5 research outputs found

    Cluster Heads Selection and Cooperative Nodes Selection for Cluster-based Internet of Things Networks

    Get PDF
    PhDClustering and cooperative transmission are the key enablers in power-constrained Internet of Things (IoT) networks. The challenges for power-constrained devices in IoT networks are to reduce the energy consumption and to guarantee the Quality of Service (QoS) provision. In this thesis, optimal node selection algorithms based on clustering and cooperative communication are proposed for different network scenarios, in particular: • The QoS-aware energy efficient cluster heads (CHs) selection algorithm in one-hop capillary networks. This algorithm selects the optimum set of CHs and construct clusters accordingly based on the location and residual energy of devices. • Cooperative nodes selection algorithms for cluster-based capillary networks. By utilising the spacial diversity of cooperative communication, these algorithms select the optimum set of cooperative nodes to assist the CHs for the long-haul transmission. In addition, with the regard of evenly energy distribution in one-hop cluster-based capillary networks, the CH selection is taken into consideration when developing cooperative devices selection algorithms. The performance of proposed selection algorithms are evaluated via comprehensive simulations. Simulation results show that the proposed algorithms can achieve up to 20% network lifetime longevity and up to 50% overall packet error rate (PER) decrement. Furthermore, the simulation results also prove that the optimal tradeoff between energy efficiency and QoS provision can be achieved in one-hop and multi-hop cluster-based scenarios.Chinese Scholarship Counci

    QoS-aware Energy Efficient Cooperative Scheme for Cluster-based IoT Systems

    Get PDF
    The Internet of Things (IoT) technology with huge number power-constrained devices has been heralded to improve the operational efficiency of many industrial applications. It is vital to reduce the energy consumption of each device, however, this could also degrade the Quality of Service (QoS) provisioning. In this paper, we study the problem of how to achieve the tradeoff between the QoS provisioning and the energy efficiency for the industrial IoT systems. We first formulate the multi-objective optimization problem to achieve the objective of balancing the outage performance and the network lifetime. Then we propose to combine the Quantum Particle Swarm Optimization (QPSO) with the improved Non-dominated Sorting Genetic algorithm (NSGA-II) to obtain the Pareto optimal front. In particular, NSGA-II is applied to solve the formulated multi-objective optimization problem and QPSO algorithm is used to obtain the optimum cooperative coalition. The simulation results suggest that the proposed algorithm can achieve the tradeoff between the energy efficiency and QoS provisioning by sacrificing about 10% network lifetime but improving about 15% outage performance

    QPSO-based energy-aware clustering scheme in the capillary networks for Internet of Things systems

    Get PDF
    Energy efficiency is a crucial challenge in cluster-based capillary networks for Internet of Things (IoT) systems, where the cluster heads (CHs) selection has great impact on the network performance. It is an optimization problem to find the optimum number of CHs as well as which devices are selected as CHs. In this paper, we formulate the clustering problem into the CHs selection procedure with the aim of maximizing the average network lifetime in every round. In particular, we propose a novel CHs selection scheme based on QPSO and investigate how effective it is to prolong network lifetime and reserve the overall battery capacity. The simulation results prove that the proposed QPSO outperforms other evolutionary algorithms and can improve the network lifetime by almost 10%

    Cooperative coalition selection for quality of service optimization in cluster-based capillary networks

    No full text
    Cooperative multiple-input-single-output (CMISO) scheme has been proposed in the literature to prolong the network lifetime in the cluster-based Internet of Things (IoT) systems. CMISO scheme increases the spatial diversity of wireless channels, however, it reduces the transmit power and thus degrades the quality of service (QoS) performance. In this paper, we formulate the problem of cooperative coalition selection for CMISO scheme to minimize the overall packet error rate (PER). Then, we propose to apply the qubit-based quantum-inspired particle swarm optimization (QPSO) to select the optimum cluster head (CH) and cooperative devices coalition. Simulation results proved that the qubit-based QPSO has faster convergence speed and outperforms Ψ-based QPSO, particle swarm optimization (PSO), and quantum genetic algorithm (QGA) in terms of overall PER
    corecore