Lifetime Optimization of Dense Wireless Sensor Networks Using Continuous Ring-sector Model
Arouna Ndam Njoya, Christopher Thron, Marah Nana Awa, Ado Adamou Abba, Ari, Abdelhak Mourad Gueroui

TL;DR
This paper models data aggregation in dense wireless sensor networks using a continuous ring-sector approach, formulating a linear programming problem to optimize network lifetime through transmission strategies and energy management.
Contribution
It introduces a novel ring-sector model for data aggregation in dense WSNs and derives an exact formula for energy consumption, optimizing lifetime with combined transmission methods.
Findings
Optimal transmission employs direct and stepwise methods.
Iterated compression significantly extends network lifetime.
Asymptotic solutions match linear programming results.
Abstract
Wireless sensor networks (WSNs) are becoming increasingly utilized in applications that require remote collection of data on environmental conditions. In particular dense WSNs are emerging as an important sensing platforms for the Internet of Things (IoT). WSNs are able to generate huge volumes of raw data, which require network structuring and efficient collaboration between nodes to ensure efficient transmission. In order to reduce the amount of data carried in the network, data aggregation is used in WSNs to define a policy of data fusion and compression. In this paper, we investigate a model for data aggregation in a dense {WSN} with a single sink. The model divides a circular coverage region centered at the sink into patches which are intersections of sectors of concentric rings, and data in each patch is aggregated at a single node before transmission. Nodes only communicate with…
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Taxonomy
TopicsEnergy Efficient Wireless Sensor Networks · Energy Harvesting in Wireless Networks · Mobile Ad Hoc Networks
