TY - JOUR
T1 - Adaptive Routing Strategies for Optimisation in MANETs Through Integration of Expanding Ring Search and Random Early Detection Using Machine Learning
AU - Nayab, Durre
AU - Zafar, Mohammad Haseeb
AU - Sher, Madiha
N1 - Publisher Copyright:
© 2025 The Author(s). IET Networks published by John Wiley & Sons Ltd on behalf of The Institution of Engineering and Technology.
PY - 2025/7/29
Y1 - 2025/7/29
N2 - This work presents a novel machine learning (ML)‐driven framework to optimise reactive routing protocols (RRPs) in mobile ad hoc networks (MANETs), tackling congestion control through intelligent, real‐time protocol selection. Building on our prior Adaptive Expanding Ring Search (AERS) method enhanced with random early detection (RED), the study introduces an ML classification system that dynamically identifies the most efficient RRP based on network conditions. High‐accuracy classifiers, AdaBoost (95%), K‐Nearest Neighbours (93%), and Decision Trees (92%), enable data‐driven decision‐making, systematically evaluating protocols across diverse topologies to maximise performance. The framework ensures context‐aware routing, significantly improving Quality of Service (QoS) through enhanced packet delivery, reduced latency, and robust congestion mitigation. Rigorous NS‐3 simulations validate the approach, demonstrating measurable gains over conventional methods. By integrating predictive analytics into routing strategy, this research advances the design and deployment of RRPs, bridging algorithmic innovation with practical implementation. The results offer high‐impact insights for both academic research and real‐world MANET applications, establishing a new paradigm for adaptive, efficient routing in dynamic wireless environments.
AB - This work presents a novel machine learning (ML)‐driven framework to optimise reactive routing protocols (RRPs) in mobile ad hoc networks (MANETs), tackling congestion control through intelligent, real‐time protocol selection. Building on our prior Adaptive Expanding Ring Search (AERS) method enhanced with random early detection (RED), the study introduces an ML classification system that dynamically identifies the most efficient RRP based on network conditions. High‐accuracy classifiers, AdaBoost (95%), K‐Nearest Neighbours (93%), and Decision Trees (92%), enable data‐driven decision‐making, systematically evaluating protocols across diverse topologies to maximise performance. The framework ensures context‐aware routing, significantly improving Quality of Service (QoS) through enhanced packet delivery, reduced latency, and robust congestion mitigation. Rigorous NS‐3 simulations validate the approach, demonstrating measurable gains over conventional methods. By integrating predictive analytics into routing strategy, this research advances the design and deployment of RRPs, bridging algorithmic innovation with practical implementation. The results offer high‐impact insights for both academic research and real‐world MANET applications, establishing a new paradigm for adaptive, efficient routing in dynamic wireless environments.
KW - quality of service
KW - ad hoc networks
KW - routing protocols
UR - https://www.scopus.com/pages/publications/105011712314
U2 - 10.1049/ntw2.70005
DO - 10.1049/ntw2.70005
M3 - Article
SN - 2047-4954
VL - 14
JO - IET Networks
JF - IET Networks
IS - 1
M1 - e70005
ER -