Startseite Mathematik 8 Intrusion detection framework using quantum computing for mobile cloud computing
Kapitel
Lizenziert
Nicht lizenziert Erfordert eine Authentifizierung

8 Intrusion detection framework using quantum computing for mobile cloud computing

  • Kumari Manisha , V. Dhanunjana Chari und Leta Jule Tesfaye
Veröffentlichen auch Sie bei De Gruyter Brill

Abstract

Mobile cloud computing (MCC) refers to a hybrid approach that brings together mobile computing, cloud computing, and wireless networks. The processing and storage of data are supposed to be moved away from the mobile device, which is its purpose. In MCC, mobile devices are not accountable for performing calculations or storing user data; rather, these responsibilities are transferred to the more powerful computing infrastructures of the cloud. In this chapter, an intrusion detection system (IDS) is developed to improve the detection of attacks in MCC. The model using quantum computing (QC) to detect the possible attacks in the MCC. Various types of attacks are proliferated and tested on the proposed QC and its detection rate is noted. The results show that the proposed QC has higher rate of accuracy and reduced computational burden than other methods.

Abstract

Mobile cloud computing (MCC) refers to a hybrid approach that brings together mobile computing, cloud computing, and wireless networks. The processing and storage of data are supposed to be moved away from the mobile device, which is its purpose. In MCC, mobile devices are not accountable for performing calculations or storing user data; rather, these responsibilities are transferred to the more powerful computing infrastructures of the cloud. In this chapter, an intrusion detection system (IDS) is developed to improve the detection of attacks in MCC. The model using quantum computing (QC) to detect the possible attacks in the MCC. Various types of attacks are proliferated and tested on the proposed QC and its detection rate is noted. The results show that the proposed QC has higher rate of accuracy and reduced computational burden than other methods.

Kapitel in diesem Buch

  1. Frontmatter I
  2. Preface V
  3. Contents VII
  4. Biographies XI
  5. List of contributors XIII
  6. 1 Optimizing the traffic flow in VANETs using deep quantum annealing 1
  7. 2 Quantum annealing-based routing in UAV network 13
  8. 3 Cyberbullying detection of social network tweets using quantum machine learning 25
  9. 4 AI-driven cybersecurity modeling using quantum computing for mitigation of attacks in IOT-SDN network 37
  10. 5 Machine learning-based quantum modeling to classify the traffic flow in smart cities 49
  11. 6 IoT attack detection using quantum deep learning in large-scale networks 67
  12. 7 Quantum transfer learning to detect passive attacks in SDN-IOT 79
  13. 8 Intrusion detection framework using quantum computing for mobile cloud computing 97
  14. 9 Fault-tolerant mechanism using intelligent quantum computing-based error reduction codes 109
  15. 10 Study of quantum computing for data analytics of predictive and prescriptive analytics models 121
  16. 11 A review of different techniques and challenges of quantum computing in various applications 147
  17. 12 Review and significance of cryptography and machine learning in quantum computing 159
  18. 13 An improved genetic quantum cryptography model for network communication 177
  19. 14 Code-based post-quantum cryptographic technique: digital signature 193
  20. 15 Post-quantum cryptography for the detection of injection attacks in small-scale networks 207
  21. 16 RSA security implementation in quantum computing for a higher resilience 219
  22. 17 Application of quantum computing for digital forensic investigation 231
  23. 18 Modern healthcare system: unveiling the possibility of quantum computing in medical and biomedical zones 249
  24. 19 Quantum computing-assisted machine learning to improve the prediction of cardiovascular disease in healthcare system 265
  25. 20 Mitigating the risk of quantum computing in cyber security era 283
  26. 21 IoMT-based data aggregation using quantum learning 301
  27. Index 319
Heruntergeladen am 12.11.2025 von https://www.degruyterbrill.com/document/doi/10.1515/9783110798159-008/html?lang=de
Button zum nach oben scrollen