9 research outputs found
Channel Estimation for Massive MIMO Systems
Massive multiple input multiple output (MIMO) systems can significantly improve the channel
capacity by deploying multiple antennas at the transmitter and receiver. Massive MIMO
is considered as one of key technologies of the next generation of wireless communication
systems. However, with the increase of the number of antennas at the base station, a large
number of unknown channel parameters need to be dealt with, which makes the channel
estimation a challenging problem. Hence, the research on the channel estimation for massive
MIMO is of great importance to the development of the next generation of communication
systems. The wireless multipath channel exhibits sparse characteristics, but the traditional
channel estimation techniques do not make use of the sparsity. The channel estimation
based on compressive sensing (CS) can make full use of the channel sparsity, while use
fewer pilot symbols. In this work, CS channel estimation methods are proposed for massive
MIMO systems in complex environments operating in multipath channels with static and
time-varying parameters. Firstly, a CS channel estimation algorithm for massive MIMO
systems with Orthogonal Frequency Division Multiplexing (OFDM) is proposed. By exploiting
the spatially common sparsity in the virtual angular domain of the massive MIMO
channels, a dichotomous-coordinate-decent-joint-sparse-recovery (DCD-JSR) algorithm is
proposed. More specifically, by considering the channel is static over several OFDM symbols
and exhibits common sparsity in the virtual angular domain, the DCD-JSR algorithm can
jointly estimate multiple sparse channels with low computational complexity. The simulation
results have shown that, compared to existing channel estimation algorithms such as the
distributed-sparsity-adaptive-matching-pursuit (DSAMP) algorithm, the proposed DCD-JSR
algorithm has significantly lower computational complexity and better performance. Secondly, these results have been extended to the case of multipath channels with time-varying
parameters. This has been achieved by employing the basis expansion model to approximate
the time variation of the channel, thus the modified DCD-JSR algorithm can estimate the
channel in a massive MIMO OFDM system operating over frequency selective and highly
mobile wireless channels. Simulation results have shown that, compared to the DCD-JSR
algorithm designed for time-invariant channels, the modified DCD-JSR algorithm provides
significantly better estimation performance in fast time-varying channels
New advances in synchronization of digital communication receivers
Synchronization is a challenging but very
important task in communications. In digital communication systems, a hierarchy of synchronization problems has to be considered: carrier synchronization, symbol timing synchronization and frame synchronization. For bandwidth efficiency and burst transmission reasons, the former two synchronization steps tend to favor non-data aided (NDA or blind) techniques, while in general, the last one is usually solved by inserting repetitively known
bits or words into the data sequence, and is referred to as a data-aided (DA) approach.
Over the last two decades, extensive research work has been carried out to design nondata-aided timing recovery and carrier synchronization algorithms. Despite their importance and spread
use, most of the existing blind synchronization algorithms are derived in an ad-hoc manner without exploiting optimally the entire available statistical information. In most cases their
performance is evaluated by computer simulations, rigorous and complete performance analysis has not been performed yet. It turns out that a theoretical oriented approach is indispensable for
studying the limit or bound of algorithms and comparing different methods.
The main goal of this dissertation is to develop several novel signal processing frameworks that enable to analyze and improve
the performance of the existing timing recovery and carrier synchronization algorithms. As byproducts of this analysis, unified methods for designing new computationally and statistically efficient (i.e., minimum variance estimators)
blind feedforward synchronizers are developed.
Our work consists of three tightly coupled research directions. First, a general and unified framework is proposed to develop optimal nonlinear least-squares (NLS) carrier recovery scheme for burst transmissions. A family of
blind constellation-dependent optimal "matched" NLS carrier estimators is proposed for synchronization of burst transmissions fully modulated by PSK and QAM-constellations in additive white Gaussian noise
channels. Second, a cyclostationary statistics
based framework is proposed for designing computationally and statistically efficient robust blind symbol timing recovery for time-selective flat-fading channels. Lastly, dealing with the problem of frame synchronization, a simple and efficient data-aided approach is
proposed for jointly estimating the frame boundary, the frequency-selective channel and the carrier frequency offset
Optimization Methods Applied to Power Systems â…¡
Electrical power systems are complex networks that include a set of electrical components that allow distributing the electricity generated in the conventional and renewable power plants to distribution systems so it can be received by final consumers (businesses and homes). In practice, power system management requires solving different design, operation, and control problems. Bearing in mind that computers are used to solve these complex optimization problems, this book includes some recent contributions to this field that cover a large variety of problems. More specifically, the book includes contributions about topics such as controllers for the frequency response of microgrids, post-contingency overflow analysis, line overloads after line and generation contingences, power quality disturbances, earthing system touch voltages, security-constrained optimal power flow, voltage regulation planning, intermittent generation in power systems, location of partial discharge source in gas-insulated switchgear, electric vehicle charging stations, optimal power flow with photovoltaic generation, hydroelectric plant location selection, cold-thermal-electric integrated energy systems, high-efficiency resonant devices for microwave power generation, security-constrained unit commitment, and economic dispatch problems
MS FT-2-2 7 Orthogonal polynomials and quadrature: Theory, computation, and applications
Quadrature rules find many applications in science and engineering. Their analysis is a classical area of applied mathematics and continues to attract considerable attention. This seminar brings together speakers with expertise in a large variety of quadrature rules. It is the aim of the seminar to provide an overview of recent developments in the analysis of quadrature rules. The computation of error estimates and novel applications also are described