Hybrid Grasshopper Optimization and Bat Algorithm based DBN for Intrusion Detection in Cloud

Rama Krishna, Meher
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引用次数: 7

Abstract

: Cloud computing is vulnerable to accessible Information Technology (IT) attacks, as it expands as well as exploits conventional OS, IT infrastructure as well as applications. Nevertheless, the cloud computing environment occurs several security problems in recognizing the anomalous network behaviors with respect to the existing threats. An effectual Intrusion Detection System (IDS) called a hybrid Grasshopper Optimization (GSO) algorithm with Bat Algorithm (BA)-based DBN is developed to identify suspicious intrusions in cloud environments in order to solve security problems. By exploiting the fitness function the optimal solution to detect the intrusion is shown that recognizes the minimum error value as the optimal solution. Moreover, using adopted optimization approach is used to tune the weights optimally to produce an effective and best solution to detect the intruders. Nevertheless, the adopted optimization model-based Deep Belief Network (DBN) attained superior performance regarding the accuracy, sensitivity, as well as specificity by exploiting the BoT-IoT dataset.
基于混合Grasshopper优化和Bat算法的云环境下DBN入侵检测
云计算很容易受到信息技术(IT)攻击,因为它扩展和利用传统的操作系统、IT基础设施和应用程序。然而,在云计算环境中,针对现有的威胁,在识别网络异常行为时出现了一些安全问题。为了解决云环境中的安全问题,提出了一种有效的入侵检测系统,即混合Grasshopper Optimization (GSO)算法和基于Bat算法(BA)的DBN算法。利用适应度函数,给出了识别最小误差值为最优解的入侵检测的最优解。此外,采用优化方法对权重进行最优调整,以产生有效的最佳解决方案来检测入侵者。然而,所采用的基于优化模型的深度信念网络(DBN)通过利用BoT-IoT数据集,在准确性、灵敏度和特异性方面都取得了更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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