首页> 外文会议>International Wireless Communications and Mobile Computing Conference >Two Tier Data Reduction Technique for Reducing Data Transmission in IoT Sensors
【24h】

Two Tier Data Reduction Technique for Reducing Data Transmission in IoT Sensors

机译:减少物联网传感器数据传输的两层数据缩减技术

获取原文

摘要

The devices that interconnected to the Internet of Things (IoT) will continue to grow exponentially, and in addition, the amount of data that they report. Sensor nodes (SNs) that arranged in WSNs will create some of IoT data and transmit their readings to Gateway (GW), which driving the sensor nodes to quick expenditure their energy and storage. The low costs of SNs impose a restriction on their energy and storage. To handle these problems it's prefer to carry out reduction on data at the source nodes to reduce both of utilized storage and consumed energy. A large portion of proposed solutions implement data reduction just at one level of the IoT design (e.g. at gateways). A Two-Tier Data Reduction (TTDR) technique is proposed to work at two tier of the network that are: sensor nodes and the gateway. At the sensor node tier we use a simple and suitable data compression methods for constrained IoT sensor nodes. The techniques exploit the temporal correlation in sensor data and use Delta Encoding followed by Run-Length Encoding (RLE). At the gateway tier we apply the hierarchical clustering for grouping data sets received from sensor nodes dependent on the Minimum Description Length (MDL) principle. If any pairs of received data sets can be compressed by the MDL principle, they will be combined into one cluster. Consequently, the amount of data sets is decreased gradually, and the merging of sets in clusters is stopped if the discovery of any match of sets to compress is impossible. Finally, the TTDR performance is evaluated based on real sensory data and using OMNeT++ simulator. The acquired outcomes illustrate the proficiency of the proposed system in regarding data transmission and energy.
机译:互连到物联网(IoT)的设备将继续呈指数级增长,此外,它们报告的数据量也将呈指数增长。布置在WSN中的传感器节点(SN)将创建一些IoT数据并将其读数传输到网关(GW),这将驱动传感器节点快速消耗其能量和存储空间。 SN的低成本限制了其能量和存储。为了解决这些问题,最好对源节点上的数据进行缩减以减少已利用的存储量和能耗。提议的解决方案中有很大一部分仅在IoT设计的一个级别(例如在网关)实现数据缩减。提出了一种两层数据减少(TTDR)技术,该技术可在网络的两层工作:传感器节点和网关。在传感器节点层,我们对受约束的IoT传感器节点使用简单且合适的数据压缩方法。该技术利用传感器数据中的时间相关性,并使用Delta编码和随后的行程长度编码(RLE)。在网关层,我们根据最小描述长度(MDL)原理,对来自传感器节点的数据集进行分层分组。如果可以通过MDL原理压缩任何一对接收到的数据集,它们将被组合为一个群集。因此,如果不可能发现要压缩的任何匹配集,则数据集的数量将逐渐减少,并且群集中的集合合并将停止。最后,基于真实的传感数据并使用OMNeT ++模拟器评估TTDR性能。获得的结果说明了所提出系统在数据传输和能源方面的熟练程度。

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