Effective Data Aggregation Scheme for Large-scale Wireless Sensor Networks
Abstract
Energy preservation is one of the most important challenges in wireless sensor networks. In most applications, sensor networks consist of hundreds or thousands nodes that are dispersed in a wide field. Hierarchical architectures and data aggregation methods are increasingly gaining more popularity in such large-scale networks. In this paper, we propose a novel adaptive Energy-Efficient Multi-layered Architecture (EEMA) protocol for large-scale sensor networks, wherein both hierarchical architecture and data aggregation are efficiently utilized. EEMA divides the network into some layers as well as each layer into some clusters, where the data are gathered in the first layer and are recursively aggregated in upper layers to reach the base station. Many criteria are wisely employed to elect head nodes, including the residual energy, centrality, and proximity to bottom-layer heads. The routing delay is mathematically analyzed. Performance evaluation is performed via simulations which confirms the effectiveness of the proposed EEMA protocol in terms of the network lifetime and reduced routing delay.
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