} | }} | ||
− | [[File:P_ID413__Sto_Z_4_8.png|right| | + | [[File:P_ID413__Sto_Z_4_8.png|right|frame|Channel model "AWGN"]] |
− | + | We consider here an analog message signal $s(t)$ whose amplitude values are Gaussian distributed. The standard deviation of this zero mean signal is $\sigma_s=1 \hspace{0.05cm} \rm V$. | |
− | + | During transmission $s(t)$ is additively overlaid by noise $n(t)$ which like $s(t)$ can be assumed to be Gaussian distributed and zero mean. | |
+ | *Let the standard deviation of the noise be generally $\sigma_n$. | ||
+ | *It is assumed that there are no statistical dependencies between the signals $s(t)$ and $n(t)$. | ||
+ | *Such a constellation is called "Additive White Gaussian Noise" $\rm (AWGN)$. | ||
+ | *The quality criterion for the received signal $r(t)= s(t)+n(t)$ the "signal-to-noise power ratio": | ||
+ | :$${\rm SNR} = {\sigma_s^2}/{\sigma_n^2}.$$ | ||
− | |||
− | |||
− | |||
− | |||
− | |||
− | |||
− | === | + | Hints: |
+ | *The exercise belongs to the chapter [[Theory_of_Stochastic_Signals/Linear_Combinations_of_Random_Variables|Linear Combinations of Random Variables]]. | ||
+ | *Reference is also made to the chapter [[Theory_of_Stochastic_Signals/Two-Dimensional_Gaussian_Random_Variables|Two-dimensional Gaussian random variables]]. | ||
+ | |||
+ | |||
+ | |||
+ | |||
+ | ===Questions=== | ||
<quiz display=simple> | <quiz display=simple> | ||
− | { | + | {Give the PDF $f_r(r)$ of the received signal $r(t)$ in general. What is the standard deviation $\sigma_r$ when $\sigma_n =0.75 \hspace{0.05cm} \rm V$? |
|type="{}"} | |type="{}"} | ||
− | $\sigma_r \ = $ | + | $\sigma_r \ = \ $ { 1.25 3% } $ \ \rm V$ |
− | { | + | {Calculate the correlation coefficient $\rho_{sr}$ between the two signals $s(t)$ and $r(t)$. What value results for $\sigma_n =0.75 \hspace{0.05cm} \rm V$? |
|type="{}"} | |type="{}"} | ||
− | $\rho_{sr} \ = $ { 0.8 3% } | + | $\rho_{sr} \ = \ $ { 0.8 3% } |
− | { | + | {Calculate the correlation coefficient $\rho_{sr}$ depending on the SNR of the AWGN channel. Derive an approximation for large SNR. |
− | |||
|type="{}"} | |type="{}"} | ||
− | + | $\rho_{sr} \ = \ $ { 0.8 3% } | |
Line 39: | Line 44: | ||
</quiz> | </quiz> | ||
− | === | + | ===Solution=== |
{{ML-Kopf}} | {{ML-Kopf}} | ||
− | '''(1)''' | + | '''(1)''' It holds $r(t) = s(t)+n(t)$. Thus $f_r(r)$ can be calculated from the convolution of the two density functions $f_s(s)$ and $f_n(n)$ . |
− | + | *Since both signals are Gaussian distributed, the convolution also yields a Gaussian function: | |
− | + | $$f_r(r)= \frac {1}{\sqrt{2 \pi} \cdot \sigma_r} \cdot {\rm e}^{-r^2/(2 \sigma_r^2)}.$$ | |
− | + | *The variances of $s(t)$ and $n(t)$ add up. Therefore, with $\sigma_s =1 \hspace{0.05cm} \rm V$ and $\sigma_n =0.75 \hspace{0.05cm} \rm V$: | |
:$$\sigma_r = \sqrt{\sigma_s^2 + \sigma_n^2} =\sqrt{{(\rm 1\hspace{0.1cm}V)^2} + {(\rm 0.75\hspace{0.1cm}V)^2}}\hspace{0.15cm}\underline{ = {\rm 1.25\hspace{0.1cm}V}}.$$ | :$$\sigma_r = \sqrt{\sigma_s^2 + \sigma_n^2} =\sqrt{{(\rm 1\hspace{0.1cm}V)^2} + {(\rm 0.75\hspace{0.1cm}V)^2}}\hspace{0.15cm}\underline{ = {\rm 1.25\hspace{0.1cm}V}}.$$ | ||
+ | '''(2)''' For the correlation coefficient, with the joint moment $m_{sr}$: | ||
+ | :$$\rho_{sr } = \frac{m_{sr }}{\sigma_s \cdot \sigma_r}.$$ | ||
+ | *This takes into account that $s(t)$ and also $r(t)$ are zero mean, so that $\mu_{sr} =m_{sr}$ holds. | ||
+ | *Since $s(t)$ and $n(t)$ were assumed to be statistically independent of each other and thus uncorrelated, it further holds: | ||
+ | :$$m_{sr} = {\rm E}\big[s(t) \cdot r(t)\big] = {\rm E}\big[s^2(t)\big] + {\rm E}\big[s(t) \cdot n(t)\big] ={\rm E}\big[s^2(t)\big] = \sigma_s^2.$$ | ||
+ | :$$\rightarrow \hspace{0.3cm} \rho_{sr } = \frac{\sigma_s}{ \sigma_r} = \sqrt{\frac{\sigma_s^2}{\sigma_s^2 + \sigma_n^2}} = \left (1+ {\sigma_n^2}/{\sigma_s^2}\right)^{-1/2}.$$ | ||
