IoTBoT-IDS: A novel statistical learning-enabled botnet detection framework for protecting networks of smart cities

Faculty Computer Science Year: 2021
Type of Publication: ZU Hosted Pages:
Authors:
Journal: SUSTAINABLE CITIES AND SOCIETY Elsevier Volume:
Keywords : IoTBoT-IDS: , novel statistical learning-enabled botnet detection    
Abstract:
The rapid proliferation of the Internet of Things (IoT) systems, has enabled transforming urban areas into smart cities. Smart cities’ paradigm has resulted in improved quality of life and better services to citizens, like smart healthcare, smart parking, smart transport, smart buildings, smart homes, and so on. One of the major challenges of IoT devices is the limited capacity of their battery because the devices consume a large amount of energy once they communicate with each other. Furthermore, the IoT-based smart systems would contain sensitive data about network systems, introducing serious privacy and security issues. IoT-based smart systems are highly exposed to botnet attacks. Examples of such attacks are Mirai and BASHLITE malware launched from compromised surveillance devices, which are common in smart cities, resulting in paralysis of Internet-based services through distributed denial of service (DDoS) attacks. Such DDoS attacks on IoT devices and their networks further threaten the emerging concept of sustainable smart cities. To discover such cyberattacks, this paper proposes a novel statistical learning-based botnet detection framework, called IoTBoT-IDS, which protects IoT-based smart networks against botnet attacks. IoTBoT-IDS captures the normal behavior of IoT networks by applying statistical learning-based techniques, using Beta Mixture Model (BMM) and a Correntropy model. Any deviation from the normal behavior is detected as an anomalous event. To evaluate IoTBoT-IDS, three benchmark datasets generated from realistic IoT networks were used. The evaluation results showed that IoTBoT-IDS effectively identifies various types of botnets with an average detection accuracy of 99.2%, which is higher by about 2–5% compared with compelling intrusion detection methods, namely AdaBoost ensemble learning, fuzzy c-means, and deep feed forward neural networks.
   
     
 
       

Author Related Publications

  • Mohammed Abdel Basset Metwally Attia, "Discrete greedy flower pollination algorithm for spherical traveling salesman problem", Springer, 2019 More
  • Mohammed Abdel Basset Metwally Attia, "A New Hybrid Flower Pollination Algorithm for Solving Constrained Global Optimization Problems", Natural Sciences Publishing Cor., 2014 More
  • Mohammed Abdel Basset Metwally Attia, "A novel equilibrium optimization algorithm for multi-thresholding image segmentation problems", Springer London, 2021 More
  • Mohammed Abdel Basset Metwally Attia, "An efficient binary slime mould algorithm integrated with a novel attacking-feeding strategy for feature selection", Pergamon, 2021 More
  • Mohammed Abdel Basset Metwally Attia, "An efficient teaching-learning-based optimization algorithm for parameters identification of photovoltaic models: Analysis and validations", Pergamon, 2021 More

Department Related Publications

  • Saber Mohamed, "Self-adaptive Mix of Particle Swarm Methodologies for Constrained Optimization", ELSEVIER, 2014 More
  • Saber Mohamed, "Testing United Multi-Operator Evolutionary Algorithms on The CEC2014 Real-Parameter Numerical Optimization", IEEE, 2014 More
  • Saber Mohamed, "GA with a New Multi-Parent Crossover for Constrained Optimization", IEEE, 2011 More
  • Eman samir hasan sayed, "Decision Making Assessment for Site Selection Using the AHP and TOPSIS Methods", Statistical studies institution, Cairo University, Egypt, 2007 More
  • Israa Abdel Ghaffar Salem Mohammed, "Estimating Bed Requirements for a Pediatric Department in a University Hospital in Egypt", Modern Management Science & Engineering, 2016 More
Tweet