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Dive into the research topics where Charles Jeon is active.

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Featured researches published by Charles Jeon.


international symposium on information theory | 2015

Optimality of large MIMO detection via approximate message passing

Charles Jeon; Ramina Ghods; Arian Maleki; Christoph Studer

Optimal data detection in multiple-input multiple-output (MIMO) communication systems with a large number of antennas at both ends of the wireless link entails prohibitive computational complexity. In order to reduce the computational complexity, a variety of sub-optimal detection algorithms have been proposed in the literature. In this paper, we analyze the optimality of a novel data-detection method for large MIMO systems that relies on approximate message passing (AMP). We show that our algorithm, referred to as individually-optimal (IO) large-MIMO AMP (short IO-LAMA), is able to perform IO data detection given certain conditions on the MIMO system and the constellation set (e.g., QAM or PSK) are met.


international symposium on information theory | 2016

On the performance of mismatched data detection in large MIMO systems

Charles Jeon; Arian Maleki; Christoph Studer

We investigate the performance of mismatched data detection in large multiple-input multiple-output (MIMO) systems, where the prior distribution of the transmit signal used in the data detector differs from the true prior. To minimize the performance loss caused by this prior mismatch, we include a tuning stage into our recently-proposed large MIMO approximate message passing (LAMA) algorithm, which allows us to develop mismatched LAMA algorithms with optimal as well as sub-optimal tuning. We show that carefully-selected priors often enable simpler and computationally more efficient algorithms compared to LAMA with the true prior while achieving near-optimal performance. A performance analysis of our algorithms for a Gaussian prior and a uniform prior within a hypercube covering the QAM constellation recovers classical and recent results on linear and non-linear MIMO data detection, respectively.


international symposium on information theory | 2017

Optimally-tuned nonparametric linear equalization for massive MU-MIMO systems

Ramina Ghods; Charles Jeon; Gulnar Mirza; Arian Maleki; Christoph Studer

This paper deals with linear equalization in massive multi-user multiple-input multiple-output (MU-MIMO) wireless systems. We first provide simple conditions on the antenna configuration for which the well-known linear minimum mean-square error (L-MMSE) equalizer provides near-optimal spectral efficiency, and we analyze its performance in the presence of parameter mismatches in the signal and/or noise powers. We then propose a novel, optimally-tuned NOnParametric Equalizer (NOPE) for massive MU-MIMO systems, which avoids knowledge of the transmit signal and noise powers altogether. We show that NOPE achieves the same performance as that of the L-MMSE equalizer in the large-antenna limit, and we demonstrate its efficacy in realistic, finite-dimensional systems. From a practical perspective, NOPE is computationally efficient and avoids dedicated training that is typically required for parameter estimation.


international symposium on information theory | 2017

On the achievable rates of decentralized equalization in massive MU-MIMO systems

Charles Jeon; Kaipeng Li; Joseph R. Cavallaro; Christoph Studer

Massive multi-user (MU) multiple-input multiple-output (MIMO) promises significant gains in spectral efficiency compared to traditional, small-scale MIMO technology. Linear equalization algorithms, such as zero forcing (ZF) or minimum mean-square error (MMSE)-based methods, typically rely on centralized processing at the base station (BS), which results in (i) excessively high interconnect and chip input/output data rates, and (ii) high computational complexity. In this paper, we investigate the achievable rates of decentralized equalization that mitigates both of these issues. We consider two distinct BS architectures that partition the antenna array into clusters, each associated with independent radio-frequency chains and signal processing hardware, and the results of each cluster are fused in a feed forward network. For both architectures, we consider ZF, MMSE, and a novel, non-linear equalization algorithm that builds upon approximate message passing (AMP), and we theoretically analyze the achievable rates of these methods. Our results demonstrate that decentralized equalization with our AMP-based methods incurs no or only a negligible loss in terms of achievable rates compared to that of centralized solutions.


allerton conference on communication, control, and computing | 2015

Optimal large-MIMO data detection with transmit impairments

Ramina Ghods; Charles Jeon; Arian Maleki; Christoph Studer

Real-world transceiver designs for multiple-input multiple-output (MIMO) wireless communication systems are affected by a number of hardware impairments that already appear at the transmit side, such as amplifier non-linearities, quantization artifacts, and phase noise. While such transmit-side impairments are routinely ignored in the data-detection literature, they often limit reliable communication in practical systems. In this paper, we present a novel data-detection algorithm, referred to as large-MIMO approximate message passing with transmit impairments (short LAMA-I), which takes into account a broad range of transmit-side impairments in wireless systems with a large number of transmit and receive antennas. We provide conditions in the large-system limit for which LAMA-I achieves the error-rate performance of the individually-optimal (IO) data detector. We furthermore demonstrate that LAMA-I achieves near-IO performance at low computational complexity in realistic, finite dimensional large-MIMO systems.


international conference on telecommunications | 2018

Nonlinear Precoding for Phase-Quantized Constant-Envelope Massive MU-MIMO-OFDM

Sven Jacobsson; Oscar Castañeda; Charles Jeon; Giuseppe Durisi; Christoph Studer


arXiv: Information Theory | 2018

Decentralized Equalization with Feedforward Architectures for Massive MU-MIMO.

Charles Jeon; Kaipeng Li; Joseph R. Cavallaro; Christoph Studer


arXiv: Information Theory | 2018

Feedforward Architectures for Decentralized Precoding in Massive MU-MIMO Systems.

Kaipeng Li; Charles Jeon; Joseph R. Cavallaro; Christoph Studer


asilomar conference on signals, systems and computers | 2017

VLSI design of a nonparametric equalizer for massive MU-MIMO

Charles Jeon; Gulnar Mirza; Ramina Ghods; Arian Maleki; Christoph Studer


asilomar conference on signals, systems and computers | 2017

Decentralized equalization for massive MU-MIMO on FPGA

Kaipeng Li; Charles Jeon; Joseph R. Cavallaro; Christoph Studer

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Giuseppe Durisi

Chalmers University of Technology

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