3 research outputs found

    Simulation based Evaluation of Attribute Aware Scheduling in Heterogeneous Wireless Sensor Networks

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    In many applications of sensor networks, it is required to sense multiple physical parameters of the same region. So multiple different types of sensors are deployed. Such networks are known as heterogeneous networks. In tree based heterogeneous networks, complete aggregation is not possible at every node. The reason is that parent and child node may be of different types. The term Attribute is used to refer to type of packet. When objective is to maximize aggregation, parent selection should be done such that packet sent by given node should be aggregated as soon as possible in its path towards the sink. This approach would result in reduction in schedule length of the tree. Such an algorithm is known as Attribute Aware Scheduling Algorithm. In this work, one such algorithm is evaluated through simulations. It is found that Attribute Aware Scheduling results in better aggregation, smaller schedule length, and reduction in energy consumption. The reduction in schedule length means smaller latency and reduction in energy consumption means extended network lifetime

    Modular Energy-Efficient and Robust Paradigms for a Disaster-Recovery Process over Wireless Sensor Networks

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    Robust paradigms are a necessity, particularly for emerging wireless sensor network (WSN) applications. The lack of robust and efficient paradigms causes a reduction in the provision of quality of service (QoS) and additional energy consumption. In this paper, we introduce modular energy-efficient and robust paradigms that involve two archetypes: (1) the operational medium access control (O-MAC) hybrid protocol and (2) the pheromone termite (PT) model. The O-MAC protocol controls overhearing and congestion and increases the throughput, reduces the latency and extends the network lifetime. O-MAC uses an optimized data frame format that reduces the channel access time and provides faster data delivery over the medium. Furthermore, O-MAC uses a novel randomization function that avoids channel collisions. The PT model provides robust routing for single and multiple links and includes two new significant features: (1) determining the packet generation rate to avoid congestion and (2) pheromone sensitivity to determine the link capacity prior to sending the packets on each link. The state-of-the-art research in this work is based on improving both the QoS and energy efficiency. To determine the strength of O-MAC with the PT model; we have generated and simulated a disaster recovery scenario using a network simulator (ns-3.10) that monitors the activities of disaster recovery staff; hospital staff and disaster victims brought into the hospital. Moreover; the proposed paradigm can be used for general purpose applications. Finally; the QoS metrics of the O-MAC and PT paradigms are evaluated and compared with other known hybrid protocols involving the MAC and routing features. The simulation results indicate that O-MAC with PT produced better outcomes.https://doi.org/10.3390/s15071616

    A Review on the Role of Nano-Communication in Future Healthcare Systems: A Big Data Analytics Perspective

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    This paper presents a first-time review of the open literature focused on the significance of big data generated within nano-sensors and nano-communication networks intended for future healthcare and biomedical applications. It is aimed towards the development of modern smart healthcare systems enabled with P4, i.e. predictive, preventive, personalized and participatory capabilities to perform diagnostics, monitoring, and treatment. The analytical capabilities that can be produced from the substantial amount of data gathered in such networks will aid in exploiting the practical intelligence and learning capabilities that could be further integrated with conventional medical and health data leading to more efficient decision making. We have also proposed a big data analytics framework for gathering intelligence, form the healthcare big data, required by futuristic smart healthcare to address relevant problems and exploit possible opportunities in future applications. Finally, the open challenges, future directions for researchers in the evolving healthcare domain, are presented
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