Reinforcement Learning for Mitigating Intermittent Interference in
Terahertz Communication Networks
- URL: http://arxiv.org/abs/2003.04832v1
- Date: Tue, 10 Mar 2020 16:28:45 GMT
- Title: Reinforcement Learning for Mitigating Intermittent Interference in
Terahertz Communication Networks
- Authors: Reza Barazideh and Omid Semiari and Solmaz Niknam and Balasubramaniam
Natarajan
- Abstract summary: Uncoordinated transmissions by a large number of users can cause substantial interference in terahertz networks.
New framework based on reinforcement learning is proposed that uses an adaptive multi-thresholding strategy.
- Score: 4.999585439793266
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Emerging wireless services with extremely high data rate requirements, such
as real-time extended reality applications, mandate novel solutions to further
increase the capacity of future wireless networks. In this regard, leveraging
large available bandwidth at terahertz frequency bands is seen as a key
enabler. To overcome the large propagation loss at these very high frequencies,
it is inevitable to manage transmissions over highly directional links.
However, uncoordinated directional transmissions by a large number of users can
cause substantial interference in terahertz networks. While such interference
will be received over short random time intervals, the received power can be
large. In this work, a new framework based on reinforcement learning is
proposed that uses an adaptive multi-thresholding strategy to efficiently
detect and mitigate the intermittent interference from directional links in the
time domain. To find the optimal thresholds, the problem is formulated as a
multidimensional multi-armed bandit system. Then, an algorithm is proposed that
allows the receiver to learn the optimal thresholds with very low complexity.
Another key advantage of the proposed approach is that it does not rely on any
prior knowledge about the interference statistics, and hence, it is suitable
for interference mitigation in dynamic scenarios. Simulation results confirm
the superior bit-error-rate performance of the proposed method compared with
two traditional time-domain interference mitigation approaches.
Related papers
- Accelerating Inference of Networks in the Frequency Domain [8.125023712173686]
We propose performing network inference in the frequency domain to speed up networks whose frequency parameters are sparse.
In particular, we propose a frequency inference chain that is dual to the network inference in the spatial domain.
The proposed approach significantly improves accuracy in the case of a high speedup ratio (over 100x)
arXiv Detail & Related papers (2024-10-06T03:34:38Z) - Multi-Agent Context Learning Strategy for Interference-Aware Beam
Allocation in mmWave Vehicular Communications [8.29063749138322]
We develop a new strategy called Multi-Agent Context Learning (MACOL) to manage interference while allocating mmWave beams to serve vehicles in the network.
Our approach demonstrates that by leveraging knowledge of neighbouring beam status, the machine learning agent can identify and avoid potential interfering transmissions to other ongoing transmissions.
arXiv Detail & Related papers (2024-01-04T15:43:55Z) - Deep Reinforcement Learning for Interference Management in UAV-based 3D
Networks: Potentials and Challenges [137.47736805685457]
We show that interference can still be effectively mitigated even without knowing its channel information.
By harnessing interference, the proposed solutions enable the continued growth of civilian UAVs.
arXiv Detail & Related papers (2023-05-11T18:06:46Z) - Spectrum Breathing: Protecting Over-the-Air Federated Learning Against
Interference [101.9031141868695]
Mobile networks can be compromised by interference from neighboring cells or jammers.
We propose Spectrum Breathing, which cascades-gradient pruning and spread spectrum to suppress interference without bandwidth expansion.
We show a performance tradeoff between gradient-pruning and interference-induced error as regulated by the breathing depth.
arXiv Detail & Related papers (2023-05-10T07:05:43Z) - Reliable Beamforming at Terahertz Bands: Are Causal Representations the
Way Forward? [85.06664206117088]
Multi-user wireless systems can meet metaverse requirements by utilizing terahertz bandwidth with massive number of antennas.
Existing solutions lack proper modeling of channel dynamics, resulting in inaccurate beamforming solutions in high-mobility scenarios.
Herein, a dynamic, semantically aware beamforming solution is proposed for the first time, utilizing novel artificial intelligence algorithms in variational causal inference.
arXiv Detail & Related papers (2023-03-14T16:02:46Z) - Interference Suppression Using Deep Learning: Current Approaches and
Open Challenges [2.179313476241343]
In this paper, we review a wide range of techniques that have used deep learning to suppress interference.
We provide comparison and guidelines for many different types of deep learning techniques in interference suppression.
In addition, we highlight challenges and potential future research directions for the successful adoption of deep learning in interference suppression.
arXiv Detail & Related papers (2021-12-16T16:07:42Z) - Low-Latency Federated Learning over Wireless Channels with Differential
Privacy [142.5983499872664]
In federated learning (FL), model training is distributed over clients and local models are aggregated by a central server.
In this paper, we aim to minimize FL training delay over wireless channels, constrained by overall training performance as well as each client's differential privacy (DP) requirement.
arXiv Detail & Related papers (2021-06-20T13:51:18Z) - Harnessing Wireless Channels for Scalable and Privacy-Preserving
Federated Learning [56.94644428312295]
Wireless connectivity is instrumental in enabling federated learning (FL)
Channel randomnessperturbs each worker inversions model update while multiple workers updates incur significant interference on bandwidth.
In A-FADMM, all workers upload their model updates to the parameter server using a single channel via analog transmissions.
This not only saves communication bandwidth, but also hides each worker's exact model update trajectory from any eavesdropper.
arXiv Detail & Related papers (2020-07-03T16:31:15Z) - Interference Distribution Prediction for Link Adaptation in
Ultra-Reliable Low-Latency Communications [71.0558149440701]
Link adaptation (LA) is considered to be one of the bottlenecks to realize URLLC.
In this paper, we focus on predicting the signal to interference plus noise ratio at the user to enhance the LA.
We show that exploiting time correlation of the interference is an important enabler of URLLC.
arXiv Detail & Related papers (2020-07-01T07:59:35Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.