Intrusion Detection in Smart Grid Using Data Mining Techniques
Title | Intrusion Detection in Smart Grid Using Data Mining Techniques |
Publication Type | Conference Paper |
Year of Publication | 2018 |
Authors | Subasi, A., Al-Marwani, K., Alghamdi, R., Kwairanga, A., Qaisar, S. M., Al-Nory, M., Rambo, K. A. |
Conference Name | 2018 21st Saudi Computer Society National Computer Conference (NCC) |
ISBN Number | 978-1-5386-4110-1 |
Keywords | Artificial neural networks, composability, cybersecurity, data mining, Data Mining Techniques., Human Behavior, Internet of Things, Internet of Things (IoT), Intrusion detection, intrusion detection system, invasive software, IoT, Metrics, power engineering computing, power meters, pubcrawl, security devices, smart appliances, smart city, smart environments, Smart grid, smart grid environment, Smart Grid Privacy, Smart grids, smart meters, smart power grids, Support vector machines, Training |
Abstract | The rapid growth of population and industrialization has given rise to the way for the use of technologies like the Internet of Things (IoT). Innovations in Information and Communication Technologies (ICT) carries with it many challenges to our privacy's expectations and security. In Smart environments there are uses of security devices and smart appliances, sensors and energy meters. New requirements in security and privacy are driven by the massive growth of devices numbers that are connected to IoT which increases concerns in security and privacy. The most ubiquitous threats to the security of the smart grids (SG) ascended from infrastructural physical damages, destroying data, malwares, DoS, and intrusions. Intrusion detection comprehends illegitimate access to information and attacks which creates physical disruption in the availability of servers. This work proposes an intrusion detection system using data mining techniques for intrusion detection in smart grid environment. The results showed that the proposed random forest method with a total classification accuracy of 98.94 %, F-measure of 0.989, area under the ROC curve (AUC) of 0.999, and kappa value of 0.9865 outperforms over other classification methods. In addition, the feasibility of our method has been successfully demonstrated by comparing other classification techniques such as ANN, k-NN, SVM and Rotation Forest. |
URL | https://ieeexplore.ieee.org/document/8593124 |
DOI | 10.1109/NCG.2018.8593124 |
Citation Key | subasi_intrusion_2018 |
- power meters
- Training
- Support vector machines
- smart power grids
- smart meters
- Smart Grids
- Smart Grid Privacy
- smart grid environment
- Smart Grid
- Smart Environments
- Smart City
- smart appliances
- security devices
- pubcrawl
- Artificial Neural Networks
- power engineering computing
- Metrics
- IoT
- invasive software
- intrusion detection system
- Intrusion Detection
- Internet of Things (IoT)
- Internet of Things
- Human behavior
- Data Mining Techniques.
- Data mining
- Cybersecurity
- composability