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Proceedings ArticleDOI

Distributed clustering in ad-hoc sensor networks: a hybrid, energy-efficient approach

O. Younis, +1 more
- Vol. 1, pp 629-640
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TLDR
A protocol is presented, HEED (hybrid energy-efficient distributed clustering), that periodically selects cluster heads according to a hybrid of their residual energy and a secondary parameter, such as node proximity to its neighbors or node degree, which outperforms weight-based clustering protocols in terms of several cluster characteristics.
Abstract
Prolonged network lifetime, scalability, and load balancing are important requirements for many ad-hoc sensor network applications. Clustering sensor nodes is an effective technique for achieving these goals. In this work, we propose a new energy-efficient approach for clustering nodes in ad-hoc sensor networks. Based on this approach, we present a protocol, HEED (hybrid energy-efficient distributed clustering), that periodically selects cluster heads according to a hybrid of their residual energy and a secondary parameter, such as node proximity to its neighbors or node degree. HEED does not make any assumptions about the distribution or density of nodes, or about node capabilities, e.g., location-awareness. The clustering process terminates in O(1) iterations, and does not depend on the network topology or size. The protocol incurs low overhead in terms of processing cycles and messages exchanged. It also achieves fairly uniform cluster head distribution across the network. A careful selection of the secondary clustering parameter can balance load among cluster heads. Our simulation results demonstrate that HEED outperforms weight-based clustering protocols in terms of several cluster characteristics. We also apply our approach to a simple application to demonstrate its effectiveness in prolonging the network lifetime and supporting data aggregation.

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A cluster head replacement based on threshold in the Internet of Things

TL;DR: This paper considers both the head selection and the replacement interval which is determined by a threshold that is based on the remaining energy, density of alive nodes, and location and shows that the proposed scheme has outstanding contribution in terms of maximizing the life time of the network and balancing energy consumption of all nodes.
Proceedings ArticleDOI

Double cluster-heads clustering algorithm for wireless sensor networks using PSO

TL;DR: A double cluster-heads clustering algorithm using particle swarm optimization (PSO-DH) that generates two cluster heads and can balance the energy consumption, so it can extend the network lifetime effectively.
Proceedings ArticleDOI

3DE: selective cluster head selection scheme for energy efficiency in wireless sensor networks

TL;DR: This study proposes an efficient cluster-based routing scheme, called 3DE, and selects new cluster head using the information such as direction obtained from upper level cluster head, distance among nodes in the cluster, residual energy and density to prolong the network lifetime and provide equal opportunity for being cluster head.
Proceedings ArticleDOI

An Availability-Based Link QoS Routing for Mobile Ad hoc Networks

TL;DR: An availability-based link QoS (ABLQ) routing protocol for mobile ad hoc networks based on mobility prediction and link quality measurement, in addition to energy consumption analysis, is proposed to provide highly reliable and better communication links with energy-efficiency.
Proceedings ArticleDOI

Reaction-Diffusion Based Topology Self-Organization for Periodic Data Gathering in Wireless Sensor Networks

TL;DR: This paper proposes a novel mechanism based on a biological self-organization mechanism, that is, a reaction-diffusion model, to organize the best topology in aSelf-organizing and autonomous way for periodic data gathering in wireless sensor networks.
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