Channel Coding meets Sequence Design via Machine Learning for Integrated Sensing and Communications
Channel Coding meets Sequence Design via Machine Learning for Integrated Sensing and Communications
For integrated sensing and communications, an intriguing question is whether information-bearing channel-coded signals can be reused for sensing - specifically ranging. This question forces the hitherto non-overlapping fields of channel coding (communications) and sequence design (sensing) to intersect by motivating the design of error-correcting codes that have good autocorrelation properties. In this letter, we demonstrate how machine learning (ML) is well-suited for designing such codes, especially for short block lengths. As an example, for rate 1/2 and block length 32, we show that even an unsophisticated ML code has a bit-error rate performance similar to a Polar code with the same parameters, but with autocorrelation sidelobes 24dB lower. While a length-32 Zadoff-Chu (ZC) sequence has zero autocorrelation sidelobes, there are only 16 such sequences and hence, a 1/2 code rate cannot be realized by using ZC sequences as codewords. Hence, ML bridges channel coding and sequence design by trading off an ideal autocorrelation function for a large (i.e., rate-dependent) codebook size.
Bruno Clerckx、Sundar Aditya、Morteza Varasteh
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Bruno Clerckx,Sundar Aditya,Morteza Varasteh.Channel Coding meets Sequence Design via Machine Learning for Integrated Sensing and Communications[EB/OL].(2025-03-29)[2025-05-07].https://arxiv.org/abs/2503.23119.点此复制
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