Joint Spectrum and Power Allocation for V2X Communications with Imperfect CSI
Peng Wang, Weihua Wu, Jiayi Liu, Guanhua Chai, Li Feng

TL;DR
This paper addresses joint spectrum and power allocation in V2X communications under imperfect CSI, proposing robust methods to maximize capacity while ensuring reliability amidst channel uncertainties.
Contribution
It introduces two novel robust resource allocation approaches, Bernstein approximation-based and self-learning, to effectively handle channel uncertainties in V2X communications.
Findings
Proposed methods improve cellular user capacity.
Approaches ensure V2X reliability under uncertainties.
Simulation confirms effectiveness of the solutions.
Abstract
In Vehicle-to-Everything (V2X) communication, the high mobility of vehicles generates the Doppler shift which leads to channel uncertainties. Moreover, the reasons for channel uncertainties also include the finite channel feedback, channels state information (CSI) loss and latency. With this concern, we formulate a joint spectrum and power allocation problem for V2X communication with imperfect CSI. Specifically, the sum capacity of cellular user equipments (CUEs) is maximized subject to the minimum Signal-to-Interference-and-Noise Ratio (SINR) requirements of CUEs and the outage probability constraints of vehicular user equipments (VUEs). Then, two different robust resource allocation approaches are designed to solve the problem. One is Bernstein Approximation-based Robust Resource Allocation approach. More specifically, Bernstein approximations are employed to convert the chance…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Vehicular Ad Hoc Networks (VANETs) · Wireless Body Area Networks
MethodsSelf-Learning
