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Journal ArticleDOI

Intelligent Query-Based Data Aggregation Model and Optimized Query Ordering for Efficient Wireless Sensor Network

Prachi Sarode, +1 more
- 29 Mar 2018 - 
- Vol. 100, Iss: 4, pp 1405-1425
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TLDR
The proposed query-based aggregation model for WSN using the advanced optimization algorithm called group search optimization (GSO) is constructed in such a way that the querying order (QO) can be ranked based on latency and throughput.
Abstract
Data aggregation algorithms play a primary role in WSN, as it collects and aggregates the data in an energy efficient manner so that the life expectancy of the network is extended. This paper intends to develop a query-based aggregation model for WSN using the advanced optimization algorithm called group search optimization (GSO). The proposed model is constructed in such a way that the querying order (QO) can be ranked based on latency and throughput. Accordingly, the main objective of the proposed GSO-based QO is to minimize the latency and maximize the throughput of WSN. The proposed data aggregation model facilitates the network administrator to understand the best queries so that the performance of the base station can be improved. After framing the model, it compares the performance of GSO-based QO with the traditional PSO-based QO, FF-based QO, GA-based QO, ABC-based QO and GSO-based QO in terms of idle time and throughput. Thus the data aggregation performance of proposed GSO-based QO is superior to the traditional algorithms by attaining high throughput and low latency.

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Citations
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References
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Journal ArticleDOI

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TL;DR: This work presents the Tiny AGgregation (TAG) service for aggregation in low-power, distributed, wireless environments, and discusses a variety of optimizations for improving the performance and fault tolerance of the basic solution.
Journal ArticleDOI

Group Search Optimizer: An Optimization Algorithm Inspired by Animal Searching Behavior

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Journal ArticleDOI

MAC Essentials for Wireless Sensor Networks

TL;DR: This paper thoroughly exposes the prime focus of WSN MAC protocols, design guidelines that inspired these protocols, as well as drawbacks and shortcomings of the existing solutions and how existing and emerging technology will influence future solutions.
Book ChapterDOI

Minimum data aggregation time problem in wireless sensor networks

TL;DR: This paper designs a (Δ–1)-approximation algorithm for MDAT problem, where Δ equals the maximum number of sensors within the transmission range of any sensor, and proves that this problem is NP-hard even when all sensors are deployed a grid.
Journal ArticleDOI

Hierarchical Data Aggregation Using Compressive Sensing (HDACS) in WSNs

TL;DR: A novel Hierarchical Data Aggregation method using Compressive Sensing (HDACS) is presented, which combines a hierarchical network configuration with CS to optimize the amount of data transmitted and formulate a new energy model by factoring in both processor and radio energy consumption into the cost.
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