7,502 research outputs found
How do Wireless Chains Behave? The Impact of MAC Interactions
In a Multi-hop Wireless Networks (MHWN), packets are routed between source
and destination using a chain of intermediate nodes; chains are a fundamental
communication structure in MHWNs whose behavior must be understood to enable
building effective protocols. The behavior of chains is determined by a number
of complex and interdependent processes that arise as the sources of different
chain hops compete to transmit their packets on the shared medium. In this
paper, we show that MAC level interactions play the primary role in determining
the behavior of chains. We evaluate the types of chains that occur based on the
MAC interactions between different links using realistic propagation and packet
forwarding models. We discover that the presence of destructive interactions,
due to different forms of hidden terminals, does not impact the throughput of
an isolated chain significantly. However, due to the increased number of
retransmissions required, the amount of bandwidth consumed is significantly
higher in chains exhibiting destructive interactions, substantially influencing
the overall network performance. These results are validated by testbed
experiments. We finally study how different types of chains interfere with each
other and discover that well behaved chains in terms of self-interference are
more resilient to interference from other chains
On approximating copulas by finite mixtures
Copulas are now frequently used to approximate or estimate multivariate
distributions because of their ability to take into account the multivariate
dependence of the variables while controlling the approximation properties of
the marginal densities. Copula based multivariate models can often also be more
parsimonious than fitting a flexible multivariate model, such as a mixture of
normals model, directly to the data. However, to be effective, it is imperative
that the family of copula models considered is sufficiently flexible. Although
finite mixtures of copulas have been used to construct flexible families of
copulas, their approximation properties are not well understood and we show
that natural candidates such as mixtures of elliptical copulas and mixtures of
Archimedean copulas cannot approximate a general copula arbitrarily well. Our
article develops fundamental tools for approximating a general copula
arbitrarily well by a mixture and proposes a family of finite mixtures that can
do so. We illustrate empirically on a financial data set that our approach for
estimating a copula can be much more parsimonious and results in a better fit
than approximating the copula by a mixture of normal copulas.Comment: 26 pages and 1 figure and 2 table
Inferring Room Semantics Using Acoustic Monitoring
Having knowledge of the environmental context of the user i.e. the knowledge
of the users' indoor location and the semantics of their environment, can
facilitate the development of many of location-aware applications. In this
paper, we propose an acoustic monitoring technique that infers semantic
knowledge about an indoor space \emph{over time,} using audio recordings from
it. Our technique uses the impulse response of these spaces as well as the
ambient sounds produced in them in order to determine a semantic label for
them. As we process more recordings, we update our \emph{confidence} in the
assigned label. We evaluate our technique on a dataset of single-speaker human
speech recordings obtained in different types of rooms at three university
buildings. In our evaluation, the confidence\emph{ }for the true label
generally outstripped the confidence for all other labels and in some cases
converged to 100\% with less than 30 samples.Comment: 2017 IEEE International Workshop on Machine Learning for Signal
Processing, Sept.\ 25--28, 2017, Tokyo, Japa
Reactive power minimization of dual active bridge DC/DC converter with triple phase shift control using neural network
Reactive power flow increases dual active bridge (DAB) converter RMS current leading to an increase in conduction losses especially in high power applications. This paper proposes a new optimized triple phase shift (TPS) switching algorithm that minimizes the total reactive power of the converter. The algorithm iteratively searches for TPS control variables that satisfy the desired active power flow while selecting the operating mode with minimum reactive power consumption. This is valid for the whole range of converter operation. The iterative algorithm is run offline for the entire active power range (-1pu to 1pu) and the resulting data is used to train an open loop artificial neural network controller to reduce computational time and memory allocation necessary to store the data generated. To validate the accuracy of the proposed controller, a 500-MW 300kV/100kV DAB model is simulated in Matlab/Simulink, as a potential application for DAB in DC grids
Mixed Marginal Copula Modeling
This article extends the literature on copulas with discrete or continuous
marginals to the case where some of the marginals are a mixture of discrete and
continuous components. We do so by carefully defining the likelihood as the
density of the observations with respect to a mixed measure. The treatment is
quite general, although we focus focus on mixtures of Gaussian and Archimedean
copulas. The inference is Bayesian with the estimation carried out by Markov
chain Monte Carlo. We illustrate the methodology and algorithms by applying
them to estimate a multivariate income dynamics model.Comment: 46 pages, 8 tables and 4 figure
OSCAR: A Collaborative Bandwidth Aggregation System
The exponential increase in mobile data demand, coupled with growing user
expectation to be connected in all places at all times, have introduced novel
challenges for researchers to address. Fortunately, the wide spread deployment
of various network technologies and the increased adoption of multi-interface
enabled devices have enabled researchers to develop solutions for those
challenges. Such solutions aim to exploit available interfaces on such devices
in both solitary and collaborative forms. These solutions, however, have faced
a steep deployment barrier.
In this paper, we present OSCAR, a multi-objective, incentive-based,
collaborative, and deployable bandwidth aggregation system. We present the
OSCAR architecture that does not introduce any intermediate hardware nor
require changes to current applications or legacy servers. The OSCAR
architecture is designed to automatically estimate the system's context,
dynamically schedule various connections and/or packets to different
interfaces, be backwards compatible with the current Internet architecture, and
provide the user with incentives for collaboration. We also formulate the OSCAR
scheduler as a multi-objective, multi-modal scheduler that maximizes system
throughput while minimizing energy consumption or financial cost. We evaluate
OSCAR via implementation on Linux, as well as via simulation, and compare our
results to the current optimal achievable throughput, cost, and energy
consumption. Our evaluation shows that, in the throughput maximization mode, we
provide up to 150% enhancement in throughput compared to current operating
systems, without any changes to legacy servers. Moreover, this performance gain
further increases with the availability of connection resume-supporting, or
OSCAR-enabled servers, reaching the maximum achievable upper-bound throughput
DC fault isolation study of bidirectional dual active bridge DC/DC converter for DC transmission grid application
Fast isolation and detection of DC faults is currently a limiting factor in high power DC transmission grid development. Recent research has shown that the role of DC/DC converters is becoming increasingly important in solving various DC grid challenges such as voltage stepping, galvanic isolation and power regulation. This paper focuses on an additional important feature of bidirectional dual active bridge (DAB) DC-DC converters which make it attractive for future DC grids; it's inherent fault isolation capability which does not need control intervention to limit fault current in case of the most severe DC faults. Detailed analytical, simulation and experimental study are performed by subjecting the converter to DC short circuit faults at its DC voltage terminals. The results obtained have shown significant advantage of DAB where fault current is less than rated current during the fault duration. Thus no control action is necessary from the non-faulted bridge to limit fault current and no external DC circuit breakers are required. This advantage makes DAB converter feasible for DC grid integration
Offline and online power aware resource allocation algorithms with migration and delay constraints
© . This manuscript version is made available under the CC-BY-NC-ND 4.0 license http://creativecommons.org/licenses/by-nc-nd/4.0/In order to handle advanced mobile broadband services and Internet of Things (IoT), future Internet and 5G networks are expected to leverage the use of network virtualization, be much faster, have greater capacities, provide lower latencies, and significantly be power efficient than current mobile technologies. Therefore, this paper proposes three power aware algorithms for offline, online, and migration applications, solving the resource allocation problem within the frameworks of network function virtualization (NFV) environments in fractions of a second. The proposed algorithms target minimizing the total costs and power consumptions in the physical network through sufficiently allocating the least physical resources to host the demands of the virtual network services, and put into saving mode all other not utilized physical components. Simulations and evaluations of the offline algorithm compared to the state-of-art resulted on lower total costs by 32%. In addition to that, the online algorithm was tested through four different experiments, and the results argued that the overall power consumption of the physical network was highly dependent on the demands’ lifetimes, and the strictness of the required end-to-end delay. Regarding migrations during online, the results concluded that the proposed algorithms would be most effective when applied for maintenance and emergency conditions.Peer ReviewedPreprin
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