121 research outputs found
Green Beamforming Design for Integrated Sensing and Communication Systems: A Practical Approach Using Beam-Matching Error Metrics
In this paper, we propose a green beamforming design for the integrated
sensing and communication (ISAC) system, using beam-matching error to assess
radar performance. The beam-matching error metric, which considers the mean
square error between the desired and designed beam patterns, provides a more
practical evaluation approach. To tackle the non-convex challenge inherent in
beamforming design, we apply semidefinite relaxation (SDR) to address the
rank-one relaxation issue, followed by the iterative rank minimization
algorithm (IRM) for rank-one recovery. The simulation results showcase the
effectiveness of our proposed optimal beamforming design, emphasizing the
exceptional performance of the radar component in sensing tasks
Polar Coded Integrated Data and Energy Networking: A Deep Neural Network Assisted End-to-End Design
Wireless sensors are everywhere. To address their energy supply, we proposed
an end-to-end design for polar-coded integrated data and energy networking
(IDEN), where the conventional signal processing modules, such as
modulation/demodulation and channel decoding, are replaced by deep neural
networks (DNNs). Moreover, the input-output relationship of an energy harvester
(EH) is also modelled by a DNN. By jointly optimizing both the transmitter and
the receiver as an autoencoder (AE), we minimize the bit-error-rate (BER) and
maximize the harvested energy of the IDEN system, while satisfying the transmit
power budget constraint determined by the normalization layer in the
transmitter. Our simulation results demonstrate that the DNN aided end-to-end
design conceived outperforms its conventional model-based counterpart both in
terms of the harvested energy and the BER
Multi-Domain Polarization for Enhancing the Physical Layer Security of MIMO Systems
A novel Physical Layer Security (PLS) framework is conceived for enhancing
the security of the wireless communication systems by exploiting multi-domain
polarization in Multiple-Input Multiple-Output (MIMO) systems. We design a
sophisticated key generation scheme based on multi-domain polarization, and the
corresponding receivers. An in-depth analysis of the system's secrecy rate is
provided, demonstrating the confidentiality of our approach in the presence of
eavesdroppers having strong computational capabilities. More explicitly, our
simulation results and theoretical analysis corroborate the advantages of the
proposed scheme in terms of its bit error rate (BER), block error rate (BLER),
and maximum achievable secrecy rate. Our findings indicate that the innovative
PLS framework effectively enhances the security and reliability of wireless
communication systems. For instance, in a MIMO setup, the proposed
PLS strategy exhibits an improvement of dB compared to conventional MIMO,
systems at a BLER of while the eavesdropper's BLER reaches
Robust NOMA-Assisted OTFS-ISAC Network Design With 3D Motion Prediction Topology
This paper proposes a novel non-orthogonal multiple access (NOMA)-assisted orthogonal time-frequency space (OTFS)-integrated sensing and communication (ISAC) network, which uses unmanned aerial vehicles (UAVs) as air base stations to support multiple users. By employing ISAC, the UAV extracts position and velocity information from the user’s echo signals, and non-orthogonal power allocation is conducted to achieve a superior achievable rate. A 3D motion prediction topology is used to guide the NOMA transmission for multiple users, and a robust power allocation solution is proposed under perfect and imperfect channel estimation for max-min fairness (MMF) and maximum sum-rate (SR) problems. Simulation results demonstrate the superiority of the proposed NOMA-assisted OTFS-ISAC system over other systems in terms of achievable rate under both perfect and imperfect channel conditions with the aid of 3D motion prediction topology
Robust NOMA-assisted OTFS-ISAC Network Design with 3D Motion Prediction Topology
This paper proposes a novel non-orthogonal multiple access (NOMA)-assisted
orthogonal time-frequency space (OTFS)-integrated sensing and communication
(ISAC) network, which uses unmanned aerial vehicles (UAVs) as air base stations
to support multiple users. By employing ISAC, the UAV extracts position and
velocity information from the user's echo signals, and non-orthogonal power
allocation is conducted to achieve a superior achievable rate. A 3D motion
prediction topology is used to guide the NOMA transmission for multiple users,
and a robust power allocation solution is proposed under perfect and imperfect
channel estimation for Maxi-min Fairness (MMF) and Maximum sum-Rate (SR)
problems. Simulation results demonstrate the superiority of the proposed
NOMA-assisted OTFS-ISAC system over other systems in terms of achievable rate
under both perfect and imperfect channel conditions with the aid of 3D motion
prediction topology
Enabling controlling complex networks with local topological information
Complex networks characterize the nature of internal/external interactions in real-world systems
including social, economic, biological, ecological, and technological networks. Two issues keep as
obstacles to fulflling control of large-scale networks: structural controllability which describes the
ability to guide a dynamical system from any initial state to any desired fnal state in fnite time, with a
suitable choice of inputs; and optimal control, which is a typical control approach to minimize the cost
for driving the network to a predefned state with a given number of control inputs. For large complex
networks without global information of network topology, both problems remain essentially open.
Here we combine graph theory and control theory for tackling the two problems in one go, using only
local network topology information. For the structural controllability problem, a distributed local-game
matching method is proposed, where every node plays a simple Bayesian game with local information
and local interactions with adjacent nodes, ensuring a suboptimal solution at a linear complexity.
