作者
Francis Boabang, Amin Ebrahimzadeh, Roch H Glitho, Halima Elbiaze, Martin Maier, Fatna Belqasmi
发表日期
2021/8/20
期刊
IEEE Transactions on Network and Service Management
卷号
18
期号
4
页码范围
4829-4845
出版商
IEEE
简介
Remote robotic surgery, one of the most interesting 5G-enabled Tactile Internet applications, requires an ultra-low latency of 1 ms and high reliability of 99.999%. Communication disruptions such as packet loss and delay in remote robotic surgery can prevent messages between the surgeon and patient from arriving within the required deadline. In this paper, we advocate for scalable Gaussian process regression (GPR) to predict the contents of delayed and/or lost messages. Specifically, two kernel versions of the sequential randomized low-rank and sparse matrix factorization method ( -SRLSMF and SRLSMF) are proposed to scale GPR and address the issue of delayed and/or lost data in the training dataset. Given that the standard eigen decomposition for online GPR covariance update is cost-prohibitive, we employ incremental eigen decomposition in -SRLSMF and SRLSMF GPR methods. Simulations were …
引用总数
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F Boabang, A Ebrahimzadeh, RH Glitho, H Elbiaze… - IEEE Transactions on Network and Service …, 2021