Knowledge Agora



Similar Articles

Title Smart Attacks Learning Machine Advisor System for Protecting Smart Cities from Smart Threats
ID_Doc 42628
Authors Ali, H; Elzeki, OM; Elmougy, S
Title Smart Attacks Learning Machine Advisor System for Protecting Smart Cities from Smart Threats
Year 2022
Published Applied Sciences-Basel, 12, 13
Abstract The extensive use of Internet of Things (IoT) technology has recently enabled the development of smart cities. Smart cities operate in real-time to improve metropolitan areas' comfort and efficiency. Sensors in these IoT devices are immediately linked to enormous servers, creating smart city traffic flow. This flow is rapidly increasing and is creating new cybersecurity concerns. Malicious attackers increasingly target essential infrastructure such as electricity transmission and other vital infrastructures. Software-Defined Networking (SDN) is a resilient connectivity technology utilized to address security concerns more efficiently. The controller, which oversees the flows of each appropriate forwarding unit in the SDN architecture, is the most critical component. The controller's flow statistics are thought to provide relevant information for building an Intrusion Detection System (IDS). As a result, we propose a five-level classification approach based on SDN's flow statistics to develop a Smart Attacks Learning Machine Advisor (SALMA) system for detecting intrusions and for protecting smart cities from smart threats. We use the Extreme Learning Machine (ELM) technique at all levels. The proposed system was implemented on the NSL-KDD and KDDCUP99 benchmark datasets, and achieved 95% and 99.2%, respectively. As a result, our approach provides an effective method for detecting intrusions in SDNs.
PDF https://www.mdpi.com/2076-3417/12/13/6473/pdf?version=1656384985

Similar Articles

ID Score Article
40378 Alshahrani, MM; Prati, A A Secure and Intelligent Software-Defined Networking Framework for Future Smart Cities to Prevent DDoS Attack(2023)Applied Sciences-Basel, 13, 17
45810 Rashid, MM; Kamruzzaman, J; Hassan, MM; Imam, T; Gordon, S Cyberattacks Detection in IoT-Based Smart City Applications Using Machine Learning Techniques(2020)International Journal Of Environmental Research And Public Health, 17, 24
39692 Wang, S; Gomez, KM; Sithamparanathan, K; Zanna, P Software Defined Network Security Framework for IoT based Smart Home and City Applications(2019)
38290 Alotaibi, NS; Ahmed, HI; Kamel, SOM Dynamic Adaptation Attack Detection Model for a Distributed Multi-Access Edge Computing Smart City(2023)Sensors, 23, 16
42094 Rangelov, D; Lämmel, P; Brunzel, L; Borgert, S; Darius, P; Tcholtchev, N; Boerger, M Towards an Integrated Methodology and Toolchain for Machine Learning-Based Intrusion Detection in Urban IoT Networks and Platforms(2023)Future Internet, 15, 3
37333 Almasri, MM; Alajlan, AM A novel-cascaded ANFIS-based deep reinforcement learning for the detection of attack in cloud IoT-based smart city applications(2023)Concurrency And Computation-Practice & Experience, 35.0, 22
41657 Elsaeidy, A; Munasinghe, KS; Sharma, D; Jamalipour, A A Machine Learning Approach for Intrusion Detection in Smart Cities(2019)
37610 Prabakar, D; Sundarrajan, M; Manikandan, R; Jhanjhi, NZ; Masud, M; Alqhatani, A Energy Analysis-Based Cyber Attack Detection by IoT with Artificial Intelligence in a Sustainable Smart City(2023)Sustainability, 15.0, 7
37341 Garcia-Font, V; Garrigues, C; Rifà-Pous, H Attack Classification Schema for Smart City WSNs(2017)Sensors, 17.0, 4
36781 Alrashdi, I; Alqazzaz, A; Aloufi, E; Alharthi, R; Zohdy, M; Ming, H AD-IoT: Anomaly Detection of IoT Cyberattacks in Smart City Using Machine Leaming(2019)
Scroll