22,456 research outputs found
Reinforcement Learning in Multiple-UAV Networks: Deployment and Movement Design
A novel framework is proposed for quality of experience (QoE)-driven
deployment and dynamic movement of multiple unmanned aerial vehicles (UAVs).
The problem of joint non-convex three-dimensional (3D) deployment and dynamic
movement of the UAVs is formulated for maximizing the sum mean opinion score
(MOS) of ground users, which is proved to be NP-hard. In the aim of solving
this pertinent problem, a three-step approach is proposed for attaining 3D
deployment and dynamic movement of multiple UAVs. Firstly, genetic algorithm
based K-means (GAK-means) algorithm is utilized for obtaining the cell
partition of the users. Secondly, Q-learning based deployment algorithm is
proposed, in which each UAV acts as an agent, making their own decision for
attaining 3D position by learning from trial and mistake. In contrast to
conventional genetic algorithm based learning algorithms, the proposed
algorithm is capable of training the direction selection strategy offline.
Thirdly, Q-learning based movement algorithm is proposed in the scenario that
the users are roaming. The proposed algorithm is capable of converging to an
optimal state. Numerical results reveal that the proposed algorithms show a
fast convergence rate after a small number of iterations. Additionally, the
proposed Q-learning based deployment algorithm outperforms K-means algorithms
and Iterative-GAKmean (IGK) algorithms with a low complexity
Generation of nonlinear vortex precursors
We numerically study the propagation of a few-cycle pulse carrying orbital
angular momentum (OAM) through a dense atomic system. Nonlinear precursors
consisting of high-order vortex har- monics are generated in the transmitted
field due to ultrafast Bloch oscillation. The nonlinear precursors survive to
propagation effects and are well separated with the main pulse, which provide a
straightforward way of measuring precursors. By the virtue of carrying
high-order OAM, the obtained vortex precursors as information carriers have
potential applications in optical informa- tion and communication fields where
controllable loss, large information-carrying capacity and high speed
communication are required
Existence and uniqueness of the global conservative weak solutions for the integrable Novikov equation
The integrable Novikov equation can be regarded as one of the
Camassa-Holm-type equations with cubic nonlinearity. In this paper, we prove
the global existence and uniqueness of the H\"older continuous energy
conservative solutions for the Cauchy problem of the Novikov equation
Trajectory Design and Power Control for Multi-UAV Assisted Wireless Networks: A Machine Learning Approach
A novel framework is proposed for the trajectory design of multiple unmanned
aerial vehicles (UAVs) based on the prediction of users' mobility information.
The problem of joint trajectory design and power control is formulated for
maximizing the instantaneous sum transmit rate while satisfying the rate
requirement of users. In an effort to solve this pertinent problem, a
three-step approach is proposed which is based on machine learning techniques
to obtain both the position information of users and the trajectory design of
UAVs. Firstly, a multi-agent Q-learning based placement algorithm is proposed
for determining the optimal positions of the UAVs based on the initial location
of the users. Secondly, in an effort to determine the mobility information of
users based on a real dataset, their position data is collected from Twitter to
describe the anonymous user-trajectories in the physical world. In the
meantime, an echo state network (ESN) based prediction algorithm is proposed
for predicting the future positions of users based on the real dataset.
Thirdly, a multi-agent Q-learning based algorithm is conceived for predicting
the position of UAVs in each time slot based on the movement of users. In this
algorithm, multiple UAVs act as agents to find optimal actions by interacting
with their environment and learn from their mistakes. Additionally, we also
prove that the proposed multi-agent Q-learning based trajectory design and
power control algorithm can converge under mild conditions. Numerical results
are provided to demonstrate that as the size of the reservoir increases, the
proposed ESN approach improves the prediction accuracy. Finally, we demonstrate
that throughput gains of about 17% are achieved
Modeling and Analysis of Two-Way Relay Non-Orthogonal Multiple Access Systems
A two-way relay non-orthogonal multiple access (TWR-NOMA) system is
investigated, where two groups of NOMA users exchange messages with the aid of
one half-duplex (HD) decode-and-forward (DF) relay. Since the
signal-plus-interference-to-noise ratios (SINRs) of NOMA signals mainly depend
on effective successive interference cancellation (SIC) schemes, imperfect SIC
(ipSIC) and perfect SIC (pSIC) are taken into account. In order to characterize
the performance of TWR-NOMA systems, we first derive closed-form expressions
for both exact and asymptotic outage probabilities of NOMA users' signals with
ipSIC/pSIC. Based on the derived results, the diversity order and throughput of
the system are examined. Then we study the ergodic rates of users' signals by
providing the asymptotic analysis in high SNR regimes. Lastly, numerical
simulations are provided to verify the analytical results and show that: 1)
TWR-NOMA is superior to TWR-OMA in terms of outage probability in low SNR
regimes; 2) Due to the impact of interference signal (IS) at the relay, error
floors and throughput ceilings exist in outage probabilities and ergodic rates
for TWR-NOMA, respectively; and 3) In delay-limited transmission mode, TWR-NOMA
with ipSIC and pSIC have almost the same energy efficiency. However, in
delay-tolerant transmission mode, TWR-NOMA with pSIC is capable of achieving
larger energy efficiency compared to TWR-NOMA with ipSIC.Comment: 12 pages, 8 figures. arXiv admin note: substantial text overlap with
