An Investigative Study of Competition-Aware Incentive Mechanisms in Mobile Ad Hoc Networks

Year : 2026 | Volume : 13 | Issue : 01 | Page : 08 15
    By

    Manas Kumar Yogi,

  • Nadiminti Sai Priya Satwika,

  1. Assistant Professor, CSE Department Pragati Engineering College (A), Surampalem, Andhra Pradesh, India
  2. Undergraduate Student, CSE Department Pragati Engineering College (A), Surampalem, Andhra Pradesh, India

Abstract

Mobile ad hoc networks (MANETs) present a unique communication paradigm characterized by their decentralized and dynamic nature, where nodes rely on each other for packet forwarding and network maintenance. However, the inherent selfishness of individual nodes and resource constraints often leads to non-cooperative behaviors, significantly degrading network performance. This investigative study delves into the critical role of competition-aware incentive mechanisms in fostering sustainable cooperation within MANETs. Competition, a portmanteau of competition and cooperation, acknowledges that nodes can simultaneously compete for resources while collaborating for collective network benefits. We explore the theoretical underpinnings of competition in MANETs, primarily through the lens of game theory, examining models such as Stackelberg and bargaining games that capture the intricate interplay between competitive and cooperative strategies. The article reviews the evolution from traditional incentive mechanisms, which often focus solely on cooperation, to more sophisticated competition-aware designs that account for both aspects. Furthermore, we investigated the integration of emerging technologies, including blockchain and artificial intelligence, in developing robust and fair incentive structures. The study also analyzes the performance implications of these mechanisms on key network metrics such as throughput, latency, and energy efficiency. Finally, we discuss the prevailing challenges, such as privacy concerns and scalability issues, and outline promising research directions in this evolving field. This comprehensive analysis aims to provide a foundational understanding of competition-aware incentive mechanisms, highlighting their potential to enhance the resilience and efficiency of MANETs

Keywords: Competition, cooperation, MANET, mobile, resource, self-organizing

[This article belongs to Journal of Mobile Computing, Communications & Mobile Networks ]

How to cite this article:
Manas Kumar Yogi, Nadiminti Sai Priya Satwika. An Investigative Study of Competition-Aware Incentive Mechanisms in Mobile Ad Hoc Networks. Journal of Mobile Computing, Communications & Mobile Networks. 2026; 13(01):08-15.
How to cite this URL:
Manas Kumar Yogi, Nadiminti Sai Priya Satwika. An Investigative Study of Competition-Aware Incentive Mechanisms in Mobile Ad Hoc Networks. Journal of Mobile Computing, Communications & Mobile Networks. 2026; 13(01):08-15. Available from: https://journals.stmjournals.com/jomccmn/article=2026/view=237833


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Regular Issue Subscription Review Article
Volume 13
Issue 01
Received 13/02/2026
Accepted 19/02/2026
Published 05/03/2026
Publication Time 20 Days


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