Adaptive Data-Communication Trust Mechanism for Clustered Wireless Sensor Networks

Author(s):  
Said Talbi ◽  
Mouloud Koudil ◽  
Abdelmadjid Bouabdallah ◽  
Karima Benatchba
Author(s):  
Amarasimha T. ◽  
V. Srinivasa Rao

Wireless sensor networks are used in machine learning for data communication and classification. Sensor nodes in network suffer from low battery power, so it is necessary to reduce energy consumption. One way of decreasing energy utilization is reducing the information transmitted by an advanced machine learning process called support vector machine. Further, nodes in WSN malfunction upon the occurrence of malicious activities. To overcome these issues, energy conserving and faulty node detection WSN is proposed. SVM optimizes data to be transmitted via one-hop transmission. It sends only the extreme points of data instead of transmitting whole information. This will reduce transmitting energy and accumulate excess energy for future purpose. Moreover, malfunction nodes are identified to overcome difficulties on data processing. Since each node transmits data to nearby nodes, the misbehaving nodes are detected based on transmission speed. The experimental results show that proposed algorithm provides better results in terms of reduced energy consumption and faulty node detection.


Sign in / Sign up

Export Citation Format

Share Document