Home > Research > Publications & Outputs > FMCPR

Links

Text available via DOI:

View graph of relations

FMCPR: Flexible Multiparameter-Based Channel Prediction and Ranking for CR-Enabled Massive IoT

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Published

Standard

FMCPR: Flexible Multiparameter-Based Channel Prediction and Ranking for CR-Enabled Massive IoT. / Abbas, Ghulam; Khan, Abd Ullah; Abbas, Ziaul Haq et al.
In: IEEE Internet of Things Journal, Vol. 9, No. 10, 15.05.2022, p. 7151-7165.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Abbas, G, Khan, AU, Abbas, ZH, Bilal, M, Kwak, KS & Song, H 2022, 'FMCPR: Flexible Multiparameter-Based Channel Prediction and Ranking for CR-Enabled Massive IoT', IEEE Internet of Things Journal, vol. 9, no. 10, pp. 7151-7165. https://doi.org/10.1109/JIOT.2021.3084677

APA

Abbas, G., Khan, A. U., Abbas, Z. H., Bilal, M., Kwak, K. S., & Song, H. (2022). FMCPR: Flexible Multiparameter-Based Channel Prediction and Ranking for CR-Enabled Massive IoT. IEEE Internet of Things Journal, 9(10), 7151-7165. https://doi.org/10.1109/JIOT.2021.3084677

Vancouver

Abbas G, Khan AU, Abbas ZH, Bilal M, Kwak KS, Song H. FMCPR: Flexible Multiparameter-Based Channel Prediction and Ranking for CR-Enabled Massive IoT. IEEE Internet of Things Journal. 2022 May 15;9(10):7151-7165. doi: 10.1109/JIOT.2021.3084677

Author

Abbas, Ghulam ; Khan, Abd Ullah ; Abbas, Ziaul Haq et al. / FMCPR : Flexible Multiparameter-Based Channel Prediction and Ranking for CR-Enabled Massive IoT. In: IEEE Internet of Things Journal. 2022 ; Vol. 9, No. 10. pp. 7151-7165.

Bibtex

@article{3fbbcba2b69d408683925df2451ca00f,
title = "FMCPR: Flexible Multiparameter-Based Channel Prediction and Ranking for CR-Enabled Massive IoT",
abstract = "The cognitive radio-enabled massive Internet of Things (CR- m IoT) is envisioned to shape the future of densely connected IoT devices in the sixth-generation networks to support the hyperconnected society. In conventional CR networks, secondary users (SUs) sense the whole block of spectrum to find idle channels, which is an energy-consuming, delay-inducing, and processing-intensive task. With the large scale of resource-constrained heterogeneous devices in CR- m IoT, the sensing process becomes a major hurdle for CR- m IoT devices to achieve efficient utilization of the limited device and network resources. Thus, a novel multiparameter-based flexible scheme is proposed for idle channel prediction and channel ranking, which considers priorities as well as heterogeneity of users. The scheme uses a probabilistic approach and employs multiple parameters simultaneously to evaluate the suitability of a channel before selecting it for transmission. In addition, valid channel obsolescence, a major problem inherent with channel prediction and ranking, is countered by the proposed scheme. The scheme is evaluated under the impact of variable primary and SUs' arrivals and under multiple channel failures rates and variable sensing and frame time duration. The proposed scheme is also compared with its own modified version that disregards channel failures, and with the random channel selection approach followed by IEEE 802.22. The overall evaluation is conducted under realistic spectrum sensing. Simulation results show that for different parameter values, the proposed scheme improves the collision probability by 11%-55%, reduces sensing time and energy by 60% and 65%, respectively, and enhances throughput by 4%-70%, and spectrum utilization efficiency by 11%-40%.",
keywords = "Channel prediction, Channel ranking, Cognitive radio network (CRN), Flexibility, Massive Internet of Things (mIoT), Resource allocation",
author = "Ghulam Abbas and Khan, {Abd Ullah} and Abbas, {Ziaul Haq} and Muhammad Bilal and Kwak, {Kyung Sup} and Houbing Song",
year = "2022",
month = may,
day = "15",
doi = "10.1109/JIOT.2021.3084677",
language = "English",
volume = "9",
pages = "7151--7165",
journal = "IEEE Internet of Things Journal",
issn = "2327-4662",
publisher = "IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC",
number = "10",

