Title :
Link adaptation for BICM-OFDM through adaptive kernel regression
Author :
Wahls, Sander ; Poor, H. Vincent
Author_Institution :
Dept. of Electr. Eng., Princeton Univ., Princeton, NJ, USA
Abstract :
The packet error rate (PER) of wireless BICM-OFDM systems is notoriously difficult to predict analytically. This remains true even if all subcarriers use a common modulation and coding scheme (MCS). Link adaptation, which here shall be understood as the process of adapting the MCS in order to maximize goodput, therefore remains a major challenge. Non-parametric learning is an elegant way to evade the lack of robust analytical models. Learning from multidimensional features is particularly interesting because one-dimensional features can characterize frequency-selective channels only roughly. However, most of the literature discusses methods that are not truly online. Either the computational costs become unbearable over time or the method saturates and effectively stops learning. The modified k nearest neighbors algorithm (k-NN) seems to be the only exception currently. However, k-NN has well-known weaknesses in learning from small sample sets. Two adaptive kernel regression (AKR) methods are therefore proposed instead. Simulation results are reported for a setup in which several practically relevant conditions that have been mostly ignored in previous studies using multidimensional features (imperfect channel knowledge, Doppler shift, feedback delay, collisions) are modeled.
Keywords :
Doppler shift; OFDM modulation; frequency selective surfaces; modulation coding; regression analysis; wireless channels; AKR; Doppler shift; PER; adaptive kernel regression; bit-interleaved coded modulation; coding scheme; common modulation; feedback delay; frequency selective channels; imperfect channel knowledge; k nearest neighbors; k-NN; link adaptation; multidimensional features; nonparametric learning; one-dimensional features; packet error rate; wireless BICM-OFDM systems; IEEE 802.11 Standards; Kernel; Modulation; OFDM; Prediction algorithms; Signal to noise ratio; Wireless communication; Link adaptation; Machine learning algorithms; OFDM; Unsupervised learning; Wireless communication;
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2013 IEEE International Conference on
Conference_Location :
Vancouver, BC
DOI :
10.1109/ICASSP.2013.6638641