Journal of Intelligent Systems and Internet of Things

Journal DOI

https://doi.org/10.54216/JISIoT

Submit Your Paper

2690-6791ISSN (Online) 2769-786XISSN (Print)

Volume 0 , Issue 2 , PP: 78-89, 2019 | Cite this article as | XML | Html | PDF | Full Length Article

Intelligent Differential Evolution based Feature Selection with Deep Neural Network for Intrusion Detection in Wireless Sensor Networks

Ibrahim M. EL-Hasnony 1 *

  • 1 Faculty of Computers and Information, Mansoura University, Egypt - (ibrahimhesin2005@mans.edu.eg)
  • Doi: https://doi.org/10.54216/JISIoT.000204

    Abstract

    Wireless sensor network (WSN) is mainly utilized for data gathering and surveillance applications. As WSN is majorly deployed in harsh and hostile environments, security remains a critical issue which needs to be resolved. An intrusion detection system (IDS) is one of the proficient ways used to determine the presence of abnormal behaviors (i.e. intrusions) in the network. Earlier studies have focused on the design of machine learning (ML) and deep learning (ML) models to design IDS. With this motivation, this paper presents an intelligent differential evolution based feature selection with deep neural network (IDEFS-DNN) for intrusion detection in WSN. The proposed IDEFS-DNN model aims to select optimum set of features and classify the intrusions in the network. In addition, the IDEFS-DNN technique involves the design of IDEFS technique to choose a subset of optimum features. Moreover, the chosen features are fed into the DNN technique for classification purposes. The usage of IDEFS technique helps to reduce the complexity and increase the classifier outcome. In order to portray the improved performance of the IDEFS-DNN technique, wide ranging experiments take place on benchmark datasets and the results are inspected under varying aspects. The simulation results ensured the enhanced intrusion detection performance of the IDEFS-DNN technique over the other IDS models.

    Keywords :

    Security, WSN, Intrusion detection, Deep neural network, Feature selection, Metaheur

    References

    [1]      Almomani, I., Al-Kasasbeh, B. and Al-Akhras, M., 2016. WSN-DS: A dataset for intrusion detection systems in wireless sensor networks. Journal of Sensors, 2016. 

    [2]      Can, O. and Sahingoz, O.K., 2015, May. A survey of intrusion detection systems in wireless sensor networks. In 2015 6th international conference on modeling, simulation, and applied optimization (ICMSAO) (pp. 1-6). IEEE.

    [3]      Ioannou, C., Vassiliou, V. and Sergiou, C., 2017, May. An intrusion detection system for wireless sensor networks. In 2017 24th International Conference on Telecommunications (ICT) (pp. 1-5). IEEE.

    [4]      McDermott, C.D. and Petrovski, A., 2017. Investigation of computational intelligence techniques for intrusion detection in wireless sensor networks. International journal of computer networks and communications, 9(4).

    [5]      Abdullah, M.A., Alsolami, B.M., Alyahya, H.M. and Alotibi, M.H., 2018. Retracted: Intrusion detection of DoS attacks in WSNs using classification techniuqes. Journal of fundamental and Applied Sciences, 10(4S), pp.298-303.

    [6]      Chandre, P.R., Mahalle, P.N. and Shinde, G.R., 2018, November. Machine learning based novel approach for intrusion detection and prevention system: A tool based verification. In 2018 IEEE Global Conference on Wireless Computing and Networking (GCWCN) (pp. 135-140). IEEE.

    [7]      Gara, F., Saad, L.B. and Ayed, R.B., 2017, June. An intrusion detection system for selective forwarding attack in IPv6-based mobile WSNs. In 2017 13th International Wireless Communications and Mobile Computing Conference (IWCMC) (pp. 276-281). IEEE.

    [8]      Sandhya, R. and Sengottaiyan, N., 2017. Dynamic ch selection and intrusion detection in wsn using reinforced weighted approximation based adaptive seech: An optimized routing framework. International Journal of Applied Engineering Research, 12(20), pp.9315-9326.