}

RIS

TY - JOUR

T1 - FMCPR

T2 - Flexible Multiparameter-Based Channel Prediction and Ranking for CR-Enabled Massive IoT

AU - Abbas, Ghulam

AU - Khan, Abd Ullah

AU - Abbas, Ziaul Haq

AU - Bilal, Muhammad

AU - Kwak, Kyung Sup

AU - Song, Houbing

PY - 2022/5/15

Y1 - 2022/5/15

N2 - The cognitive radio-enabled massive Internet of Things (CR- m IoT) is envisioned to shape the future of densely connected IoT devices in the sixth-generation networks to support the hyperconnected society. In conventional CR networks, secondary users (SUs) sense the whole block of spectrum to find idle channels, which is an energy-consuming, delay-inducing, and processing-intensive task. With the large scale of resource-constrained heterogeneous devices in CR- m IoT, the sensing process becomes a major hurdle for CR- m IoT devices to achieve efficient utilization of the limited device and network resources. Thus, a novel multiparameter-based flexible scheme is proposed for idle channel prediction and channel ranking, which considers priorities as well as heterogeneity of users. The scheme uses a probabilistic approach and employs multiple parameters simultaneously to evaluate the suitability of a channel before selecting it for transmission. In addition, valid channel obsolescence, a major problem inherent with channel prediction and ranking, is countered by the proposed scheme. The scheme is evaluated under the impact of variable primary and SUs' arrivals and under multiple channel failures rates and variable sensing and frame time duration. The proposed scheme is also compared with its own modified version that disregards channel failures, and with the random channel selection approach followed by IEEE 802.22. The overall evaluation is conducted under realistic spectrum sensing. Simulation results show that for different parameter values, the proposed scheme improves the collision probability by 11%-55%, reduces sensing time and energy by 60% and 65%, respectively, and enhances throughput by 4%-70%, and spectrum utilization efficiency by 11%-40%.

AB - The cognitive radio-enabled massive Internet of Things (CR- m IoT) is envisioned to shape the future of densely connected IoT devices in the sixth-generation networks to support the hyperconnected society. In conventional CR networks, secondary users (SUs) sense the whole block of spectrum to find idle channels, which is an energy-consuming, delay-inducing, and processing-intensive task. With the large scale of resource-constrained heterogeneous devices in CR- m IoT, the sensing process becomes a major hurdle for CR- m IoT devices to achieve efficient utilization of the limited device and network resources. Thus, a novel multiparameter-based flexible scheme is proposed for idle channel prediction and channel ranking, which considers priorities as well as heterogeneity of users. The scheme uses a probabilistic approach and employs multiple parameters simultaneously to evaluate the suitability of a channel before selecting it for transmission. In addition, valid channel obsolescence, a major problem inherent with channel prediction and ranking, is countered by the proposed scheme. The scheme is evaluated under the impact of variable primary and SUs' arrivals and under multiple channel failures rates and variable sensing and frame time duration. The proposed scheme is also compared with its own modified version that disregards channel failures, and with the random channel selection approach followed by IEEE 802.22. The overall evaluation is conducted under realistic spectrum sensing. Simulation results show that for different parameter values, the proposed scheme improves the collision probability by 11%-55%, reduces sensing time and energy by 60% and 65%, respectively, and enhances throughput by 4%-70%, and spectrum utilization efficiency by 11%-40%.

KW - Channel prediction

KW - Channel ranking

KW - Cognitive radio network (CRN)

KW - Flexibility

KW - Massive Internet of Things (mIoT)

KW - Resource allocation

U2 - 10.1109/JIOT.2021.3084677

DO - 10.1109/JIOT.2021.3084677

M3 - Journal article

AN - SCOPUS:85107177600

VL - 9

SP - 7151

EP - 7165

JO - IEEE Internet of Things Journal

JF - IEEE Internet of Things Journal

SN - 2327-4662

IS - 10

ER -