arXiv:1801.0817
Outage Performance of A Unified Non-Orthogonal Multiple Access Framework
In this paper, a unified framework of non-orthogonal multiple access (NOMA)
networks is proposed, which can be applied to code-domain NOMA (CD-NOMA) and
power-domain NOMA (PD-NOMA). Since the detection of NOMA users mainly depend on
efficient successive interference cancellation (SIC) schemes, both imperfect
SIC (ipSIC) and perfect SIC (pSIC) are taken into considered. To characterize
the performance of this unified framework, the exact and asymptotic expressions
of outage probabilities as well as delay-limited throughput for CD/PD-NOMA with
ipSIC/pSIC are derived. Based on the asymptotic analysis, the diversity orders
of CD/PD-NOMA are provided. It is confirmed that due to the impact of residual
interference (RI), the outage probability of the n-th user with ipSIC for
CD/PD-NOMA converges to an error floor in the high signal-to-noise ratio (SNR)
region. Numerical simulations demonstrate that the outage behavior of CD-NOMA
is superior to that of PD-NOMA.Comment: Accecpted by IEEE ICC 201
The origin of the Redshift Spikes in the reflection spectrum of a Few-cycle Pulse in a Dense Medium
We give a detailed description about the reflected spectrum of a few-cycle
pulse propagating through a resonant dense medium. An unexpected low-frequency
spike appeared in the red edge of the spectrum. To figure out the origin of
this redshift spike, we analysis the mechanisms responsible for the redshift of
the reflected field. So far, the redshift has not been well studied for
few-cycle pulses except a brief explanation made by the previous study
[Kaloshan et al., Phys. Rev. Lett. 83 544 (1999).], which attributed the origin
of the redshift to the so-called intrapulse four-wave mixing. However, we
demonstrate numerically that the redshift consists of two separated spikes is
actually produced by the Doppler effect of backpropagation waves, which is an
analogue effect of dynamic nonlinear optical skin effect. Our study elucidates
the underlying physics of the dynamic nonlinear optical effects responsible for
the redshift spikes. Moreover, the dependency of the their frequency on the
laser and medium parameters, such as medium density and input pulse area are
also discussed
Stability of solitary waves of a generalized two-component Camassa-Holm system
We study here the existence of solitary wave solutions of a generalized
two-component Camassa-Holm system. In addition to those smooth solitary-wave
solutions, we show that there are solitary waves with singularities: peaked and
cusped solitary waves. We also demonstrate that all smooth solitary waves are
orbitally stable in the energy space. We finally give a sufficient condition
for global strong solutions to the equation without certain parameters.Comment: 23 pages, 1 figur
Gene-based Association Analysis for Bivariate Time-to-event Data through Functional Regression with Copula Models
Several gene-based association tests for time-to-event traits have been
proposed recently, to detect whether a gene region (containing multiple
variants), as a set, is associated with the survival outcome. However, for
bivariate survival outcomes, to the best of our knowledge, there is no
statistical method that can be directly applied for gene-based association
analysis. Motivated by a genetic study to discover gene regions associated with
the progression of a bilateral eye disease, Age-related Macular Degeneration
(AMD), we implement a novel functional regression method under the copula
framework. Specifically, the effects of variants within a gene region are
modeled through a functional linear model, which then contributes to the
marginal survival functions within the copula. Generalized score test and
likelihood ratio test statistics are derived to test for the association
between bivariate survival traits and the genetic region. Extensive simulation
studies are conducted to evaluate the type-I error control and power
performance of the proposed approach, with comparisons to several existing
methods for a single survival trait, as well as the marginal Cox functional
regression model using the robust sandwich estimator for bivariate survival
traits. Finally, we apply our method to a large AMD study, the Age-related Eye
Disease Study (AREDS), to identify gene regions that are associated with AMD
progression
Solar Cell Surface Defect Inspection Based on Multispectral Convolutional Neural Network
Similar and indeterminate defect detection of solar cell surface with
heterogeneous texture and complex background is a challenge of solar cell
manufacturing. The traditional manufacturing process relies on human eye
detection which requires a large number of workers without a stable and good
detection effect. In order to solve the problem, a visual defect detection
method based on multi-spectral deep convolutional neural network (CNN) is
designed in this paper. Firstly, a selected CNN model is established. By
adjusting the depth and width of the model, the influence of model depth and
kernel size on the recognition result is evaluated. The optimal CNN model
structure is selected. Secondly, the light spectrum features of solar cell
color image are analyzed. It is found that a variety of defects exhibited
different distinguishable characteristics in different spectral bands. Thus, a
multi-spectral CNN model is constructed to enhance the discrimination ability
of the model to distinguish between complex texture background features and
defect features. Finally, some experimental results and K-fold cross validation
show that the multi-spectral deep CNN model can effectively detect the solar
cell surface defects with higher accuracy and greater adaptability. The
accuracy of defect recognition reaches 94.30%. Applying such an algorithm can
increase the efficiency of solar cell manufacturing and make the manufacturing
process smarter.Comment: 14 pages, 7 figures,14 table
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