会议专题

ARTS: Adaptive Rule Triggers on Sensors for Energy Conservation in Applications using Coarse-Granularity Data

Communicating extensive in-network data generated by resource-constrained wireless sensor nodes is an energy consuming process. To minimise the amount of data exchanged in sensor networks,several researchers have proposed novel and efficient protocols to perform data aggregations,clustering or regression on sensor nodes. Most of these approaches focus on optimising conventional mining techniques to work on resource-constrained sensor nodes.However,the application of association rules for sensor networks is an area of study that has not been investigated.This is due to the high computational cost of obtaining meaningful rules. Thus,in this paper,we propose Adaptive Rule Triggers on Sensors ARTS,to extract highly correlated rules from sensor data and apply them. The learnt rules are used to extend sensor lifetime by controlling sensor operations using triggers. Our approach is optimised to run on non-critical sensing applications/data-aggregation applications that can tolerate a coarse-granularity for sensed data. For this category of applications,our approach can derive meaningful rules efficiently to further conserve energy of wireless sensors. In this paper,these energy savings are evidenced in our experiments that adapt ARTS to a state-of-the-art clustering protocol.

Suan Khai Chong Mohamed Medhat Gaber Seng Wai Loke Shonali Krishnaswamy

Monash University 900 Dandenong Road Caulfield,Australia CSIRO ICT Centre Hobart,Tasmania Latrobe University 215 Franklin Street Melbourne,VIE 3000,Australia

国际会议

The 2008 International Conference on Embedded Software and Systems Symposia(ICESS 2008)(2008国际嵌入式系统及嵌入式软件会议)

成都

英文

314-321

2008-01-01(万方平台首次上网日期,不代表论文的发表时间)