基于深度强化神经网络工作算法的连贯 Salp 蜂群优化,用于保护移动云系统安全

Osamah Ibrahim Khalaf, D. Anand, G. Abdulsahib, G. R. Chandra
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引用次数: 0

摘要

保护移动云计算系统免受网络威胁是当今最关键、最棘手的问题。由于互联网技术的快速发展,确保移动云计算系统免受网络入侵变得更加重要。在现有著作中,针对移动云安全开发了各种入侵检测系统(IDS)框架,这些框架主要侧重于利用优化和分类算法来设计安全框架。然而,现有工作面临的一些挑战包括系统模型理解复杂、收敛速度低、无法处理复杂数据集以及时间成本高。因此,本研究工作旨在设计和开发一种计算效率高的 IDS 框架,以提高移动云系统的安全性。在这里,我们首先采用了一种内在附带规范化(InCoN)算法,以生成质量更高的数据集。然后,采用相干萨尔普群优化(CSSO)技术来选择用于入侵预测和分类的最相关特征。最后,采用深度强化神经网络(DRNN)机制,通过适当训练和测试最佳特征来准确检测入侵类型。在验证过程中,利用各种服务质量参数对 CSSO-DRNN 技术的结果进行评估和验证。
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A coherent salp swarm optimization based deep reinforced neuralnet work algorithm for securing the mobile cloud systems
Protecting the mobile cloud computing system from the cyber-threats is the most crucial and demanding problems in recent days. Due to the rapid growth of internet technology, it is more essential to ensure secure the mobile cloud systems against the network intrusions. In the existing works, various intrusion detection system (IDS) frameworks have been developed for mobile cloud security, which are mainly focusing on utilizing the optimization and classification algorithms for designing the security frameworks. Still, some of the challenges associated to the existing works are complex to understand the system model, educed convergence rate, inability to handle complex datasets, and high time cost. Therefore, this research work motivates to design and develop a computationally efficient IDS framework for improving the mobile cloud systems security. Here, an intrinsic collateral normalization (InCoN) algorithm is implemented at first for generating the quality improved datasets. Consequently, the coherent salp swarm optimization (CSSO) technique is deployed for selecting the most relevant features used for intrusion prediction and categorization. Finally, the deep reinforced neural network (DRNN) mechanism is implemented for accurately detecting the type of intrusion by properly training and testing the optimal features. During validation, the findings of the CSSO-DRNN technique are assessed and verified by utilizing various QoS parameters.
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