22,143 research outputs found

    Energy efficiency of some non-cooperative, cooperative and hybrid communication schemes in multi-relay WSNs

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    In this paper we analyze the energy efficiency of single-hop, multi-hop, cooperative selective decode-and-forward, cooperative incremental decode-and-forward, and even the combination of cooperative and non-cooperative schemes, in wireless sensor networks composed of several nodes. We assume that, as the sensor nodes can experience either non line-of-sight or some line-of-sight conditions, the Nakagami-m fading distribution is used to model the wireless environment. The energy efficiency analysis is constrained by a target outage probability and an end-to-end throughput. Our results show that in most scenarios cooperative incremental schemes are more energy efficient than the other methods

    Energy Efficiency in Cooperative Wireless Sensor Networks

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    [EN] The transport of sensitive products is very important because their deterioration may cause the value lost and even the product rejection by the buyer. In addition, it is important to choose the optimal way to achieve this end. In a data network, the task of calculating the best routes is performed by routers. We can consider the optimal path as the one that provides a shortest route. However, if a real transport network is considered the shortest path can sometimes be affected by incidents and traffic jams that would make it inadvisable. On the other hand, when we need to come back, due to features that symmetry provides, it would be interesting to follow the same path in reverse sense. For this reason, in this paper we present a symmetric routing mechanism for cooperative monitoring system for the delivery of fresh products. The systems is based on a combination of fixed nodes and a mobile node that stores the path followed to be able of coming back following the same route in reverse sense. If this path is no longer available, the system will try to maintain the symmetry principle searching the route that provide the shortest time to the used in the initial trip. The paper shows the algorithm used by the systems to calculate the symmetric routes. Finally, the system is tested in a real scenario which combines different kind of roads. As the results shows, the energy consumption of this kind of nodes is highly influenced by the activity of sensors.This work has been supported by the "Ministerio de Economia y Competitividad", through the "Convocatoria 2014. Proyectos I+D -Programa Estatal de Investigacion Cientifica y Tecnica de Excelencia" in the "Subprograma Estatal de Generacion de Conocimiento", (project TIN2014-57991-C3-1- P) and the "programa para la Formacion de Personal Investigador - (FPI-2015-S2-884)" by the "Universitat Politecnica de Valencia".Sendra, S.; Lloret, J.; Lacuesta, R.; Jimenez, JM. (2019). Energy Efficiency in Cooperative Wireless Sensor Networks. Mobile Networks and Applications. 24(2):678-687. https://doi.org/10.1007/s11036-016-0788-3S678687242Derks HG, Buehler WS, Hall MB (2013) Real-time method and system for locating a mobile object or person in a tracking environment. US Patent 8514071 B2. Aug 20, 2013Witmond R, Dutta R, Charroppin P (2006) Method for tracking a mail piece. US Patent 7003376 B2, Feb 21, 2006Lu L, Liu Y, Han J (2015) ACTION: breaking the privacy barrier for RFID systems. 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Int Journal on Advances in Networks and Services 3(1&2):163–178Bri D, Garcia M, Lloret J, Dini P (2009) Real deployments of wireless sensor networks. in Proc of the third International Conference on Sensor Technologies and Applications (SENSORCOMM’09), June 18–23. Athens (Greece), p 415–423 doi: 10.1109/SENSORCOMM.2009.69Karim L, Anpalagan A, Nasser N, Almhana J (2013) Sensor-based M2 M agriculture monitor-ing Systems for Developing Countries: state and challenges. Network Protocols and Algorithms 5(3):68–86. doi: 10.5296/npa.v5i3.3787Garcia M, Lloret J, Sendra S, Rodrigues JJPC (2011) Taking cooperative decisions in group-based wireless sensor networks. Lect Notes Comput Sci 6874:61–65. doi: 10.1007/978-3-642-23734-8_9Garcia M, Sendra S, Lloret J, Lacuesta R (2010) Saving energy with cooperative group-based wireless sensor networks. Lect Notes Comput Sci 6240:231–238. doi: 10.1007/978-3-642-16066-0_11Silva FN, Comin CH, Peron TKDM, Rodrigues FA, Ye C, Wilson RC, Hancock ER, Costa LF (2016) Concentric network symmetry. Inf Sci 333:61–80. doi: 10.1016/j.ins.2015.11.014Jedermann R, Schouten R, Sklorz A, Lang W, Van Kooten O (2006) Linking keeping quality models and sensor systems to an autonomous transport supervision system. In proc of the 2nd Int Workshop Cold Chain Management, May 8–9, Bonn, Germany, p 3–18Li J, Cao J (2015) Survey of object tracking in wireless sensor networks. Ad Hoc and Sensor Wireless Networks 25(1–2):89–120Shamsuzzoha A, Addo-Tenkorang R, Phuong D, Helo P. (2011). Logistics tracking: An implementation issue for delivery network. In proc of the PICMET’11: Conference Technology Management in the Energy Smart World, July 31–August 4, Portland, (Oregon-USA) p 1–10Torres RV, Sanchez JC, Galan LM (2014) Unmarked point and adjacency vertex, mobility models for the generation of emergency and rescue scenarios in urban areas. Ad Hoc and Sensor Wireless Networks 23(3–4):211–233Paxson V (1997) Measurements and Analysis of End-to-End Internet Dynamics. (Ph.D. Thesis). University of California, Berkeley. April, 1997. Available at: ftp://ftp.ee.lbl.gov/papers/vp-thesis/ Last access: 18 Oct 2016Codish M, Frank M, Itzhakov A, Miller A. (2014). Solving Graph Coloring Problems with Abstraction and Symmetry. AarXiv preprint arXiv:1409.5189. Available at: http://arxiv.org/abs/1409.5189 Last access: 18 Oct 2016Chambers D, Flapan E (2014) Topological symmetry groups of small complete graphs. 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    Optimization of depth-based routing for underwater wireless sensor networks through intelligent assignment of initial energy