    [9]      Mekelleche, F. and OuldBouamam, B., 2018, April. Monitoring of Wireless Sensor Networks: Analysis of Intrusion Detection Systems. In 2018 5th International Conference on Control, Decision and Information Technologies (CoDIT) (pp. 421-426). IEEE.

    [10]   Sahoo, K.C. and Pati, U.C., 2017, May. IoT based intrusion detection system using PIR sensor. In 2017 2nd IEEE International Conference on Recent Trends in Electronics, Information & Communication Technology (RTEICT) (pp. 1641-1645). IEEE.

    [11]   Sajjad, S.M., Bouk, S.H. and Yousaf, M., 2015. Neighbor node trust based intrusion detection system for WSN. Procedia Computer Science, 63, pp.183-188.

    [12]   Sun, Z., Xu, Y., Liang, G. and Zhou, Z., 2017. An intrusion detection model for wireless sensor networks with an improved V-detector algorithm. IEEE sensors journal, 18(5), pp.1971-1984.

    [13]   Mehmood, A., Khanan, A., Umar, M.M., Abdullah, S., Ariffin, K.A.Z. and Song, H., 2017. Secure knowledge and cluster-based intrusion detection mechanism for smart wireless sensor networks. IEEE Access, 6, pp.5688-5694.

    [14]   Zhang, Z., Zhu, H., Luo, S., Xin, Y. and Liu, X., 2017. Intrusion detection based on state context and hierarchical trust in wireless sensor networks. IEEE Access, 5, pp.12088-12102.

    [15]   Ioannou, C. and Vassiliou, V., 2018, October. An intrusion detection system for constrained WSN and IoT nodes based on binary logistic regression. In Proceedings of the 21st ACM International Conference on Modeling, Analysis and Simulation of Wireless and Mobile Systems (pp. 259-263).

    [16]   Sikdar, U.K., Ekbal, A. and Saha, S., 2012, December. Differential evolution based feature selection and classifier ensemble for named entity recognition. In Proceedings of COLING 2012 (pp. 2475-2490).

    [17]   Hossen, T., Nair, A.S., Chinnathambi, R.A. and Ranganathan, P., 2018, September. Residential load forecasting using deep neural networks (DNN). In 2018 North American Power Symposium (NAPS) (pp. 1-5). IEEE.

    Cite This Article As :
    M., Ibrahim. Intelligent Differential Evolution based Feature Selection with Deep Neural Network for Intrusion Detection in Wireless Sensor Networks. Journal of Intelligent Systems and Internet of Things, vol. , no. , 2019, pp. 78-89. DOI: https://doi.org/10.54216/JISIoT.000204
    M., I. (2019). Intelligent Differential Evolution based Feature Selection with Deep Neural Network for Intrusion Detection in Wireless Sensor Networks. Journal of Intelligent Systems and Internet of Things, (), 78-89. DOI: https://doi.org/10.54216/JISIoT.000204
    M., Ibrahim. Intelligent Differential Evolution based Feature Selection with Deep Neural Network for Intrusion Detection in Wireless Sensor Networks. Journal of Intelligent Systems and Internet of Things , no. (2019): 78-89. DOI: https://doi.org/10.54216/JISIoT.000204
    M., I. (2019) . Intelligent Differential Evolution based Feature Selection with Deep Neural Network for Intrusion Detection in Wireless Sensor Networks. Journal of Intelligent Systems and Internet of Things , () , 78-89 . DOI: https://doi.org/10.54216/JISIoT.000204
    M. I. [2019]. Intelligent Differential Evolution based Feature Selection with Deep Neural Network for Intrusion Detection in Wireless Sensor Networks. Journal of Intelligent Systems and Internet of Things. (): 78-89. DOI: https://doi.org/10.54216/JISIoT.000204
    M., I. "Intelligent Differential Evolution based Feature Selection with Deep Neural Network for Intrusion Detection in Wireless Sensor Networks," Journal of Intelligent Systems and Internet of Things, vol. , no. , pp. 78-89, 2019. DOI: https://doi.org/10.54216/JISIoT.000204