Loading [a11y]/accessibility-menu.js
Energy efficiency analysis of an RLS-based adaptive signal processing algorithm for energy aware sensor networks | IEEE Conference Publication | IEEE Xplore

Energy efficiency analysis of an RLS-based adaptive signal processing algorithm for energy aware sensor networks


Abstract:

A joint source coding and RLS-based adaptive signal processing approach that exploits the inherent correlations among the sensor data, in order to improve energy efficien...Show More

Abstract:

A joint source coding and RLS-based adaptive signal processing approach that exploits the inherent correlations among the sensor data, in order to improve energy efficiency of low-power wireless sensor networks is proposed. The energy efficiency is achieved by reducing the transmission requirements from sensors. A semi-analytical technique is presented in order to determine the energy-efficiency of the proposed scheme taking into account both communications and circuit power consumptions. The numerical results obtained with real sensor data show that the proposed scheme offers significant energy savings compared to previously proposed schemes.
Date of Conference: 04-07 January 2005
Date Added to IEEE Xplore: 14 November 2005
Print ISBN:0-7803-8840-2
Conference Location: Chennai, India
References is not available for this document.

I. Introduction

Large-scale wireless sensor networks can be used in many ubiquitous applications such as environmental monitoring and battle-field surveillance. Nodes of these networks are generally battery operated resulting in energy-constrained sensor networks. Thus energy-aware sensor processing plays an important role in improving the life-time of the sensor network and preventing the loss of critical information due to node failures. Many approaches that facilitate energy consumption reduction in sensor networks have previously been proposed. Some of these can be found in [1]–[3] and [4].

Select All
1.
M. Chu, H. Haussecker, and F. Zhao, "Scalable information-driven sensor querying and routing for ad hoc heterogeneous sensor networks." in IEEE Journal of High Performance Computing Applications, 2002.
2.
G. Pottie and W. Kaiser, "Wireless sensor networks." in Communications of the ACM, 2000.
3.
C. S. Raghavendra and S. Singh, "PAMAS - Power Aware Multi-Access Protocol with Signalling for Ad hoc Networks," in Computer Communications Review, July 1998.
4.
C. E. Jones, K. M. Sivalingam, P. Agarwal, and J. C. Chen, "A survey of energy efficient network protocols for wireless networks," in Wireless Networks, ser. 4, vol. 7, July 2001, pp. 343 - 358.
5.
J. Chou, D. Petrovic, and K. Ramchandran. "A distributed and adaptive signal processing approach to reducing energy consumption in sensor networks," in IEEE INFOCOM. San Franscisco, CA, Mar. 2003.
6.
M. L. Chebolu, V. K., Veeramachaneni, S. K. Jayaweera, and K. R. Namuduri, "An improved adaptive signal processing approach to reduce energy consumption in sensor networks." in CISS conference-on Information Sciences and Systems. Princeton, NJ, Mar. 2004.
7.
D. Slepian and I. K. Wolf, "Noiseless encoding of correlated information sources," IEEE Trans. Inform. Theory, vol. IT-19, pp. 471-480, July 1973.
8.
S. Haykin, Adaptive Filter Theory. Upper-saddle River, NJ, USA: Prentice Hall, 1996.
9.
S. Cui, A. J. Goldsmith, and A. Bahai, "Energy constrained modulation optimization for both uncoded and coded systems," IEEE Trans. Commun., 2003. submitted.
10.
S. K. Jayaweera, "Energy efficient virtual mimo-based cooperative communications for wireless sensor networks," in 2nd International Conf. on Intelligent Sensing and Information Processing (ICISIP 05), Chennai, India, Jan 2005.

Contact IEEE to Subscribe

References

References is not available for this document.