20 research outputs found
Outage probability analysis of WPT systems with multiple-antenna access point
© 2016 IEEE. This paper analyzes the performance of a multiple-antenna access point (AP) system with an energy-constrained single-antenna destination node in various Bernoulli-Gaussian impulsive noise environments. More specifically, we deploy the harvest-then-transmit protocol where communication is accomplished over two distinct phases: i) power transfer phase (downlink), ii) information transmission phase (up-link). In this respect, an analytical expression for the ergodic outage probability is derived and validated with Monte Carlo simulations. Results have shown that increasing the source transmit power or/and the number of AP antennas will minimize the ergodic outage probability. It is also presented that careful selection of the energy harvesting time is important to enhance the system performance
Destination Scheduling for Secure Pinhole-Based Power-Line Communication
We propose an optimal destination scheduling scheme to improve the physical
layer security (PLS) of a power-line communication (PLC) based
Internet-of-Things system in the presence of an eavesdropper. We consider a
pinhole (PH) architecture for a multi-node PLC network to capture the keyhole
effect in PLC. The transmitter-to-PH link is shared between the destinations
and an eavesdropper which correlates all end-to-end links. The individual
channel gains are assumed to follow independent log-normal statistics.
Furthermore, the additive impulsive noise at each node is modeled by an
independent Bernoulli-Gaussian process. Exact computable expressions for the
average secrecy capacity (ASC) and the probability of intercept (POI)
performance over many different networks are derived. Approximate closed-form
expressions for the asymptotic ASC and POI are also provided. We find that the
asymptotic ASC saturates to a constant level as transmit power increases. We
observe that the PH has an adverse effect on the ASC. Although the shared link
affects the ASC, it has no effect on the POI. We show that by artificially
controlling the impulsive to background noise power ratio and its arrival rate
at the receivers, the secrecy performance can be improved
Communication for wideband fading channels : on theory and practice
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer Science, 2006.Includes bibliographical references (p. 163-167).This dissertation investigates some information theoretic aspects of communication over wideband fading channels and their applicability to design of signaling schemes approaching the wideband capacity limit. This work thus leads to enhanced understanding of wideband fading channel communication, and to the proposal of novel efficient signaling schemes, which perform very close to the optimal limit. The potential and limitations of such signaling schemes are studied. First, the structure of the optimal input signals is investigated for two commonly used channel models: the discrete-time memoryless Rician fading channel and the Rayleigh block fading channel. When the input is subject to an average power constraint. it is shown that the capacity-achieving input amplitude distribution for a Rician channel is discrete with a finite number of mass points in the low SNR regime. A similar discrete structure for the optimal amplitude is proven to hold over the entire SNR range for the average power limited Rayleigh block fading channel. Channels with a peak power constraint are also analyzed. When the input is constrained to have limited peak power, we show that if its Kuhn-Tucker condition satisfies a sufficient condition, the optimal input amplitude is discrete with a finite number of values.(cont.) In the low SNR regime, the discrete structure becomes binary. Next, we consider signaling over general fading models. Multi-tone FSK, a signaling scheme which uses low duty cycle frequency-shift keying signals (essentially orthogonal binary signals, is proposed and shown to be capacity achieving in the widceband limit. Transmission of information over wideband fading channels using Multi-tonc FSK is considered by using both theoretic analysis and numerical simulation. With a finite bandwidth and noncoherent detection, the achievable data rate of the Multi-tone FSK scheme is close to the wideband capacity limit. furthermore, a feedback scheme is proposed for Multi-tone FSK to improve the codeword error performance. It is shown that if the receiver can feedback received signal quality to the transimitter. a significant improvement in codeword error probability can be achieved. Experimental results are also obtained to dlenlonstrate features and practicality of Multi-tone FSK.by Cheng Luo.Ph.D
Characterization and Emulation of Low-Voltage Power Line Channels for Narrowband and Broadband Communication
