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Maximizing Durability of Wireless Sensor Network by Using ELDPS Algorithm

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Techno-Societal 2018

Abstract

Wireless sensor Networks have rare vitality assets. Enhancement in power sparing and arrange lifetime is of extraordinary centrality. Inactive sensors do add to control utilization on a par with the working sensors. Wireless correspondence frameworks control utilization and system lifetime can be enhanced if inert sensors are conveyed to a resting state. We investigated best in class in sensor dozing procedures. This paper proposes another model for Enhanced lifetime appropriated power sparing calculation in wireless sensor networks (ELDPS) convention. It upgrades the best in a class by enhancing inclusion, organize lifetime and less power utilization. Our reproduction on Omnet++ approves our model.

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Kagade, R.B., Kurzekar, P.K. (2020). Maximizing Durability of Wireless Sensor Network by Using ELDPS Algorithm. In: Pawar, P., Ronge, B., Balasubramaniam, R., Vibhute, A., Apte, S. (eds) Techno-Societal 2018 . Springer, Cham. https://doi.org/10.1007/978-3-030-16848-3_23

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