We report a novel approach for inversion of large random matrices in massive Multiple-Input Multiple Output (MIMO) systems. It is based on the concept of inverse vectors in which an inverse vector is defined for each column of the principal matrix. Such an inverse vector has to satisfy two constraints. Firstly, it has to be in the null-space of all the remaining columns. We call it the null-space problem. Secondly, it has to form a projection of value equal to one in the direction of selected column. We term it as the normalization problem. The process essentially decomposes the inversion problem and distributes it over columns. Each column can be thought of as a node in the network or a particle in a swarm seeking its own solution, the inv...
In this letter, methods and corresponding complexities for fast matrix inversion updates in the cont...
In this paper, we analyze the VLSI implementation tradeoffs for linear data detection in the uplink...
In this paper, we will represent several methods that can reduce the computational complexity to det...
[[abstract]]This correspondence presents a new matrix inversion approximation (MIA) method for massi...
A novel approach for solving linear estimation problem in multi-user massive MIMO systems is propose...
In very-large multiple-input multiple-output (MIMO) systems, the BS (base station) is equipped with ...
Approximate matrix inversion based on Neumann series has seen a recent increased interest motivated ...
International audienceThis paper provides a comprehensive introduction of large random matrix method...
In massive multiple-input multiple-output (MIMO) systems when the number of base station antennas is...
In this paper we consider an efficient method to resolve the underlying large matrix inversion probl...
Abstract — The matrix inversion lemma gives an explicit formula of the inverse of a positive-definit...
Abstract Massive multiple-input multiple-output (MIMO) systems have been proposed to meet the user ...
Massive MIMO (multiple-input multiple-output) has been recognized as an efficient solution to improv...
In this paper, we discuss the implementation strategies of an explicit matrix inversion technique ba...
Maximum likelihood detection is infeasible in uplink multiuser massive multiple-input and multiple-o...
In this letter, methods and corresponding complexities for fast matrix inversion updates in the cont...
In this paper, we analyze the VLSI implementation tradeoffs for linear data detection in the uplink...
In this paper, we will represent several methods that can reduce the computational complexity to det...
[[abstract]]This correspondence presents a new matrix inversion approximation (MIA) method for massi...
A novel approach for solving linear estimation problem in multi-user massive MIMO systems is propose...
In very-large multiple-input multiple-output (MIMO) systems, the BS (base station) is equipped with ...
Approximate matrix inversion based on Neumann series has seen a recent increased interest motivated ...
International audienceThis paper provides a comprehensive introduction of large random matrix method...
In massive multiple-input multiple-output (MIMO) systems when the number of base station antennas is...
In this paper we consider an efficient method to resolve the underlying large matrix inversion probl...
Abstract — The matrix inversion lemma gives an explicit formula of the inverse of a positive-definit...
Abstract Massive multiple-input multiple-output (MIMO) systems have been proposed to meet the user ...
Massive MIMO (multiple-input multiple-output) has been recognized as an efficient solution to improv...
In this paper, we discuss the implementation strategies of an explicit matrix inversion technique ba...
Maximum likelihood detection is infeasible in uplink multiuser massive multiple-input and multiple-o...
In this letter, methods and corresponding complexities for fast matrix inversion updates in the cont...
In this paper, we analyze the VLSI implementation tradeoffs for linear data detection in the uplink...
In this paper, we will represent several methods that can reduce the computational complexity to det...