Non-Linear Self-Interference Cancellation via Tensor Completion

10/05/2020
by   Freek Jochems, et al.
0

Non-linear self-interference (SI) cancellation constitutes a fundamental problem in full-duplex communications, which is typically tackled using either polynomial models or neural networks. In this work, we explore the applicability of a recently proposed method based on low-rank tensor completion, called canonical system identification (CSID), to non-linear SI cancellation. Our results show that CSID is very effective in modeling and cancelling the non-linear SI signal and can have lower computational complexity than existing methods, albeit at the cost of increased memory requirements.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset