6,775 research outputs found
Joint Placement and Allocation of VNF Nodes with Budget and Capacity Constraints
With the advent of Network Function Virtualization (NFV), network services
that traditionally run on proprietary dedicated hardware can now be realized
using Virtual Network Functions (VNFs) that are hosted on general-purpose
commodity hardware. This new network paradigm offers a great flexibility to
Internet service providers (ISPs) for efficiently operating their networks
(collecting network statistics, enforcing management policies, etc.). However,
introducing NFV requires an investment to deploy VNFs at certain network nodes
(called VNF-nodes), which has to account for practical constraints such as the
deployment budget and the VNF-node capacity. To that end, it is important to
design a joint VNF-nodes placement and capacity allocation algorithm that can
maximize the total amount of network flows that are fully processed by the
VNF-nodes while respecting such practical constraints. In contrast to most
prior work that often neglects either the budget constraint or the capacity
constraint, we explicitly consider both of them. We prove that accounting for
these constraints introduces several new challenges. Specifically, we prove
that the studied problem is not only NP-hard but also non-submodular. To
address these challenges, we introduce a novel relaxation method such that the
objective function of the relaxed placement subproblem becomes submodular.
Leveraging this useful submodular property, we propose two algorithms that
achieve an approximation ratio of and
for the original non-relaxed problem, respectively. Finally, we corroborate the
effectiveness of the proposed algorithms through extensive evaluations using
trace-driven simulations
The Power of Waiting for More than One Response in Minimizing the Age-of-Information
The Age-of-Information (AoI) has recently been proposed as an important
metric for investigating the timeliness performance in information-update
systems. Prior studies on AoI optimization often consider a Push model, which
is concerned about when and how to "push" (i.e., generate and transmit) the
updated information to the user. In stark contrast, in this paper we introduce
a new Pull model, which is more relevant for certain applications (such as the
real-time stock quotes service), where a user sends requests to the servers to
proactively "pull" the information of interest. Moreover, we propose to employ
request replication to reduce the AoI. Interestingly, we find that under this
new Pull model, replication schemes capture a novel tradeoff between different
levels of information freshness and different response times across the
servers, which can be exploited to minimize the expected AoI at the user's
side. Specifically, assuming Poisson updating process at the servers and
exponentially distributed response time, we derive a closedform formula for
computing the expected AoI and obtain the optimal number of responses to wait
for to minimize the expected AoI. Finally, we conduct numerical simulations to
elucidate our theoretical results. Our findings show that waiting for more than
one response can significantly reduce the AoI in most scenarios
Dantzig Selector with an Approximately Optimal Denoising Matrix and its Application to Reinforcement Learning
Dantzig Selector (DS) is widely used in compressed sensing and sparse
learning for feature selection and sparse signal recovery. Since the DS
formulation is essentially a linear programming optimization, many existing
linear programming solvers can be simply applied for scaling up. The DS
formulation can be explained as a basis pursuit denoising problem, wherein the
data matrix (or measurement matrix) is employed as the denoising matrix to
eliminate the observation noise. However, we notice that the data matrix may
not be the optimal denoising matrix, as shown by a simple counter-example. This
motivates us to pursue a better denoising matrix for defining a general DS
formulation. We first define the optimal denoising matrix through a minimax
optimization, which turns out to be an NPhard problem. To make the problem
computationally tractable, we propose a novel algorithm, termed as Optimal
Denoising Dantzig Selector (ODDS), to approximately estimate the optimal
denoising matrix. Empirical experiments validate the proposed method. Finally,
a novel sparse reinforcement learning algorithm is formulated by extending the
proposed ODDS algorithm to temporal difference learning, and empirical
experimental results demonstrate to outperform the conventional vanilla DS-TD
algorithm
Target reconstruction with a reference point scatterer using phaseless far field patterns
An important property of the phaseless far field patterns with incident plane
waves is the translation invariance. Thus it is impossible to reconstruct the
location of the underlying scatterers. By adding a reference point scatterer
into the model, we design a novel direct sampling method using the phaseless
data directly. The reference point technique not only overcomes the translation
invariance, but also brings a practical phase retrieval algorithm. Based on
this, we propose a hybrid method combining the novel phase retrieval algorithm
and the classical direct sampling methods. Numerical examples in two dimensions
are presented to demonstrate their effectiveness and robustness
Lorentz Force Correction and Radiation Frequency Property of Charged Particles in Magnetic Dipole
By concern of compression of charge density field, the corrected Lorentz
force formula and consequent inference is presented. And further radiation
frequency property of an individual charge density field in magnetic dipole is
analyzed respectively for radiant property of the charged particle and the
emitted electromagnetic wave transfer property between the moving radiant
source and observer. As results, the behavior and radiation frequency property
of the electron beam in magnetic dipole is interpreted upon the individual's
behavior and property. At final, the potential application is put forward for
wider interest.Comment: 6 Page
Concentrating Electric and Thermal Fields Simultaneously Using Fan-shaped Structure
Recently, considerable attention has been focused on the transformation
optics and metamaterial due to their fascinating phenomena and potential
applications. Concentrator is one of the most representative ones, which
however is limited in single physical domain. Here we propose and give the
experimental demonstration of bifunctional concentrator that can concentrate
electric and thermal fields into a given region simultaneously while keeping
the external fields undistorted. Fan-shaped structure composed of alternating
wedges made of two kinds of natural materials is proposed to achieve this goal.
The simulation and experimental results show good agreement, thereby confirming
the feasibility of our scheme
Exhaustion of isoperimetric regions in asymptotically hyperbolic manifolds with scalar curvature
In this paper, aimed at exploring the fundamental properties of isoperimetric
region in -manifold which is asymptotic to Anti-de
Sitter-Schwarzschild manifold with scalar curvature , we prove that
connected isoperimetric region with cannot slide off to the infinity of provided that
is not isometric to the hyperbolic space. Furthermore, we prove that
isoperimetric region with topological sphere as
boundary is exhausting regions of if Hawking mass has
uniform bound. In the case of exhausting isoperimetric region, we obtain a
formula on expansion of isoperimetric profile in terms of renormalized volume.Comment: To appear in CA
Providing Wireless Coverage to High-rise Buildings Using UAVs
Unmanned aerial vehicles (UAVs) can be used as aerial wireless base stations
when cellular networks go down. Prior studies on UAV-based wireless coverage
typically consider an Air-to-Ground path loss model, which assumes that the
users are outdoor and they are located on a 2D plane. In this paper, we propose
using a single UAV to provide wireless coverage for indoor users inside a
high-rise building under disaster situations (such as earthquakes or floods),
when cellular networks are down. First, we present a realistic Outdoor-Indoor
path loss model and describe the tradeoff introduced by this model. Then, we
study the problem of efficient UAV placement, where the objective is to
minimize the total transmit power required to cover the entire high-rise
building. The formulated problem is non-convex and is generally difficult to
solve. To that end, we consider two cases of practical interest and provide the
efficient solutions to the formulated problem under these cases. In the first
case, we aim to find the minimum transmit power such that an indoor user with
the maximum path loss can be covered. In the second case, we assume that the
locations of indoor users are symmetric across the dimensions of each floor.Comment: 6 pages, 5 figure
Phaseless inverse source scattering problem: phase retrieval, uniqueness and direct sampling methods
Similar to the obstacle or medium scattering problems, an important property
of the phaseless far field patterns for source scattering problems is the
translation invariance. Thus it is impossible to reconstruct the location of
the underlying sources. Furthermore, the phaseless far field pattern is also
invariant if the source is multiplied by any complex number with modulus one.
Therefore, the source can not be uniquely determined, even the multifrequency
phaseless far field patterns are considered. By adding a reference point source
into the model, we propose a simple and stable phase retrieval method and
establish several uniqueness results with phaseless far field data. We proceed
to introduce a novel direct sampling method for shape and location
reconstruction of the source by using broadband sparse phaseless data directly.
We also propose a combination method with the novel phase retrieval algorithm
and the classical direct sampling methods with phased data. Numerical examples
in two dimensions are also presented to demonstrate their feasibility and
effectiveness.Comment: arXiv admin note: text overlap with arXiv:1805.0803
Throughput-optimal Scheduling in Multi-hop Wireless Networks without Per-flow Information
In this paper, we consider the problem of link scheduling in multi-hop
wireless networks under general interference constraints. Our goal is to design
scheduling schemes that do not use per-flow or per-destination information,
maintain a single data queue for each link, and exploit only local information,
while guaranteeing throughput optimality. Although the celebrated back-pressure
algorithm maximizes throughput, it requires per-flow or per-destination
information. It is usually difficult to obtain and maintain this type of
information, especially in large networks, where there are numerous flows.
Also, the back-pressure algorithm maintains a complex data structure at each
node, keeps exchanging queue length information among neighboring nodes, and
commonly results in poor delay performance. In this paper, we propose
scheduling schemes that can circumvent these drawbacks and guarantee throughput
optimality. These schemes use either the readily available hop-count
information or only the local information for each link. We rigorously analyze
the performance of the proposed schemes using fluid limit techniques via an
inductive argument and show that they are throughput-optimal. We also conduct
simulations to validate our theoretical results in various settings, and show
that the proposed schemes can substantially improve the delay performance in
most scenarios.Comment: To appear in IEEE/ACM Transactions on Networking. A preliminary
version of this work was presented at IEEE WiOpt 201
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