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Open AccessJournal ArticleDOI

An Energy-Efficient Spectrum-Aware Reinforcement Learning-Based Clustering Algorithm for Cognitive Radio Sensor Networks

TLDR
Performance comparisons of the proposed reinforcement learning-based spectrum-aware clustering algorithm with the Groupwise Spectrum Aware (GWSA)-based algorithm in terms of Sum of Square Error, complexity, network energy consumption and probability of detection indicate improved performance from the proposed approach.
Abstract
It is well-known that clustering partitions network into logical groups of nodes in order to achieve energy efficiency and to enhance dynamic channel access in cognitive radio through cooperative sensing. While the topic of energy efficiency has been well investigated in conventional wireless sensor networks, the latter has not been extensively explored. In this paper, we propose a reinforcement learning-based spectrum-aware clustering algorithm that allows a member node to learn the energy and cooperative sensing costs for neighboring clusters to achieve an optimal solution. Each member node selects an optimal cluster that satisfies pairwise constraints, minimizes network energy consumption and enhances channel sensing performance through an exploration technique. We first model the network energy consumption and then determine the optimal number of clusters for the network. The problem of selecting an optimal cluster is formulated as a Markov Decision Process (MDP) in the algorithm and the obtained simulation results show convergence, learning and adaptability of the algorithm to dynamic environment towards achieving an optimal solution. Performance comparisons of our algorithm with the Groupwise Spectrum Aware (GWSA)-based algorithm in terms of Sum of Square Error (SSE), complexity, network energy consumption and probability of detection indicate improved performance from the proposed approach. The results further reveal that an energy savings of 9% and a significant Primary User (PU) detection improvement can be achieved with the proposed approach.

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Citations
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Journal ArticleDOI

A Novel Dynamic Spectrum Access Framework Based on Reinforcement Learning for Cognitive Radio Sensor Networks

TL;DR: A new initialization mechanism is proposed to establish a communication link and set up a sensor network without adopting spectrum holes to convey control information and results show that this new algorithm provides a significant improvement in terms of the tradeoff between the control channel reliability and the efficiency of the transmission channel.
Journal ArticleDOI

A survey on machine learning in Internet of Things: Algorithms, strategies, and applications

TL;DR: A new taxonomy of ML algorithms is provided to highlight the most fundamental concepts of ML categories and Algorithms and discuss the vital role of ML techniques in driving up the evolution of these technologies.
Journal ArticleDOI

A Survey on Node Clustering in Cognitive Radio Wireless Sensor Networks.

TL;DR: This work attempts to provide a detailed analysis of the role of node clustering in CR-WSNs and suggests how clustering issues and challenges can be handled.
Journal ArticleDOI

Energy-Efficient Infrastructure Sensor Network for Ad Hoc Cognitive Radio Network

TL;DR: An energy-efficient network architecture that consists of ad hoc (mobile) cognitive radios (CRs) and infrastructure wireless sensor nodes and is compared with existing approaches to demonstrate the network performance in terms of the energy consumption and the end-to-end delay.
Journal ArticleDOI

A dynamic harmony search-based fuzzy clustering protocol for energy-efficient wireless sensor networks

TL;DR: A new energy-efficient clustering protocol for WSNs, which can minimize total network energy dissipation while maximizing network lifetime and increase the data delivery at the BS, when compared to other well-known clustering-based routing protocols.
References
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Book

Reinforcement Learning: An Introduction

TL;DR: This book provides a clear and simple account of the key ideas and algorithms of reinforcement learning, which ranges from the history of the field's intellectual foundations to the most recent developments and applications.
Proceedings ArticleDOI

Energy-efficient communication protocol for wireless microsensor networks

TL;DR: The Low-Energy Adaptive Clustering Hierarchy (LEACH) as mentioned in this paper is a clustering-based protocol that utilizes randomized rotation of local cluster based station (cluster-heads) to evenly distribute the energy load among the sensors in the network.

Energy-efficient communication protocols for wireless microsensor networks

TL;DR: LEACH (Low-Energy Adaptive Clustering Hierarchy), a clustering-based protocol that utilizes randomized rotation of local cluster based station (cluster-heads) to evenly distribute the energy load among the sensors in the network, is proposed.
Journal ArticleDOI

An application-specific protocol architecture for wireless microsensor networks

TL;DR: This work develops and analyzes low-energy adaptive clustering hierarchy (LEACH), a protocol architecture for microsensor networks that combines the ideas of energy-efficient cluster-based routing and media access together with application-specific data aggregation to achieve good performance in terms of system lifetime, latency, and application-perceived quality.
Journal ArticleDOI

HEED: a hybrid, energy-efficient, distributed clustering approach for ad hoc sensor networks

TL;DR: It is proved that, with appropriate bounds on node density and intracluster and intercluster transmission ranges, HEED can asymptotically almost surely guarantee connectivity of clustered networks.
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