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Energy-efficient computation and communication scheduling for cluster-based in-network processing in large-scale wireless sensor networks.

机译:大规模无线传感器网络中基于群集的网络内处理的节能计算和通信调度。

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Emerging Wireless Sensor Networks (WSN) applications demand considerable computation capacity for in-network processing. To achieve the required processing capacity, cross-layer collaborative in-network processing among sensors emerges as a promising solution: Sensors not only process information at the application layer, but also synchronize their communication activities to exchange partially processed data for parallel processing. Task mapping and scheduling plays an important role in parallel processing. Though this problem has been extensively studied in the high performance computing area, its counterpart in WSNs remains largely unexplored. Scheduling computation and communication events is a challenging problem in WSNs due to limited resource availability and shared communication medium. This research investigates the energy-efficient task mapping and scheduling problem in large-scale WSNs composed of homogeneous wireless sensors. A hierarchical WSN architecture is assumed to be composed of sensor clusters, where applications are iteratively executed. Given this environment, task mapping and scheduling in single-hop clustered WSNs is investigated for energy-constrained applications. Based on the proposed Hyper-DAG model and single-hop channel model, the EcoMapS solution minimizes schedule lengths subject to energy consumption constraints. Secondly, real-time applications are also considered in single-hop clustered WSNs. Incorporating the novel Dynamic Voltage Scaling (DVS) algorithm, the RT MapS solution provides deadline guarantee with the minimum balanced energy consumption. Next, the task mapping and scheduling problem is further addressed in its general form for multi-hop clustered WSNs. A novel multi-hop channel model is developed, and a multi-hop communication scheduling algorithm is presented, based on which the MTMS solution minimizes application energy consumption subject to deadline constraints. Finally, low-complexity sensor failure handling algorithms are developed to recover network functionality when sensors failures occur in single-hop and multi-hop clustered WSNs.
机译:新兴的无线传感器网络(WSN)应用程序要求大量的计算能力用于网络内处理。为了实现所需的处理能力,传感器之间的跨层协作式网络内处理作为一种有前途的解决方案出现了:传感器不仅在应用程序层处理信息,而且还同步其通信活动以交换部分处理的数据以进行并行处理。任务映射和调度在并行处理中起着重要作用。尽管此问题已在高性能计算领域进行了广泛研究,但其在WSN中的对应问题仍未开发。由于有限的资源可用性和共享的通信介质,调度计算和通信事件是WSN中一个具有挑战性的问题。本研究研究了由同类无线传感器组成的大规模WSN的节能任务映射和调度问题。假定WSN分层体系结构由传感器群集组成,在这些群集中迭代执行应用程序。在这种环境下,针对能量受限的应用研究了单跳集群WSN中的任务映射和调度。基于提议的Hyper-DAG模型和单跳通道模型,EcoMapS解决方案可在受能耗限制的情况下最大程度地减少调度时间。其次,在单跳集群WSN中也考虑了实时应用。集成了新颖的动态电压缩放(DVS)算法,RT MapS解决方案以最小的平衡能耗提供了期限保证。接下来,以多跳群集WSN的一般形式进一步解决任务映射和调度问题。开发了一种新颖的多跳信道模型,提出了一种多跳通信调度算法,在此算法的基础上,MTMS解决方案将应用能耗降低到最小。最后,开发了低复杂度的传感器故障处理算法,以在单跳和多跳集群WSN中发生传感器故障时恢复网络功能。

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