− | + | *With $\sigma_s =1 \hspace{0.05cm} \rm V$, $\sigma_n =0.75 \hspace{0.05cm} \rm V$ and $\sigma_r =1.25 \hspace{0.05cm} \rm V$ one obtains $\rho_{sr }\hspace{0.15cm}\underline{ = 0.8}$. | |
− | |||
− | |||
− | |||
− | |||
− | |||
− | '''(3)''' | + | '''(3)''' The expression calculated in the last subtask can be represented by the abbreviation ${\rm SNR} =\sigma_s^2/\sigma_n^2$ as follows: |
− | :$$\rho_{sr } = \frac{1}{ \sqrt{1 + \frac{1}{ | + | :$$\rho_{sr } = \rm \frac{1}{ \sqrt{1 + \frac{1}{SNR}}} \approx \frac{1}{ {1 + \frac{1}{2 \cdot SNR}}} \approx 1 - \frac{1}{2 \cdot SNR}.$$ |
− | |||
− | + | *The signal-to-noise ratio $10 \cdot {\rm lg \ SNR = 30 \ dB}$ leads to the absolute value $\rm SNR = 1000$. | |
+ | *Inserted into the above equation, this gives an approximate correlation coefficient of $\rho_{sr }\hspace{0.15cm}\underline{ = 0.9995}$. | ||
{{ML-Fuß}} | {{ML-Fuß}} | ||
− | [[Category: | + | [[Category:Theory of Stochastic Signals: Exercises|^4.3 Linear Combinations^]] |
Latest revision as of 15:22, 27 February 2022
We consider here an analog message signal $s(t)$ whose amplitude values are Gaussian distributed. The standard deviation of this zero mean signal is $\sigma_s=1 \hspace{0.05cm} \rm V$.
During transmission $s(t)$ is additively overlaid by noise $n(t)$ which like $s(t)$ can be assumed to be Gaussian distributed and zero mean.
- Let the standard deviation of the noise be generally $\sigma_n$.
- It is assumed that there are no statistical dependencies between the signals $s(t)$ and $n(t)$.
- Such a constellation is called "Additive White Gaussian Noise" $\rm (AWGN)$.
- The quality criterion for the received signal $r(t)= s(t)+n(t)$ the "signal-to-noise power ratio":
- $${\rm SNR} = {\sigma_s^2}/{\sigma_n^2}.$$
Hints:
- The exercise belongs to the chapter Linear Combinations of Random Variables.
- Reference is also made to the chapter Two-dimensional Gaussian random variables.
Questions
Solution
(1) It holds $r(t) = s(t)+n(t)$. Thus $f_r(r)$ can be calculated from the convolution of the two density functions $f_s(s)$ and $f_n(n)$ .
- Since both signals are Gaussian distributed, the convolution also yields a Gaussian function:
$$f_r(r)= \frac {1}{\sqrt{2 \pi} \cdot \sigma_r} \cdot {\rm e}^{-r^2/(2 \sigma_r^2)}.$$
- The variances of $s(t)$ and $n(t)$ add up. Therefore, with $\sigma_s =1 \hspace{0.05cm} \rm V$ and $\sigma_n =0.75 \hspace{0.05cm} \rm V$:
- $$\sigma_r = \sqrt{\sigma_s^2 + \sigma_n^2} =\sqrt{{(\rm 1\hspace{0.1cm}V)^2} + {(\rm 0.75\hspace{0.1cm}V)^2}}\hspace{0.15cm}\underline{ = {\rm 1.25\hspace{0.1cm}V}}.$$
(2) For the correlation coefficient, with the joint moment $m_{sr}$:
- $$\rho_{sr } = \frac{m_{sr }}{\sigma_s \cdot \sigma_r}.$$
- This takes into account that $s(t)$ and also $r(t)$ are zero mean, so that $\mu_{sr} =m_{sr}$ holds.
- Since $s(t)$ and $n(t)$ were assumed to be statistically independent of each other and thus uncorrelated, it further holds:
- $$m_{sr} = {\rm E}\big[s(t) \cdot r(t)\big] = {\rm E}\big[s^2(t)\big] + {\rm E}\big[s(t) \cdot n(t)\big] ={\rm E}\big[s^2(t)\big] = \sigma_s^2.$$
- $$\rightarrow \hspace{0.3cm} \rho_{sr } = \frac{\sigma_s}{ \sigma_r} = \sqrt{\frac{\sigma_s^2}{\sigma_s^2 + \sigma_n^2}} = \left (1+ {\sigma_n^2}/{\sigma_s^2}\right)^{-1/2}.$$
- With $\sigma_s =1 \hspace{0.05cm} \rm V$, $\sigma_n =0.75 \hspace{0.05cm} \rm V$ and $\sigma_r =1.25 \hspace{0.05cm} \rm V$ one obtains $\rho_{sr }\hspace{0.15cm}\underline{ = 0.8}$.
(3) The expression calculated in the last subtask can be represented by the abbreviation ${\rm SNR} =\sigma_s^2/\sigma_n^2$ as follows:
- $$\rho_{sr } = \rm \frac{1}{ \sqrt{1 + \frac{1}{SNR}}} \approx \frac{1}{ {1 + \frac{1}{2 \cdot SNR}}} \approx 1 - \frac{1}{2 \cdot SNR}.$$
- The signal-to-noise ratio $10 \cdot {\rm lg \ SNR = 30 \ dB}$ leads to the absolute value $\rm SNR = 1000$.
- Inserted into the above equation, this gives an approximate correlation coefficient of $\rho_{sr }\hspace{0.15cm}\underline{ = 0.9995}$.