A WSN lifetime improvement algorithm reaping benefits of data aggregation and state transitions

Wireless sensor networks consist of different subsystems such as sensing, transmission, reception, power and processing systems. Battery power of sensor nodes is one of the important factors to consider in a wireless sensor system. Moreover, when such systems are deployed in remote environments for critical applications where the availability of electrical power is less, the factor presents a major constraint. Prior work has tackled this problem by introducing sleep, sense, transmit and receive states. Although most work employed these states in tree and cluster based networks they only incorporated at the leaf nodes. This paper introduces state transitions for cluster head nodes to further reduce energy. The algorithm basically combines data aggregation and state transition to improve the overall life time of the network. To validate the algorithm, we apply to a landslide monitoring and detection system and obtain 33% energy savings for leaf node and 30% energy saving for cluster head node when compared to naive algorithms that do not apply state transitions.

[1]  Ning Xu,et al.  Confounded factor effects on battery life in wireless sensor networks , 2009, 2009 Fourth International Conference on Digital Information Management.

[2]  P. Venkat Rangan,et al.  Wireless Sensor Network for Landslide Detection , 2009, ICWN.

[3]  Guoliang Xing,et al.  Integrated coverage and connectivity configuration in wireless sensor networks , 2003, SenSys '03.

[4]  Faramarz Fekri,et al.  Sleep scheduling and lifetime maximization in sensor networks: fundamental limits and optimal solutions , 2006, IPSN.

[5]  Ramesh Maneesha,et al.  Threshold Based Data Aggregation Algorithm To Detect Rainfall Induced Landslides , 2008, ICWN.

[6]  Cunqing Hua,et al.  Optimal Routing and Data Aggregation for Maximizing Lifetime of Wireless Sensor Networks , 2008, IEEE/ACM Transactions on Networking.

[7]  Lingxuan Hu,et al.  Secure aggregation for wireless networks , 2003, 2003 Symposium on Applications and the Internet Workshops, 2003. Proceedings..

[8]  Deborah Estrin,et al.  The impact of data aggregation in wireless sensor networks , 2002, Proceedings 22nd International Conference on Distributed Computing Systems Workshops.

[9]  Anantha Chandrakasan,et al.  Dynamic Power Management in Wireless Sensor Networks , 2001, IEEE Des. Test Comput..