JCSE, vol. 14, no. 2, pp.76-87, 2020
DOI: http://dx.doi.org/10.5626/JCSE.2020.14.2.76
A Local Channel Blacklisting Method Using Adaptive Channel-Quality Estimation in TSCH-Based Wireless Sensor Networks
Kihoon Jeon, Sanghwa Chung, and Donghwa Yoo
Department of Electrical, Electronic and Computer Engineering, Pusan National University, Busan, Korea
Abstract: Owing to the development of the Internet of Things (IoT) paradigm, the energy consumption of devices and the reliability
of communication have become important issues. Enhanced TSCH technology introduces a technique to select highquality
channels by using energy detection in the TSCH protocol to improve the reliability of communication in a
dynamic environment where interference changes. However, it is difficult to apply ETSCH technology to a multi-hop
network because the node that performs energy detection consumes more energy than the node that does not. In this article,
we propose an adaptive channel-quality estimation (ACE), which flexibly adjusts the duty cycle of energy detection
according to whether interference dynamically changes or not. ACEs are generally applicable regardless of the degree of
change of interference, which improves energy efficiency. Also, we present ACE-blacklisting based TSCH (ACEBTSCH)
that uses ACE and local channel blacklisting to blacklist the wireless channel based on energy detection in a
multi-hop network. Experimental results show that ACEB-TSCH has a performance improvement of 15.94% over TSCH
and 8.59% over PDR-blacklisting based TSCH.
Keyword:
IEEE 802.15.4; IEEE 802.15.4e TSCH; Internet of Things; ETSCH; Wireless channel blacklisting
Full Paper: 155 Downloads, 1237 View
|