Intrusion detection system employing multi-level feed forward neural network along with firefly optimization (fmlf2n2)

被引:5
作者
Sai Rama Krishna K.V.S. [1 ]
Prakash B.B. [2 ]
机构
[1] Department of CSE, Vignan's Nirula Institute of Technology Science for Women, Peda Palakaluru, Guntur, Andhra Pradesh
[2] Department of CSE, Tirumala Engineering College, Jonnalagadda, Guntur
来源
Ingenierie des Systemes d'Information | 2019年 / 24卷 / 02期
关键词
Firefly Alg; Intrusion detection system; KDD info set; Neural network;
D O I
10.18280/isi.240202
中图分类号
学科分类号
摘要
Number of attacks as of late has immensely expanded because of the expansion in Internet exercises. This security issue has made the Intrusion Detection Systems (IDS) a noteworthy channel for data security. The IDS's are created to in the treatment of attacks in PC frameworks by making a database of the typical and unusual practices for the recognition of deviations from the ordinary amid dynamic interruptions. The issue of classification time is enormously diminished in the IDS through component choice. This paper is proposing the usage of IDS for the successful location of attacks. In view of this, the Firefly Algorithm (FA), another paired element determination calculation was proposed and executed. The FA chooses the ideal number of highlights from NSL dataset. Moreover, the FA was connected with multi-Targets relying upon the classification precision and the quantity of highlights in the meantime. This is a proficient framework for the discovery of attacks decrease of false alerts. The execution of the IDS in the location of attacks was improved by the proposed classification and highlight choice techniques. © 2019 International Information and Engineering Technology Association. All rights reserved.
引用
收藏
页码:139 / 145
页数:6
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