Improving Trusted Routing by Identifying Malicious Nodes in a MANET Using Reinforcement Learning
Title | Improving Trusted Routing by Identifying Malicious Nodes in a MANET Using Reinforcement Learning |
Publication Type | Conference Paper |
Year of Publication | 2017 |
Authors | Mayadunna, H., Silva, S. L. De, Wedage, I., Pabasara, S., Rupasinghe, L., Liyanapathirana, C., Kesavan, K., Nawarathna, C., Sampath, K. K. |
Conference Name | 2017 Seventeenth International Conference on Advances in ICT for Emerging Regions (ICTer) |
ISBN Number | 978-1-5386-2444-9 |
Keywords | ad-hoc on-demand distance vector protocol, AODV, AODV protocol, composability, dynamic MANET environment, dynamic wireless connections, healthcare systems, learning (artificial intelligence), malicious behaviour, malicious nodes, MANET, military operations, mobile ad hoc networks, mobile ad-hoc networks, mobile conferences, Peer-to-peer computing, Protocols, pubcrawl, reinforcement learning, reinforcement learning agent, reliable trust improvement, resilience, Resiliency, Routing, Scalability, security, self-organizing communication systems, telecommunication security, Trust, Trust Routing, trusted routing, Vehicular Networks |
Abstract | Mobile ad-hoc networks (MANETs) are decentralized and self-organizing communication systems. They have become pervasive in the current technological framework. MANETs have become a vital solution to the services that need flexible establishments, dynamic and wireless connections such as military operations, healthcare systems, vehicular networks, mobile conferences, etc. Hence it is more important to estimate the trustworthiness of moving devices. In this research, we have proposed a model to improve a trusted routing in mobile ad-hoc networks by identifying malicious nodes. The proposed system uses Reinforcement Learning (RL) agent that learns to detect malicious nodes. The work focuses on a MANET with Ad-hoc On-demand Distance Vector (AODV) Protocol. Most of the systems were developed with the assumption of a small network with limited number of neighbours. But with the introduction of reinforcement learning concepts this work tries to minimize those limitations. The main objective of the research is to introduce a new model which has the capability to detect malicious nodes that decrease the performance of a MANET significantly. The malicious behaviour is simulated with black holes that move randomly across the network. After identifying the technology stack and concepts of RL, system design was designed and the implementation was carried out. Then tests were performed and defects and further improvements were identified. The research deliverables concluded that the proposed model arranges for highly accurate and reliable trust improvement by detecting malicious nodes in a dynamic MANET environment. |
URL | https://ieeexplore.ieee.org/document/8257821/ |
DOI | 10.1109/ICTER.2017.8257821 |
Citation Key | mayadunna_improving_2017 |
- Protocols
- vehicular networks
- trusted routing
- Trust Routing
- trust
- telecommunication security
- self-organizing communication systems
- security
- Scalability
- Routing
- Resiliency
- resilience
- reliable trust improvement
- reinforcement learning agent
- Reinforcement learning
- pubcrawl
- ad-hoc on-demand distance vector protocol
- Peer-to-peer computing
- mobile conferences
- mobile ad-hoc networks
- mobile ad hoc networks
- military operations
- MANET
- malicious nodes
- malicious behaviour
- learning (artificial intelligence)
- healthcare systems
- dynamic wireless connections
- dynamic MANET environment
- composability
- AODV protocol
- AODV