A general framework of genetic multi-agent routing protocol for improving the performance of MANET environment

These days, the fields of Mobile Ad hoc Network (MANET) have provided increasing prevalence and consequently, MANET is now a subject of considerable significance for the researchers to instigate research activities. MANET is the collaborative commitment of an assemblage of portable (or mobile) hubs (or nodes) without the necessary mediation of any unified (or centralized) gateway (or access point) or existent framework. There exists a growing inclination or course to embrace MANET for business utilization. MANET is a rising domain of research to give different services in communication to end-clients or consumers. However, these communication services of MANET utilize a large amount of transfer speed (or bandwidth) and a huge measure of web speed. Bandwidth optimization is essential in different information interchanges for fruitful acknowledgement and the application of such a technological innovation. This paper integrates the Genetic Algorithm (GA) and the Multi-Agent System (MAS) to improve the QoS requirements. The proposed framework called Genetic Multi-Agent Routing Protocol (GMARP). The aims of the proposed framework are to utilize the benefits of both approaches in order to fulfil QoS such as (delay, bandwidth, and the number of hops) in the different types of routing conventions (or protocols) such as being (proactive and reactive). In this paper is a simulation scenario to demonstrate the ability of the proposed framework to be satisfied with QoS requirements.

[1]  David E. Goldberg,et al.  Genetic algorithms and Machine Learning , 1988, Machine Learning.

[2]  Jalal Laassiri,et al.  Mobility Condition to Study Performance of MANET Routing Protocols , 2019, Studies in Systems, Decision and Control.

[3]  Aida Mustapha,et al.  Bat Optimized Link State Routing Protocol for Energy-Aware Mobile Ad-Hoc Networks , 2019, Symmetry.

[4]  Young-Tak Kim,et al.  Cognitive passive estimation of available bandwidth (cPEAB) in overlapped IEEE 802.11 WiFi WLANs , 2010, 2010 IEEE Network Operations and Management Symposium - NOMS 2010.

[5]  Salama A. Mostafa,et al.  Using Genetic Algorithm in implementing Capacitated Vehicle Routing Problem , 2012, 2012 International Conference on Computer & Information Science (ICCIS).

[6]  Mazin Abed Mohammed,et al.  Integrating African Buffalo Optimization Algorithm in AODV Routing Protocol for improving the QoS of MANET , 2019, Journal of Southwest Jiaotong University.

[7]  Haitao Zhao,et al.  Accurate available bandwidth estimation in IEEE 802.11-based ad hoc networks , 2009, Comput. Commun..

[8]  Isabelle Guérin Lassous,et al.  Retransmission-based available bandwidth estimation in IEEE 802.11-based multihop wireless networks , 2011, MSWiM '11.

[9]  Aida Mustapha,et al.  An Anti-Spam Detection Model for Emails of Multi-Natural Language , 2019, Journal of Southwest Jiaotong University.

[10]  Aida Mustapha,et al.  Comparative Analysis to the Performance of Three Mobile Ad-Hoc Network Routing Protocols in Time-Critical Events of Search and Rescue Missions , 2020, AHFE.

[11]  Isabelle Guérin Lassous,et al.  Bandwidth Estimation for IEEE 802.11-Based Ad Hoc Networks , 2008, IEEE Transactions on Mobile Computing.

[12]  Aida Mustapha,et al.  Performance Evaluation of Ad-Hoc On-Demand Distance Vector and Optimized Link State Routing Protocols in Mobile Ad-Hoc Networks , 2018, International Journal on Advanced Science, Engineering and Information Technology.

[13]  Alicia Y. C. Tang,et al.  A Multi-Agent Ad Hoc On-Demand Distance Vector for Improving the Quality of Service in MANETs , 2018, 2018 International Symposium on Agent, Multi-Agent Systems and Robotics (ISAMSR).

[14]  Ghanshyam Singh,et al.  Comparative Study of Different Routing Protocols for IEEE 802.15.4-Enabled Mobile Sink Wireless Sensor Network , 2020 .

[15]  Reza Firsandaya Malik,et al.  Optimized authentication for wireless body area network , 2018 .

[16]  Aida Mustapha,et al.  A Survey of Multi-Agent System Approach in Risk Assessment , 2018, 2018 International Symposium on Agent, Multi-Agent Systems and Robotics (ISAMSR).

[17]  Aida Mustapha,et al.  Competitive analysis of single and multi-path routing protocols in mobile Ad-Hoc network , 2020 .

[18]  Mazin Abed Mohammed,et al.  Solving vehicle routing problem by using improved genetic algorithm for optimal solution , 2017, J. Comput. Sci..

[19]  Aida Mustapha,et al.  Mobile ad-hoc network routing protocols of time-critical events for search and rescue missions , 2021, Bulletin of Electrical Engineering and Informatics.

[20]  Aida Mustapha,et al.  A Survey of Multi-agent Systems and Case-Based Reasoning Integration , 2018, 2018 International Symposium on Agent, Multi-Agent Systems and Robotics (ISAMSR).

[21]  K. Prabha Performance Assessment and Comparison of Efficient Ad Hoc Reactive and Proactive Network Routing Protocols , 2020, SN Comput. Sci..