1,072
Views
3
CrossRef citations to date
0
Altmetric
Research Article

Intelligent SDN Architecture With Fuzzy Neural Network and Blockchain for Monitoring Critical Events

ORCID Icon, ORCID Icon, ORCID Icon & ORCID Icon
Article: 2145634 | Received 18 Apr 2022, Accepted 04 Nov 2022, Published online: 21 Nov 2022

References

  • Alam, I., K. Sharif, F. Li, Z. Latif, M. M. Karim, S. Biswas, B. Nour, and Y. Wang. 2021. A survey of network virtualization techniques for internet of things using SDN and NFV. ACM Computing Surveys 53:1.
  • Alexey, F., F. Ludmila, F. Anton, N. Irina, F. Egor, T. Q. Vinh, and K. Valery. 2015. Methods and tools for secure sensor data transmission and data mining in energy SCADA system. Creativity in Intelligent Technologies and Data Science Series «communications in Computer and Information Science» 535:474–3747. Рart XI. doi:10.1007/978-3-319-23766-4_38.
  • Aliyu, I., M. C. Feliciano, S. Van Engelenburg, D. O. Kim, and C. G. Lim. 2021. A blockchain-based federated forest for SDN-enabled in-vehicle network intrusion detection system. IEEE Access 9:102593–608, 10.1109/ACCESS.2021.3094365.
  • Ashraf Uddin, M., A. Stranieri, I. Gondal, and V. Balasubramanian. 2021. A survey on the adoption of blockchain in IoT: Challenges and solutions. Blockchain: Research and Applications 2:100006.
  • Babiker Mohamed, M., O. Matthew Alofe, M. Ajmal Azad, H. Singh Lallie, K. Fatema, and T. Sharif. 2022. A comprehensive survey on secure software‐defined network for the internet of things. Transactions on Emerging Telecommunications Technologies 33 (1):e4391. doi:10.1002/ett.4391.
  • Baker, P. 2019. Investors pounce on IOTA as Jaguar Land Rover announces crypto integration. Accessed on Sep 20, 2019. https://cryptobriefing.com/iotajaguar-land-rover-crypto/
  • Balistri, E., F. Casellato, C. Giannelli, and C. Stefanelli. 2020. Blockchain for increased cyber-resiliency of industrial edge environments. IEEE International Conference on Smart Computing (SMARTCOMP) 2020. 1–8. doi:10.1109/SMARTCOMP50058.2020.00021.
  • Bawany, N. Z., J. A. Shamsi, and K. Salah. 2017. DDoS attack detection and mitigation using SDN: Methods, practices, and solutions. Arabian Journal for Science and Engineering 42:425–41. doi:10.1007/s13369-017-2414-5.
  • Bezdek, J., R. Ehrlich, and W. Full. 1984. Fcm—the fuzzy C-means clustering-algorithm. Computers & Geosciences 10:191–203. doi:10.1016/0098-3004(84)90020-7.
  • Chang, P. C., and C. H. Liu. 2008. A TSK type fuzzy rule based system for stock price prediction. Expert Systems with Applications 34 (1):135–44.
  • Chen, Y. 2020. A survey on industrial information integration 2016–2019. Journal of Industrial Integration and Management 5(01):33–163.
  • Chen, W., H. Lei, and K. Qi. 2016. Lattice-based linearly homomorphic signatures in the standard model. Theoretical Computer Science 634. doi:10.1016/j.tcs.2016.04.009.
  • Finogeev, A., M. Deev, A. Finogeev, and I. Kolesnikoff. 2020. Proactive big data analysis for traffic accident prediction. Proceeding of the 5th International Conference on Innovative Technologies in Intelligent Systems and Industrial Applications (CITISIA). doi:10.1109/CITISIA50690.2020.9371796.
  • Finogeev, A., and A. Finogeev. 2017. Information attacks and security in wireless sensor networks of industrial SCADA systems. Journal of Industrial Information Integration 5:6–16. doi:10.1016/j.jii.2017.02.002.
