Deep Learning-Based Intrusion Detection for IoT Networks
Title | Deep Learning-Based Intrusion Detection for IoT Networks |
Publication Type | Conference Paper |
Year of Publication | 2019 |
Authors | Ge, Mengmeng, Fu, Xiping, Syed, Naeem, Baig, Zubair, Teo, Gideon, Robles-Kelly, Antonio |
Conference Name | 2019 IEEE 24th Pacific Rim International Symposium on Dependable Computing (PRDC) |
Date Published | dec |
ISBN Number | 978-1-7281-4961-5 |
Keywords | binary classification, communication infrastructure, computer network security, computing infrastructure, deep learning-based intrusion detection, defence networks, Denial of Service attacks, distributed denial of service, Feed Forward Neural Networks, feed-forward neural networks model, feedforward neural nets, field information, healthcare automation, information theft attacks, Internet of Thing, Internet of Things, Intrusion detection, IoT dataset, IoT devices, IoT network, learning (artificial intelligence), multiclass classification, Network reconnaissance, packet level, pattern classification, power grid, pubcrawl, reconnaissance attacks, resilience, Resiliency, Scalability, security controls, telecommunication traffic, Traffic flow |
Abstract | Internet of Things (IoT) has an immense potential for a plethora of applications ranging from healthcare automation to defence networks and the power grid. The security of an IoT network is essentially paramount to the security of the underlying computing and communication infrastructure. However, due to constrained resources and limited computational capabilities, IoT networks are prone to various attacks. Thus, safeguarding the IoT network from adversarial attacks is of vital importance and can be realised through planning and deployment of effective security controls; one such control being an intrusion detection system. In this paper, we present a novel intrusion detection scheme for IoT networks that classifies traffic flow through the application of deep learning concepts. We adopt a newly published IoT dataset and generate generic features from the field information in packet level. We develop a feed-forward neural networks model for binary and multi-class classification including denial of service, distributed denial of service, reconnaissance and information theft attacks against IoT devices. Results obtained through the evaluation of the proposed scheme via the processed dataset illustrate a high classification accuracy. |
URL | https://ieeexplore.ieee.org/document/8952154/ |
DOI | 10.1109/PRDC47002.2019.00056 |
Citation Key | ge_deep_2019 |
- pubcrawl
- IoT devices
- IoT network
- learning (artificial intelligence)
- multiclass classification
- Network reconnaissance
- packet level
- pattern classification
- Power Grid
- IoT dataset
- reconnaissance attacks
- resilience
- Resiliency
- Scalability
- security controls
- telecommunication traffic
- Traffic flow
- feed-forward neural networks model
- communication infrastructure
- computer network security
- computing infrastructure
- deep learning-based intrusion detection
- defence networks
- Denial of Service attacks
- distributed denial of service
- Feed Forward Neural Networks
- binary classification
- feedforward neural nets
- field information
- healthcare automation
- information theft attacks
- Internet of Thing
- Internet of Things
- Intrusion Detection