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    Underwater Wireless Sensor Networks (UWSNs) are extensively used to explore the diverse marine environment. Energy efficiency is one of the main concerns regarding performance of UWSNs. In a cooperative wireless sensor network, nodes with no energy are known as coverage holes. These coverage holes are created due to non-uniform energy utilization by the sensor nodes in the network. These coverage holes degrade the performance and reduce the lifetime of UWSNs. In this paper, we present an Intelligent Depth Based Routing (IDBR) scheme which addresses this issue and contributes towards maximization of network lifetime. In our proposed scheme, we allocate initial energy to the sensor nodes according to their usage requirements. This idea is helpful to balance energy consumption amongst the nodes and keep the network functional for a longer time as evidenced by the results provided

    Non-Metaheuristic Clustering Algorithms for Energy-Efficient Cooperative Communication in Wireless Sensor Networks: A Comparative Study

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     Wireless Sensor Networks (WSNs) are now considered a vital technology that enables the gathering and distribution of data in various applications, such as environmental monitoring and industrial automation. Nevertheless, the finite energy resources of sensor nodes pose significant obstacles to the long-term viability and effectiveness of these networks. Researchers have developed and studied various non-meta algorithms to improve energy efficiency, data transfer, and network lifespan. These efforts contribute to enhancing cooperative communication modules. This analysis conducts a detailed examination and comparative evaluation of different well-known clustering methods in the field of Wireless Sensor Networks (WSNs), providing significant insights for improving cooperative communication. Our purpose is to provide a comprehensive perspective on the contributions of these algorithms to improving energy efficiency in WSNs. This will be achieved by examining their practical implementations, underlying mathematical principles, strengths, shortcomings, real-world applications, and potential for further improvement

    Cross-layer design for wireless sensor relay networks

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    In recent years, the idea of wireless sensor networks has gathered a great deal of attention. A distributed wireless sensor network may have hundreds of small sensor nodes. Each individual sensor contains both processing and communication elements and is designed in some degree to monitor the environmental events specified by the end user of the network. Information about the environment is gathered by sensors and delivered to a remote collector. This research conducts an investigation with respect to the energy efficiency and the cross-layer design in wireless sensor networks. Motivated by the multipath utilization and transmit diversity capability of space-time block codes (STBC), a new energy efficient cooperative routing algorithm using the STBC is proposed. Furthermore, the steady state performance of the network is analyzed via a Markov chain model. The proposed approach in this dissertation can significantly reduce the energy consumption and improve the power efficiency. This work also studies the application of differential STBC for wireless multi-hop sensor networks over fading channels. Using differential STBC, multiple sensors are selected acting as parallel relay nodes to receive and relay collected data. The proposed technique offers low complexity, since it does not need to track or estimate the time-varying channel coefficients. Analysis and simulation results show that the new approach can improve the system performance. This dissertation models the cooperative relay method for sensor networks using a Markov chain and an M/G/1 queuing system. The analytical and simulation results indicate system improvements in terms of throughput and end-to-end delay. Moreover, the impact of network resource constraints on the performance of multi-hop sensor networks with cooperative relay is also investigated. The system performance under assumptions of infinite buffer or finite buffer sizes is studied, the go through delay and the packet drop probability are improved compared to traditional single relay method. Moreover, a packet collision model for crucial nodes in wireless sensor networks is introduced. Using such a model, a space and network diversity combining (SNDC) method is designed to separate the collision at the collector. The network performance in terms of throughput, delay, energy consumption and efficiency are analyzed and evaluated

    Improving energy efficiency in a wireless sensor network by combining cooperative MIMO with data aggregation

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    In wireless sensor networks where nodes are powered by batteries, it is critical to prolong the network lifetime by minimizing the energy consumption of each node. In this paper, the cooperative multiple-input-multiple-output (MIMO) and data-aggregation techniques are jointly adopted to reduce the energy consumption per bit in wireless sensor networks by reducing the amount of data for transmission and better using network resources through cooperative communication. For this purpose, we derive a new energy model that considers the correlation between data generated by nodes and the distance between them for a cluster-based sensor network by employing the combined techniques. Using this model, the effect of the cluster size on the average energy consumption per node can be analyzed. It is shown that the energy efficiency of the network can significantly be enhanced in cooperative MIMO systems with data aggregation, compared with either cooperative MIMO systems without data aggregation or data-aggregation systems without cooperative MIMO, if sensor nodes are properly clusterized. Both centralized and distributed data-aggregation schemes for the cooperating nodes to exchange and compress their data are also proposed and appraised, which lead to diverse impacts of data correlation on the energy performance of the integrated cooperative MIMO and data-aggregation systems
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