  • Finogeev, A., А. Finogeev, L. Fionova, A. Lyapin, and K. Lychagin. 2019. Intelligent monitoring system for smart road environment. Journal of Industrial Information Integration, 15:15–20. 10.1016/j.jii.2019.05.003
  • Finogeev, A., A. Finogeev, and S. Shevchenko. 2017. Monitoring of road transport infrastructure for the intelligent environment «smart road». Communications in Computer and Information Science 754:655–68. doi:10.1007/978-3-319-65551-2_47.
  • Finogeev, A., D. Parygin, S. Schevchenko, A. Finogeev, and D. Ather. 2021. Collection and consolidation of big data for proactive monitoring of critical events at infrastructure facilities in an Urban environment. InCreativity in Intelligent Technologies and Data Science. Communications in Computer and Information Science, A. G. Kravets, M. Shcherbakov, D. Parygin, P. P. Groumpos, eds, vol. 1448; Springer:Cham. doi:10.1007/978-3-030-87034-8_25.
  • Franco, P. 2014. Understanding Bitcoin: Cryptography, Engineering and Economics (The Wiley Finance Series). Hoboken, New Jersey, U.S: John Wiley & Sons, 288. ISBN 978-1-119-01916-9.
  • Gelenbe, E., J. Domanska, T. Czàchorski, A. Drosou, and D. Tzovaras. 2018. Security for internet of things: The seriot project, proc. IEEE International Symposium on Networks, Computers and Communications (ISNCC) 1–5.
  • Giri, N., R. Jaisinghani, R. Kriplani, T. Ramrakhyani, and V. Bhatia. 2021. Distributed denial of service (DDoS) mitigation in software defined network using blockchain. 2019 Third International conference on I-SMAC (IoT in Social, Mobile, Analytics and Cloud) (I-SMAC), 2019 Dec 12–14, SCAD Institute of Technology SCAD Knowledge City Palladam - Pollachi Highway Palladam - 641 664 Tirupur District, Tamil Nadu, INDIA, pp. 673–678. https://www.sci-hub.ru/10.1109/I-SMAC47947.2019.9032690
  • Gupta, A., R. Christie, and R. M. Prof. 2017. Scalability in internet of things: features, techniques and research challenges. International Journal of Computational Intelligence Research 13 (7):1617–27.
  • Hu, J., M. J. Reed, N. Thomos, M. F. Al-Naday, and K. Yang. 2021. Securing SDN-controlled Iot networks through edge blockchain. IEEE Internet Things Journal 8 (4):2102–15. doi:10.1109/JIOT.2020.3017354.
  • Islam, M., A. Rahman, S. Kabir, M. Razaul, U. Acharjee, M. Nasir, S. Band, Shahab, M. Sookhak, and W. Shaoen. 2021. Blockchain-SDN based energy-aware and distributed secure architecture for iots in smart cities. IEEE Internet of Things Journal 9 (5):3850–64. doi:10.1109/JIOT.2021.3100797.
  • Jang, J.-S.R. 1993. ANFIS: Adaptive-network-based fuzzy inference system (англ.)/j.-S.R. Jang//IEEE Transactions on Systems, Man and Cybernetics: Journal 23 (3):665–85.
  • Javeed, D., T. Gao, and M. T. Khan. 2021. SDN-enabled hybrid DL-driven framework for the detection of emerging cyber threats in IoT. Electronics 10 (8):918. doi:10.3390/electronics10080918.
  • Kamaev, V. A., A. G. Finogeev, A. A. Finogeev, and D. S. Parygin. 2017. Key management schemes using routing information frames in secure wireless sensor networks. Journal of Physics: Conference Series: Proceedings of the International Conference on Information Technologies in Business and Industry 803:1–7.
  • Khan, M., F. Algarni, and M. Quasim. 2019. Decentralised Internet of Things. 10.13140/RG.2.2.12659.68649
  • Khang, T.D., N.D. Vuong, M.-K. Tran, and M. Fowler. 2020. Fuzzy C-means clustering algorithm with multiple fuzzification coefficients. Algorithms 13 (7):158. doi:10.3390/a13070158.