Starring from any structural controllability solution, a minimizing longest control path method can
efciently reach a good solution for the optimal control in large networks. Our results provide solutions
for distributed complex network control and demonstrate a way to link the structural controllability and
optimal control together.The work was partially supported by National Science Foundation of China (61603209), and Beijing Natural Science Foundation (4164086), and the Study of Brain-Inspired Computing System of Tsinghua University program (20151080467), and Ministry of Education, Singapore, under contracts RG28/14, MOE2014-T2-1-028 and MOE2016-T2-1-119. Part of this work is an outcome of the Future Resilient Systems project at the Singapore-ETH Centre (SEC), which is funded by the National Research Foundation of Singapore (NRF) under its Campus for Research Excellence and Technological Enterprise (CREATE) programme. (61603209 - National Science Foundation of China; 4164086 - Beijing Natural Science Foundation; 20151080467 - Study of Brain-Inspired Computing System of Tsinghua University program; RG28/14 - Ministry of Education, Singapore; MOE2014-T2-1-028 - Ministry of Education, Singapore; MOE2016-T2-1-119 - Ministry of Education, Singapore; National Research Foundation of Singapore (NRF) under Campus for Research Excellence and Technological Enterprise (CREATE) programme)Published versio
Author correction: Enabling controlling complex networks with local topological information
Correction to: Scientific Reports https://doi.org/10.1038/s41598-018-22655-5, published online 15 March 2018.
The Acknowledgements section in this Article is incomplete.The work was partially supported by National Science Foundation of China (61603209, 61327902), and Beijing Natural Science Foundation (4164086), and the Study of Brain-Inspired Computing System of Tsinghua University program (20151080467), and SuZhou-Tsinghua innovation leading program 2016SZ0102, and Ministry of Education, Singapore, under contracts RG28/14, MOE2014-T2-1-028 and MOE2016-T2-1-119. Part of this work is an outcome of the Future Resilient Systems project at the Singapore-ETH Centre (SEC), which is funded by the National Research Foundation of Singapore (NRF) under its Campus for Research Excellence and Technological Enterprise (CREATE) program. (61603209 - National Science Foundation of China; 61327902 - National Science Foundation of China; 4164086 - Beijing Natural Science Foundation; 20151080467 - Study of Brain-Inspired Computing System of Tsinghua University program; 2016SZ0102 - SuZhou-Tsinghua innovation leading program; RG28/14 - Ministry of Education, Singapore; MOE2014-T2-1-028 - Ministry of Education, Singapore; MOE2016-T2-1-119 - Ministry of Education, Singapore; National Research Foundation of Singapore (NRF) under its Campus for Research Excellence and Technological Enterprise (CREATE) program)Published versio
Massive Wireless Energy Transfer without Channel State Information via Imperfect Intelligent Reflecting Surfaces
Intelligent Reflecting Surface (IRS) utilizes low-cost, passive reflecting
elements to enhance the passive beam gain, improve Wireless Energy Transfer
(WET) efficiency, and enable its deployment for numerous Internet of Things
(IoT) devices. However, the increasing number of IRS elements presents
considerable channel estimation challenges. This is due to the lack of active
Radio Frequency (RF) chains in an IRS, while pilot overhead becomes
intolerable. To address this issue, we propose a Channel State Information
(CSI)-free scheme that maximizes received energy in a specific direction and
covers the entire space through phased beam rotation. Furthermore, we take into
account the impact of an imperfect IRS and meticulously design the active
precoder and IRS reflecting phase shift to mitigate its effects. Our proposed
technique does not alter the existing IRS hardware architecture, allowing for
easy implementation in the current system, and enabling access or removal of
any Energy Receivers (ERs) without additional cost. Numerical results
illustrate the efficacy of our CSI-free scheme in facilitating large-scale IRS
without compromising performance due to excessive pilot overhead. Furthermore,
our scheme outperforms the CSI-based counterpart in scenarios involving
large-scale ERs, making it a promising solution in the era of IoT
Orthogonal-Time-Frequency-Space Signal Design for Integrated Data and Energy Transfer: Benefits from Doppler Offsets
Integrated data and energy transfer (IDET) is an advanced technology for enabling energy sustainability for massively deployed low-power electronic consumption components. However, the existing work of IDET using the orthogonal-frequency-division-multiplexing (OFDM) waveforms is designed for static scenarios, which would be severely affected by the destructive Doppler offset in high-mobility scenarios. Therefore, we proposed an IDET system based on orthogonal-time-frequency-space (OTFS) waveforms with the imperfect channel assumption, which is capable of counteracting the Doppler offset in high-mobility scenarios. At the transmitter, the OTFS-IDET system superimposes the random data signals and deterministic energy signals in the delay-Doppler (DD) domain with optimally designed amplitudes. The receiver optimally splits the received signal in the power domain for achieving the best IDET performance. After formulating a non-convex optimisation problem, it is transformed into a geometric programming (GP) problem through inequality relaxations to obtain the optimal solution. The simulation demonstrates that a higher amount of energy can be harvested when employing our proposed OTFS-IDET waveforms than the conventional OFDM-IDET ones in high mobility scenarios
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