The demand for smart grid and smart home applications has raised the recent interest in power line communication (PLC) technologies, and has driven a broad set of deep surveys in low-voltage (LV) power line channels. This book proposes a set of novel approaches, to characterize and to emulate LV power line channels in the frequency range from0.15to 10 MHz, which closes gaps between the traditional narrowband (up to 500 kHz) and broadband (above1.8 MHz) ranges
Characterization and Emulation of Low-Voltage Power Line Channels for Narrowband and Broadband Communication
The demand for smart grid and smart home applications has raised the recent interest in power line communication (PLC) technologies, and has driven a broad set of deep surveys in low-voltage (LV) power line channels. This book proposes a set of novel approaches, to characterize and to emulate LV power line channels in the frequency range from0.15to 10 MHz, which closes gaps between the traditional narrowband (up to 500 kHz) and broadband (above1.8 MHz) ranges
Characterization and Emulation of Low-Voltage Power Line Channels for Narrowband and Broadband Communication
This thesis proposes a set of novel approaches to characterize and to emulate LV power line channels in the frequency range from 0.15 to 10MHz, which close gaps between the traditional narrowband (up to 500 kHz) and broadband (above 1.8MHz) ranges
Signal representation and recovery under measurement constraints
Ankara : The Department of Electrical and Electronics Engineering and the Graduate School of Engineering and Science of Bilkent University, 2012.Thesis (Ph. D.) -- Bilkent University, 2012.Includes bibliographical references.We are concerned with a family of signal representation and recovery problems
under various measurement restrictions. We focus on finding performance
bounds for these problems where the aim is to reconstruct a signal from its direct
or indirect measurements. One of our main goals is to understand the effect
of different forms of finiteness in the sampling process, such as finite number of
samples or finite amplitude accuracy, on the recovery performance. In the first
part of the thesis, we use a measurement device model in which each device has a
cost that depends on the amplitude accuracy of the device: the cost of a measurement
device is primarily determined by the number of amplitude levels that the
device can reliably distinguish; devices with higher numbers of distinguishable
levels have higher costs. We also assume that there is a limited cost budget so
that it is not possible to make a high amplitude resolution measurement at every
point. We investigate the optimal allocation of cost budget to the measurement
devices so as to minimize estimation error. In contrast to common practice which
often treats sampling and quantization separately, we have explicitly focused on
the interplay between limited spatial resolution and limited amplitude accuracy.
We show that in certain cases, sampling at rates different than the Nyquist rate
is more efficient. We find the optimal sampling rates, and the resulting optimal
error-cost trade-off curves. In the second part of the thesis, we formulate a set of
measurement problems with the aim of reaching a better understanding of the relationship
between geometry of statistical dependence in measurement space and
total uncertainty of the signal. These problems are investigated in a mean-square
error setting under the assumption of Gaussian signals. An important aspect of
our formulation is our focus on the linear unitary transformation that relates the
canonical signal domain and the measurement domain. We consider measurement
set-ups in which a random or a fixed subset of the signal components in
the measurement space are erased. We investigate the error performance, both We are concerned with a family of signal representation and recovery problems
under various measurement restrictions. We focus on finding performance
bounds for these problems where the aim is to reconstruct a signal from its direct
or indirect measurements. One of our main goals is to understand the effect
of different forms of finiteness in the sampling process, such as finite number of
samples or finite amplitude accuracy, on the recovery performance. In the first
part of the thesis, we use a measurement device model in which each device has a
cost that depends on the amplitude accuracy of the device: the cost of a measurement
device is primarily determined by the number of amplitude levels that the
device can reliably distinguish; devices with higher numbers of distinguishable
levels have higher costs. We also assume that there is a limited cost budget so
that it is not possible to make a high amplitude resolution measurement at every
point. We investigate the optimal allocation of cost budget to the measurement
devices so as to minimize estimation error. In contrast to common practice which
often treats sampling and quantization separately, we have explicitly focused on
the interplay between limited spatial resolution and limited amplitude accuracy.
