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Analysis on Performance Comparison of Virtual Grid-Base Dynamic Route Adjustment in Wireless Detector Networks


Affiliations
1 Department of Computer Science and Engineering, SriGuru Institute of Technology, India
2 Department of Computer Science and Engineering, Rathinam Technical campus, India
3 Department of Computer Science and Engineering, Cihan University - Duhok, Iraq
     

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A virtual Grid-based dynamic routes adjustment scheme (virtual grid routing) for wireless sink-based wireless sensor networks is a recent introduction. Each mobile node in the network is capable of sensing, processing and communicating. In the present scenario, sensor networks are used in a variety of applications such as military, commercial, industrial, etc. which require constant monitoring and detection of specific event. The approach of efficient data delivery using communication of distance priority is used, avoiding the technique of previous schemes. Our method aims to reduce the routes reconstruction cost of sensor nodes while maintaining the most favorable routes to the mobile sink's recent location. It will improve the lifetime and reduce the cost consumption. This method highlights many routed schemes. A few such novel routing schemes are Virtual Grid based Dynamic Route Adjustment (VGDRA), Multiple Enhanced Specified-deployed Sub-sinks (MESS), Virtual Circle Combined Straight Routing (VCCSR), Hexagonal cell-based Data Dissemination (HexDD), Hierarchical Cluster-based Data Dissemination (HCDD), Backbone-based Virtual Infrastructure (BVI), Line-Based Data Dissemination (LBDD), Rail Road, Quadtree-based Data Dissemination (QDD), and Two-Tier Data Dissemination (TTDD). But, each scheme has its own advantages and disadvantages.

Keywords

VGDRA, MESS, VCCSR, HCDD, BVI, LBDD, QDD, TTDD, WDN, Grid Routing, Data Mining.
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  • Analysis on Performance Comparison of Virtual Grid-Base Dynamic Route Adjustment in Wireless Detector Networks

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Authors

D. Vikneshkumar
Department of Computer Science and Engineering, SriGuru Institute of Technology, India
D. Kaleeswaran
Department of Computer Science and Engineering, Rathinam Technical campus, India
D. Yuvaraj
Department of Computer Science and Engineering, Cihan University - Duhok, Iraq

Abstract


A virtual Grid-based dynamic routes adjustment scheme (virtual grid routing) for wireless sink-based wireless sensor networks is a recent introduction. Each mobile node in the network is capable of sensing, processing and communicating. In the present scenario, sensor networks are used in a variety of applications such as military, commercial, industrial, etc. which require constant monitoring and detection of specific event. The approach of efficient data delivery using communication of distance priority is used, avoiding the technique of previous schemes. Our method aims to reduce the routes reconstruction cost of sensor nodes while maintaining the most favorable routes to the mobile sink's recent location. It will improve the lifetime and reduce the cost consumption. This method highlights many routed schemes. A few such novel routing schemes are Virtual Grid based Dynamic Route Adjustment (VGDRA), Multiple Enhanced Specified-deployed Sub-sinks (MESS), Virtual Circle Combined Straight Routing (VCCSR), Hexagonal cell-based Data Dissemination (HexDD), Hierarchical Cluster-based Data Dissemination (HCDD), Backbone-based Virtual Infrastructure (BVI), Line-Based Data Dissemination (LBDD), Rail Road, Quadtree-based Data Dissemination (QDD), and Two-Tier Data Dissemination (TTDD). But, each scheme has its own advantages and disadvantages.

Keywords


VGDRA, MESS, VCCSR, HCDD, BVI, LBDD, QDD, TTDD, WDN, Grid Routing, Data Mining.

References