  • Latif, S. A., F. B. Xian Wen, C. Iwendi, L.L.F Wang, S. Muhammad Mohsin, Z. Han, and S. S. Band. 2022. AI-empowered, blockchain and SDN integrated security architecture for IoT network of cyber physical systemsm. Computer Communications 181:274–83.
  • Lavacca, F.G., P. Salvo, L. Ferranti, A. Speranza, and L. Costantini. 2020. Performance evaluation of 5G access technologies and SDN transport network on an NS3 simulator. Computers 9 (2):43. doi:10.3390/computers9020043.
  • Lee, C. H., and K.-H. Kim. 2018. Implementation of IoT system using block chain with authentication and data protection. International Conference on Information Networking (ICOIN) 1: 936–940. doi:10.1109/ICOIN.2018.8343261.
  • Lin, C.-J., R. Xue, S.-J. Yang, X. Huang, and L. Shimin. 2020. Linearly homomorphic signatures from lattices. The Computer Journal 63:1871–85. doi:10.1093/comjnl/bxaa034.
  • Mauro Contia, A. D., K. Frankec, and S. Watsond. January. 2018. Internet of things security and forensics: Challenges and opportunities. Future Generation Computer Systems 78(2):544–46.
  • Mendel, F., T. Nad, and M. Schläffer. 2013. Improving local collisions: New attacks on reduced SHA-256//advances in Cryptology – Eurocrypt 2013: 32nd Annual International Conference on the Theory and Applications of Cryptographic Techniques, Athens, Greece, May 26-30. Springer Berlin Heidelberg. pp. 262–78. doi:10.1007/978-3-642-38348-916.
  • Mkrttchian, V., S. Vasin, L. Gamidullaeva, and A. Finogeev. 2021. The impact of blockchain technology on the smart city industry. ACM International Conference Proceeding Series. In IV International Scientific and Practical Conference (DEFIN-2021). Association for Computing Machinery, New York, NY, USA, Article 85, 1–5, 3490940. 10.1145/3487757.3490940
  • Mohammad Mousavi, S. 2014. “Early detection of DDoS attacks in software defined networks controller”. Ontario: Carleton University Ottawa.
  • Novo, O. Apr. 2018. Blockchain meets IoT: An architecture for scalable access management in IoT. IEEE Internet Things Journal 5(2):1184–95.
  • ns-3.35. 2021. Accessed October 14, 2021. https://www.nsnam.org/releases/ns-3-35/
  • Olej, V. 2005. Design of the models of neural networks and the Takagi–Sugeno fuzzy inference system for prediction of the gross domestic product development. WSEAS Transactions on Systems 4 (4):314–19.
  • Osipov, A., E. Pleshakova, S. Gataullin, S. Korchagin, M. Ivanov, A. Finogeev, and V. Yadav. 2022. Deep learning method for recognition and classification of images from video recorders in difficult weather conditions. Sustainability 14 (4):10.3390/su14042420.
  • Ozyilmaz, K. R., and A. Yurdakul. 2019. Designing a blockchain-based iot with ethereum, swarm, and lora: The software solution to create high availability with minimal security risks. IEEE Consumer Electronics Magazine 8 (2):28–34. doi:10.1109/MCE.2018.2880806.
  • Panikkar, B., S. Nair, P. Brody, and V. Pureswaran. 2015. ADEPT: An Iot practitioner perspective. Draft Copy for Advance Review, IBM. Accessed November 17, 2022. http://static1.squarespace.com/static/55f73743e4b051cfcc0b02cf/55f73e5ee4b09b2bff5b2eca/55f73e72e4b09b2bff5b3267/1442266738638/IBM-ADEPT-Practictioner-Perspective-Pre-Publication-Draft-7-Jan-2015.pdf
  • Qiu, C., F. R. Yu, H. Yao, C. Jiang, F. Xu, and C. Zhao. 2018. Blockchain-based software-defined industrial internet of things: A dueling deep Q-learning approach. IEEE Internet Things Journal 6 (3):4627–39.
