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Detecting anonymous attacks in wireless communication medium using adaptive grasshopper optimization algorithm
Institution:1. National Mobile Communications Research Laboratory, Southeast University, Nanjing 210096, China;2. Jiangsu Key Laboratory of Wireless Communications, Nanjing University of Posts and Telecommunications, Nanjing 210003, China;1. Faculty of Electrical and Electronics Engineering Technology, University Malaysia Pahang, Pahang, Malaysia;2. Center of Research in Applied Electronics, CRAE, University of Malaya, Kuala Lumpur, Malaysia;3. University of Science and Culture, Tehran, Iran;4. Faculty of Computing, University Malaysia Pahang, Pahang, Malaysia;5. Multimedia University, Malaysia;6. Military Technological College, Muscat, Oman;1. Centro Universitario del Norte, Universidad de Guadalajara, Colotlán, Jal. 46200, Mexico;2. Unidad de Neuroimagen, Instituto Nacional de Neurología y Neurocirugía “Manuel Velasco Suárez”, México City 14260, Mexico;3. Facultad de Estudios Superiores de Zaragoza, Universidad Nacional Autónoma de México, México City 09230, Mexico;4. Facultad de Psicología, Universidad Nacional Autónoma de México, México City 04510, Mexico;5. Facultad de Estudios Superiores de Iztacala, Universidad Nacional Autónoma de México, México City 54090, Mexico
Abstract:Intrusion Detection Systems (IDSs) is a system that monitors network traffic for suspicious activity and issues alert when such activity is revealed. Moreover, the existing IDSs-based methods are based on outdated attacks that unable to identify modern attacks or malicious trends. For this reason, in this study we developed a new multi-swarm adaptive grasshopper optimization algorithm to utilize adaptation mechanism in a group of swarms based on fuzzy logic to protect against sophisticated attacks. The proposed (MSAGOA) technique has the capability of global optimization and rapid convergence that are used to attain optimal feature subsets to identify attack types on IDS datasets. In the MSAGOA technique, learning engine as Extreme learning Machine, Naive Bayes, Random Forest and Decision Tree is applied as a fitness function to select the highly discriminating features and to maximize classification performance. Afterward, select the best classifier which works as a fitness function in our approach to measure the performance in terms of accuracy, detection rate, and false alarm rate. The simulations are performed on three IDS datasets such as NSL-KDD, AWID-ATK-R, and NGIDS-DS. The experimental results demonstrated that MSAGOA method has performed better and obtained high detection rate of 99.86%, accuracy of 99.89% in NSL-KDD and high detection rate of 98.73%, accuracy of 99.67% in AWID-ATK-R and detection rate of 89.50%, accuracy of 90.23% in NGIDS-DS. In addition, the performance is compared with several other existing techniques to show the efficacy of the proposed approach.
Keywords:Multi-swarm  Intrusion detection  Feature selection  Extreme learning machine
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