Measure Concentration on the OFDM-Based Random Access Channel
Paper in proceeding, 2021

It is well known that CS can boost massive random access protocols. Usually, the protocols operate in some overloaded regime where the sparsity can be exploited. In this paper, we consider a different approach by taking an orthogonal FFT base, subdivide its image into appropriate sub-channels and let each subchannel take only a fraction of the load. To show that this approach can actually achieve the full capacity we i) provide new concentration inequalities, and ii) devise a sparsity capture effect, i.e where the sub-division can be driven such that the activity in each each sub-channel is sparse by design. We show by simulations that the system is scalable resulting in a coarsely 30-fold capacity increase.

Author

Gerhard Wunder

Freie Universität Berlin

Axel Flinth

Computer vision and medical image analysis

Benedikt Groß

Freie Universität Berlin

2021 IEEE Statistical Signal Processing Workshop (SSP)

2693-3551 (ISSN)

526-530
978-1-7281-5767-2 (ISBN)

IEEE Statistical Signal Processing Workshop
Rio de Janeiro/Virtual, Brazil,

Subject Categories

Computer Engineering

Telecommunications

Communication Systems

DOI

10.1109/SSP49050.2021.9513844

More information

Latest update

1/5/2022 1