  • Rathore, S., B. W. Kwon, and J. H. Park. 2019. BlockSeciotnet: Blockchain based decentralized security architecture for IoT network. Journal of Network and Computer Applications 143:167–77.
  • Ren, W., Y. Sun, H. Luo, and M. Guizani. 2021. Siledger: A blockchain and ABE-based access control for applications in SDN-Iot networks. IEEE Transactions on Network and Service Management 18 (4):4406–19. doi:10.1109/TNSM.2021.3093002.
  • Rodrigues, B., T. Bocek, A. Lareida, D. Hausheer, S. Rafati, and B. Stiller. 2017. A blockchain-based architecture for collaborative DDoS mitigation with smart contracts. 11th IFIP WG 6.6 International Conference on Autonomous Infrastructure, Management, and Security, AIMS 2017, 2017 July 10–13, Zürich, Switzerland: Springer. vol. 1, pp. 16–29. doi:10.1007/978-3-319-60774-0_2.
  • Sarkar, C., A. U. N. SN, R. V. Prasad, A. Rahim, R. Neisse, and G. Baldini. 2015. DIAT: A scalable distributed architecture for IoT. IEEE Internet of Things Journal 2 (3):230–39.
  • Sharma, P. K., M.-Y. Chen, and J. H. Park. 2018. A software defined fog node based distributed blockchain cloud architecture for IoT. IEEE Access 6:115–24. doi:10.1109/ACCESS.2017.2757955.
  • Valdovinos, I. A., J. Arturo Pérez-Díaz, K.-K. Raymond Choo, and J. Felipe Botero. 2021. Emerging DDoS attack detection and mitigation strategies in software-defined networks: Taxonomy challenges and future directions. Journal of Network and Computer Applications 187:103093.
  • Velmurugadass, P., S. Dhanasekaran, S. Shasi Anand, and V. Vasudevan. 2021. Enhancing blockchain security in cloud computing with IoT environment using ECIES and cryptography hash algorithm. Materials Today: Proceedings Department of Computer Science and Engineering, Kalasalingam Academy of Research and Education, Krishnankoil, Tamil Nadu 626 126, India, vol. 37, pp. 2653–2659. doi:10.1016/j.matpr.2020.08.519.
  • Xu, L. 2020. Industrial information integration - an emerging subject in industrialization and informatization process. Journal of Industrial Information Integration 17:100128. doi:10.1016/j.jii.2020.100128.
  • Xu, Y., and A. Helal. 2016. Scalable cloud–sensor architecture for the internet of things. IEEE Internet of Things Journal 3 (3):285–98. doi:10.1109/JIOT.2015.2455555.
  • Xu, L. D., W. He, and S. Li. 2014. Internet of things in industries: A survey. IEEE Transactions on Industrial Electronics 10 (4):2233–43.
  • Yan, Q., and F. R. Yu. 2015. Distributed denial of service attacks in software-defined networking with cloud computing. IEEE Communications Magazine 53 (4):52–59. doi:10.1109/MCOM.2015.7081075.
  • Yazdinejad, A., R. M. Parizi, A. Dehghantanha, and K.K.R Choo, Blockchain-enabled authentication handover with efficient privacy protection in SDN-based 5G networks, IEEE Trans. Netw. Sci. Eng. 2019, doi:10.1109/TNSE.2019.2937481.
  • Yeganeh, S. H., A. Tootoonchian, and Y. Ganjali. 2013. On scalability of software-defined networking. IEEE Communications Magazine 51 (2):136–41.
  • Zaman, S., K. Alhazmi, M. A. Aseeri, M. Raisuddin Ahmed, M. S. K. Risala Tasin Khan, and M. Mahmud. 2021. Security threats and artificial intelligence based countermeasures for internet of things networks: A comprehensive survey. Access IEEE 9:94668–90.
  • Zhu, L., M. M. Karim, K. Sharif, C. Xu, F. Li, X. Du, and M. Guizani. 2021. SDN controllers. ACM Computing Surveys 53:1.