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Comparative analysis of alive node of AVOACS with existing protocols.

Comparative analysis of alive node of AVOACS with existing protocols.

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Energy efficiency plays a major role in sustaining lifespan and stability of the network, being one of most critical factors in wireless sensor networks (WSNs). To overcome the problem of energy depletion in WSN, this paper proposes a new Energy Efficient Clustering Scheme named African Vulture Optimization Algorithm based EECS (AVOACS) using AVOA....

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