We show that in certain cases, sampling at rates different than the Nyquist rate
is more efficient. We find the optimal sampling rates, and the resulting optimal
error-cost trade-off curves. In the second part of the thesis, we formulate a set of
measurement problems with the aim of reaching a better understanding of the relationship
between geometry of statistical dependence in measurement space and
total uncertainty of the signal. These problems are investigated in a mean-square
error setting under the assumption of Gaussian signals. An important aspect of
our formulation is our focus on the linear unitary transformation that relates the
canonical signal domain and the measurement domain. We consider measurement
set-ups in which a random or a fixed subset of the signal components in
the measurement space are erased. We investigate the error performance, both We are concerned with a family of signal representation and recovery problems
under various measurement restrictions. We focus on finding performance
bounds for these problems where the aim is to reconstruct a signal from its direct
or indirect measurements. One of our main goals is to understand the effect
of different forms of finiteness in the sampling process, such as finite number of
samples or finite amplitude accuracy, on the recovery performance. In the first
part of the thesis, we use a measurement device model in which each device has a
cost that depends on the amplitude accuracy of the device: the cost of a measurement
device is primarily determined by the number of amplitude levels that the
device can reliably distinguish; devices with higher numbers of distinguishable
levels have higher costs. We also assume that there is a limited cost budget so
that it is not possible to make a high amplitude resolution measurement at every
point. We investigate the optimal allocation of cost budget to the measurement
devices so as to minimize estimation error. In contrast to common practice which
often treats sampling and quantization separately, we have explicitly focused on
the interplay between limited spatial resolution and limited amplitude accuracy.
We show that in certain cases, sampling at rates different than the Nyquist rate
is more efficient. We find the optimal sampling rates, and the resulting optimal
error-cost trade-off curves. In the second part of the thesis, we formulate a set of
measurement problems with the aim of reaching a better understanding of the relationship
between geometry of statistical dependence in measurement space and
total uncertainty of the signal. These problems are investigated in a mean-square
error setting under the assumption of Gaussian signals. An important aspect of
our formulation is our focus on the linear unitary transformation that relates the
canonical signal domain and the measurement domain. We consider measurement
set-ups in which a random or a fixed subset of the signal components in
the measurement space are erased. We investigate the error performance, both in the average, and also in terms of guarantees that hold with high probability,
as a function of system parameters. Our investigation also reveals a possible relationship
between the concept of coherence of random fields as defined in optics,
and the concept of coherence of bases as defined in compressive sensing, through
the fractional Fourier transform. We also consider an extension of our discussions
to stationary Gaussian sources. We find explicit expressions for the mean-square
error for equidistant sampling, and comment on the decay of error introduced by
using finite-length representations instead of infinite-length representations.Özçelikkale Hünerli, AyçaPh.D
Solutions for large scale, efficient, and secure Internet of Things
The design of a general architecture for the Internet of Things (IoT) is a complex task, due to the heterogeneity of devices, communication technologies, and applications that are part of such systems. Therefore, there are significant opportunities to improve the state of the art, whether to better the performance of the system, or to solve actual issues in current systems. This thesis focuses, in particular, on three aspects of the IoT. First, issues of cyber-physical systems are analysed. In these systems, IoT technologies are widely used to monitor, control, and act on physical entities. One of the most important issue in these scenarios are related to the communication layer, which must be characterized by high reliability, low latency, and high energy efficiency. Some solutions for the channel access scheme of such systems are proposed, each tailored to different specific scenarios. These solutions, which exploit the capabilities of state of the art radio transceivers, prove effective in improving the performance of the considered systems. Positioning services for cyber-physical systems are also investigated, in order to improve the accuracy of such services. Next, the focus moves to network and service optimization for traffic intensive applications, such as video streaming. This type of traffic is common amongst non-constrained devices, like smartphones and augmented/virtual reality headsets, which form an integral part of the IoT ecosystem. The proposed solutions are able to increase the video Quality of Experience while wasting less bandwidth than state of the art strategies. Finally, the security of IoT systems is investigated. While often overlooked, this aspect is fundamental to enable the ubiquitous deployment of IoT. Therefore, security issues of commonly used IoT protocols are presented, together with a proposal for an authentication mechanism based on physical channel features. This authentication strategy proved to be effective as a standalone mechanism or as an additional security layer to improve the security level of legacy systems