1,681 research outputs found
Deep Reinforcement Learning for Joint Cruise Control and Intelligent Data Acquisition in UAVs-Assisted Sensor Networks
Unmanned aerial vehicle (UAV)-assisted sensor networks (UASNets), which play
a crucial role in creating new opportunities, are experiencing significant
growth in civil applications worldwide. UASNets improve disaster management
through timely surveillance and advance precision agriculture with detailed
crop monitoring, thereby significantly transforming the commercial economy.
UASNets revolutionize the commercial sector by offering greater efficiency,
safety, and cost-effectiveness, highlighting their transformative impact. A
fundamental aspect of these new capabilities and changes is the collection of
data from rugged and remote areas. Due to their excellent mobility and
maneuverability, UAVs are employed to collect data from ground sensors in harsh
environments, such as natural disaster monitoring, border surveillance, and
emergency response monitoring. One major challenge in these scenarios is that
the movements of UAVs affect channel conditions and result in packet loss. Fast
movements of UAVs lead to poor channel conditions and rapid signal degradation,
resulting in packet loss. On the other hand, slow mobility of a UAV can cause
buffer overflows of the ground sensors, as newly arrived data is not promptly
collected by the UAV.
Our proposal to address this challenge is to minimize packet loss by jointly
optimizing the velocity controls and data collection schedules of multiple
UAVs.Furthermore, in UASNets, swift movements of UAVs result in poor channel
conditions and fast signal attenuation, leading to an extended age of
information (AoI). In contrast, slow movements of UAVs prolong flight time,
thereby extending the AoI of ground sensors.To address this challenge, we
propose a new mean-field flight resource allocation optimization to minimize
the AoI of sensory data
6G White Paper on Machine Learning in Wireless Communication Networks
The focus of this white paper is on machine learning (ML) in wireless
communications. 6G wireless communication networks will be the backbone of the
digital transformation of societies by providing ubiquitous, reliable, and
near-instant wireless connectivity for humans and machines. Recent advances in
ML research has led enable a wide range of novel technologies such as
self-driving vehicles and voice assistants. Such innovation is possible as a
result of the availability of advanced ML models, large datasets, and high
computational power. On the other hand, the ever-increasing demand for
connectivity will require a lot of innovation in 6G wireless networks, and ML
tools will play a major role in solving problems in the wireless domain. In
this paper, we provide an overview of the vision of how ML will impact the
wireless communication systems. We first give an overview of the ML methods
that have the highest potential to be used in wireless networks. Then, we
discuss the problems that can be solved by using ML in various layers of the
network such as the physical layer, medium access layer, and application layer.
Zero-touch optimization of wireless networks using ML is another interesting
aspect that is discussed in this paper. Finally, at the end of each section,
important research questions that the section aims to answer are presented
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