Login / Signup

A Node Density Control Learning Method for the Internet of Things.

Shumei LouGautam SrivastavaShuai Liu
Published in: Sensors (Basel, Switzerland) (2019)
When examining density control learning methods for wireless sensor nodes, control time is often long and power consumption is usually very high. This paper proposes a node density control learning method for wireless sensor nodes and applies it to an environment based on Internet of Things architectures. Firstly, the characteristics of wireless sensors networks and the structure of mobile nodes are analyzed. Combined with the flexibility of wireless sensor networks and the degree of freedom of real-time processing and configuration of field programmable gate array (FPGA) data, a one-step transition probability matrix is introduced. In addition, the probability of arrival of signals between any pair of mobile nodes is also studied and calculated. Finally, the probability of signal connection between mobile nodes is close to 1, approximating the minimum node density at T. We simulate using a fully connected network identifying a worst-case test environment. Detailed experimental results show that our novel proposed method has shorter completion time and lower power consumption than previous attempts. We achieve high node density control as well at close to 90%.
Keyphrases
  • sentinel lymph node
  • lymph node
  • low cost
  • healthcare
  • early stage
  • high resolution
  • radiation therapy
  • health information
  • neoadjuvant chemotherapy
  • deep learning
  • artificial intelligence
  • data analysis