Non-Convex Generalized Nash Games for Energy Efficient Power Allocation and Beamforming in mmWave Networks
Wenbo Wang (Kunming University); Amir Leshem (Bar-Ilan University)
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Network management is a fundamental ingredient
for efficient operation of wireless networks. With increasing
bandwidth, number of antennas and number of users, the amount
of information required for network management increases sig-
nificantly. Therefore, distributed network management is a key
to efficient operation of future networks. This paper focuses
on the problem of distributed joint beamforming control and
power allocation in ad-hoc mmWave networks. Over the shared
spectrum, a number of multi-input-multi-output links attempt
to minimize their supply power by simultaneously finding the
locally optimal power allocation and beamformers in a self-
organized manner. Our design considers a family of non-convex
quality-of-service constraint and utility functions characterized
by monotonicity in the strategies of the various users. We
propose a two-stage, decentralized optimization scheme, where
the adaptation of power levels and beamformer coefficients are
iteratively performed by each link. We first prove that given a
set of receive beamformers, the power allocation stage converges
to an optimal generalized Nash equilibrium of the generalized
power allocation game. Then we prove that iterative minimum-
mean-square-error adaptation of the receive beamformer results
in an overall converging scheme. Several transmit beamforming
schemes requiring different levels of information exchange are also
compared in the proposed allocation framework. Our simulation
results show that allowing each link to optimize its transmit filters
using the direct channel results in a near optimum performance
with very low computational complexity, even though the problem
is highly non-convex.