首页> 外文会议>2012 International Conference on Control, Automation and Information Sciences. >Data aggregation in resource-limited wireless communication environments — Differences between theory and praxis
【24h】

Data aggregation in resource-limited wireless communication environments — Differences between theory and praxis

机译:资源受限的无线通信环境中的数据聚合-理论与实践之间的差异

获取原文
获取原文并翻译 | 示例

摘要

Multimodal Wireless Sensor Networks generate huge amount of heterogeneous data, which has to be transmitted in a dynamically changing network infrastructure. Especially in the domain of wireless low-power applications, the energy-efficiency and the prioritisation of communication tasks is critical. Several research areas deal with these issues. They are optimising the respective hardware components as well as the protocols within the PHY, MAC or network layer. But for an optimised media transport in the topology also the data management and the task scheduling on the application layer are essential. Here, the key challenge is to minimise the data amount without decreasing the information quality. Related research work in the field of data aggregation and data fusion offer interesting techniques for an efficient data handling. In this paper, we discuss usual ways for data aggregation, including the adapted communication process. We critically analyse the benefits in theory and compare these conceptual advantages with measured real-world results. The evaluation was done in two steps. The first one is based on simulation scenarios of typical WSN/SANET applications. In a second step, we implement a demonstrator platform for a respective real-world environment. The test bed configuration is similar to the simulation scenario and provides comparable data. Based on the results and the respective analysis, we propose feasible methods for optimising data aggregation techniques. We clarify, that these improvements are essential for an efficient usage in resource-limited, multimodal sensor network environments.
机译:多模式无线传感器网络会生成大量的异构数据,这些数据必须在动态变化的网络基础结构中进行传输。特别是在无线低功耗应用领域,能源效率和通信任务的优先级至关重要。一些研究领域处理这些问题。他们正在优化相应的硬件组件以及PHY,MAC或网络层内的协议。但是,对于拓扑中优化的媒体传输,应用程序层上的数据管理和任务调度也是必不可少的。这里,关键的挑战是在不降低信息质量的情况下最小化数据量。数据聚合和数据融合领域的相关研究工作为有效的数据处理提供了有趣的技术。在本文中,我们讨论了数据聚合的常用方法,包括自适应的通信过程。我们批判性地分析了理论上的收益,并将这些概念上的收益与实测结果进行了比较。评估分两个步骤进行。第一个基于典型WSN / SANET应用程序的仿真方案。在第二步中,我们为各自的实际环境实现了一个演示器平台。测试台配置类似于仿真方案,并提供可比较的数据。根据结果​​和各自的分析,我们提出了可行的方法来优化数据聚合技术。我们明确指出,这些改进对于在资源有限的多模式传感器网络环境中的有效使用至关重要。

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