How is deep learning applied in telecommunications?

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Fatih Cogen
Fatih Cogen el 13 de Dic. de 2022
Respondida: Santosh Fatale el 21 de Dic. de 2022
Hello everyone,
I work in the field of telecommunications. My goal is to plot BER values against certain SNR values. I send a certain number of bits to MATLAB and determine how many of them are true and how many are false. For example, 0 dB -> 0.1668; 5 dB -> 0.0518; 0.0101.
The code I wrote in MATLAB works for SNR in decibels, I am trying to find the BER value for each SNR value. In addition to classical communication, I want to do these operations with Deep Learning in MATLAB.
For example, it will be very good for my work to do the following:
1) For example, I want to have the following Maximum-Likelihood process done by Deep learning, but I don't know how to do it.
for loop_h=1:nT
for loop=1:M
Metrics(loop,loop_h) = norm(y-H(:,loop_h)*ss(1,loop))^2; %Here, "ss" stands for M-QAM modulation symbols and H stands for Rayleigh fading channel
end
end
2) I would like to have channel estimation if possible. For example, I express the Rayleigh channel as follows. How can I predict this with Deep learning in MATLAB?
H=sqrt(0.5).*(randn(nR,nT) + 1i*randn(nR,nT));
Any suggestions on how I can do these operations, a book, a piece of code, etc.? I would appreciate it if you could share it with me. Thanks in advance for your suggestions and help.

Respuestas (1)

Santosh Fatale
Santosh Fatale el 21 de Dic. de 2022
Hi Fatih,
I believe the following example could be useful for you to understand the usage of Deep Learning for performing channel estimation.

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