...
首页> 外文期刊>IEEE Transactions on Parallel and Distributed Systems >ASAP: An Adaptive Sampling Approach to Data Collection in Sensor Networks
【24h】

ASAP: An Adaptive Sampling Approach to Data Collection in Sensor Networks

机译:ASAP:传感器网络中数据采集的自适应采样方法

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

One of the most prominent and comprehensive ways of data collection in sensor networks is to periodically extract raw sensor readings. This way of data collection enables complex analysis of data, which may not be possible with in-network aggregation or query processing. However, this flexibility in data analysis comes at the cost of power consumption. In this paper we develop ASAP u00026;#8722; an adaptive sampling approach to energyefficient periodic data collection in sensor networks. The main idea behind ASAP is to use a dynamically changing subset of the nodes as samplers such that the sensor readings of the sampler nodes are directly collected, whereas the values of the non-sampler nodes are predicted through the use of probabilistic models that are locally and periodically constructed. ASAP can be effectively used to increase the network lifetime while keeping the quality of the collected data high, in scenarios where either the spatial density of the network deployment is superfluous relative to the required spatial resolution for data analysis or certain amount of data quality can be traded off in order to decrease the power consumption of the network. ASAP approach consists of three main mechanisms. First, sensing-driven cluster construction is used to create clusters within the network such that nodes with close sensor readings are assigned to the same clusters. Second, correlation-based sampler selection and model derivation are used to determine the sampler nodes and to calculate the parameters of the probabilistic models that capture the spatial and temporal correlations among the sensor readings. Last, adaptive data collection and model-based prediction are used to minimize the number of messages used to extract data from the network. A unique feature of ASAP is the use of in-network schemes, as opposed to the protocols requiring centralized control, to select and dynamically refine the subset of the sensor nodes serving as samplers and to adjust t-he value prediction models used for non-sampler nodes. Such runtime adaptations create a data collection schedule which is self-optimizing in response to the changes in the energy levels of the nodes and environmental dynamics. We present simulation-based experimental results and study the effectiveness of ASAP under different system settings.
机译:传感器网络中最突出,最全面的数据收集方式之一是定期提取原始传感器读数。这种数据收集方式可以进行复杂的数据分析,而这在网络内聚合或查询处理中是不可能的。但是,这种数据分析的灵活性是以功耗为代价的。在本文中,我们开发了ASAP u00026;#8722;。传感器网络中节能周期数据的自适应采样方法。 ASAP的主要思想是使用节点的动态变化子集作为采样器,以便直接收集采样器节点的传感器读数,而非采样器节点的值则通过使用局部概率模型来预测并定期建造。在网络部署的空间密度相对于数据分析所需的空间分辨率而言是多余的或可能存在一定数量的数据质量的情况下,ASAP可以有效地用于提高网络寿命,同时保持所收集数据的高质量。为了降低网络功耗,需要进行权衡。 ASAP方法包括三个主要机制。首先,传感驱动的群集构造用于在网络内创建群集,以便将具有接近传感器读数的节点分配给相同的群集。其次,基于相关性的采样器选择和模型推导用于确定采样器节点并计算捕获传感器读数之间的空间和时间相关性的概率模型的参数。最后,使用自适应数据收集和基于模型的预测来最小化用于从网络提取数据的消息数量。与要求集中控制的协议相反,ASAP的独特功能是使用网络内方案来选择并动态优化用作采样器的传感器节点的子集,并调整用于非传感器的值预测模型采样器节点。这样的运行时适应会创建一个数据收集计划,该计划会根据节点的能级变化和环境动态进行自我优化。我们提出基于仿真的实验结果,并研究在不同系统设置下ASAP的有效性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号