4 research outputs found
An Efficient Metric for Physical-layer Jammer Detection in Internet of Things Networks
An active jammer could severely degrade the communication
quality for wireless networks. Since all wireless nodes
openly access the shared media, the harsh effects are exaggerated
by retransmission attempts of affected devices. Fast and precise
detection of the jammer is of vital importance for heterogeneous
wireless environments such as the Internet of things (IoT). It
could activate a series of corrective countermeasures to ensure
the robust operation of the network. In this paper, we propose a
local, straightforward, and numerical metric called the number of
jammed slots (NJS), by which we can quickly detect the presence
of a jammer and identify the jammed nodes at the software level
in broadcast networks. NJS calculation is carried out by a central
node which collects the MAC-layer statuses of all wireless nodes
in a periodical fashion. Our simulation results indicate that NJS
outperforms current detection methods in terms of accuracy and
precision
Physical-layer Jammer Detection in Multi-hop IoT Networks
The presence of a jammer in an IoT network severely degrades all communication efforts between adjacent wireless devices. The situation is getting worse due to retransmission attempts made by affected devices. Therefore, jammers must be detected or localized quickly to activate a series of corrective countermeasures so as to ensure the robust operation of the IoT network. This paper proposes a novel metric called the number of jammed slots (NJS). It can detect and localize both reactive and proactive jammers that follow arbitrary jamming attack patterns. NJS is applicable to all communication paradigms such as unicast, broadcast, and multicast. In NJS, the wireless medium status is monitored by IoT devices and summarized reports are sent to a central node. Then, the central node determines the jamming duration, the affected nodes, and the approximate location of the jammer(s). Also, the specificity, precision, and accuracy of NJS are at least 48%, 19%, and 20% better than the other state-of-the-art statistical methods, respectively. In addition, in terms of the detection time, NJS is four times faster when detecting an active jammer in the network. It can also localize the jammer with less jammer localization errors
An Efficient Metric for Physical-layer Jammer Detection in Internet of Things Networks
An active jammer could severely degrade the communication quality for wireless networks. Since all wireless nodes openly access the shared media, the harsh effects are exaggerated by retransmission attempts of affected devices. Fast and precise detection of the jammer is of vital importance for heterogeneous wireless environments such as the Internet of things (IoT). It could activate a series of corrective countermeasures to ensure the robust operation of the network. In this paper, we propose a local, straightforward, and numerical metric called the number of jammed slots (NJS), by which we can quickly detect the presence of a jammer and identify the jammed nodes at the software level in broadcast networks. NJS calculation is carried out by a central node which collects the MAC-layer statuses of all wireless nodes in a periodical fashion. Our simulation results indicate that NJS outperforms current detection methods in terms of accuracy and precision