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An Energy-Efficient Approach to Enhance Virtual Sensors Provisioning in Sensor Clouds Environments

机译:在传感器云环境中增强虚拟传感器配置的节能方法

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摘要

Virtual sensors provisioning is a central issue for sensors cloud middleware since it is responsible for selecting physical nodes, usually from Wireless Sensor Networks (WSN) of different owners, to handle user’s queries or applications. Recent works perform provisioning by clustering sensor nodes based on the correlation measurements and then selecting as few nodes as possible to preserve WSN energy. However, such works consider only homogeneous nodes (same set of sensors). Therefore, those works are not entirely appropriate for sensor clouds, which in most cases comprises heterogeneous sensor nodes. In this paper, we propose ACxSIMv2, an approach to enhance the provisioning task by considering heterogeneous environments. Two main algorithms form ACxSIMv2. The first one, ACASIMv1, creates multi-dimensional clusters of sensor nodes, taking into account the measurements correlations instead of the physical distance between nodes like most works on literature. Then, the second algorithm, ACOSIMv2, based on an Ant Colony Optimization system, selects an optimal set of sensors nodes from to respond user’s queries while attending all parameters and preserving the overall energy consumption. Results from initial experiments show that the approach reduces significantly the sensor cloud energy consumption compared to traditional works, providing a solution to be considered in sensor cloud scenarios.
机译:虚拟传感器配置是传感器云中间件的一个中心问题,因为它负责选择物理节点(通常从不同所有者的无线传感器网络(WSN)中选择)来处理用户的查询或应用程序。最近的工作是通过基于相关性度量对传感器节点进行聚类,然后选择尽可能少的节点以保留WSN能量来执行配置。但是,此类工作仅考虑同类节点(同一组传感器)。因此,这些工作并不完全适用于传感器云,传感器云在大多数情况下都包含异构的传感器节点。在本文中,我们提出了ACxSIMv2,这是一种通过考虑异构环境来增强配置任务的方法。两种主要算法构成ACxSIMv2。第一个是ACASIMv1,它创建了传感器节点的多维簇,并考虑到测量的相关性,而不是像大多数文献上提到的那样,考虑了节点之间的物理距离。然后,第二种算法ACOSIMv2基于蚁群优化系统,从中选择了一组最优的传感器节点,以响应用户的查询,同时保留所有参数并保留总体能耗。初始实验的结果表明,与传统工作相比,该方法显着降低了传感器云的能耗,为传感器云方案提供了一种解决方案。

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