Intelligent MANET System Model for Throughput Improvement & Prevention of Annomaly in MANET
Pankaj Kumar Sharma1, Asho K. Sinha2

1Pankaj Kumar Sharma, Department of Information Technology, ABES Engineering College, Ghaziabad.

2Asho K. Sinha, Director, UST Pvt. Ltd, Ghaziabad.

Manuscript received on 08 April 2019 | Revised Manuscript received on 15 April 2019 | Manuscript Published on 26 April 2019 | PP: 641-645 | Volume-8 Issue-6S April 2019 | Retrieval Number: F61440486S19/19©BEIESP

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Abstract: MANET is a self-configured network of devices in wireless linked network, in an arbitrary topology. Each node is an independent node, which can play a role of host, router & receiver. The connectivity is established by operating system hosted on participating nodes. Routing algorithm establishes routes and forwarding information as packets to and from source to sink station. Many routing techniques attempt to achieve optimal performance, however modifications are still required in existing routing protocols to improve the performance of MANET. An efficient MANET leads to fulfillment of three key performance metrics (PDR, AE2ED, and Overhead). There exist some predominant anomalies in Mobile Ad-hoc Network in terms of above performance metrics. Anomalies in MANET arise due to various environmental factors like variation in number of connections among participating nodes, mobility of nodes, pause time of node, rate of data packet forwarded by nodes and total density of nodes, adversely affecting its performance. In order to overcome some predominant anomalies, in this research a systematic approach has been used to develop an intelligent system model, which controls the performance adaptively.

Keywords: MANET, PDR, AE2ED, Overhead, Fuzz.
Scope of the Article: Information Ecology and Knowledge Management