Automatic Building of a Powerful IDS for The Cloud Based on Deep Neural Network by Using a Novel Combination of Simulated Annealing Algorithm and Improved Self- Adaptive Genetic Algorithm

Z. Chiba, Moulay Seddiq El Kasmi Alaoui, N. Abghour, K. Moussaid
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引用次数: 10

Abstract

Cloud computing (CC) is the fastest-growing data hosting and computational technology that stands today as a satisfactory answer to the problem of data storage and computing. Thereby, most organizations are now migratingtheir services into the cloud due to its appealing features and its tangible advantages. Nevertheless, providing privacy and security to protect cloud assets and resources still a very challenging issue. To address the aboveissues, we propose a smart approach to construct automatically an efficient and effective anomaly network IDS based on Deep Neural Network, by using a novel hybrid optimization framework “ISAGASAA”. ISAGASAA framework combines our new self-adaptive heuristic search algorithm called “Improved Self-Adaptive Genetic Algorithm” (ISAGA) and Simulated Annealing Algorithm (SAA). Our approach consists of using ISAGASAA with the aim of seeking the optimal or near optimal combination of most pertinent values of the parametersincluded in building of DNN based IDS or impacting its performance, which guarantee high detection rate, high accuracy and low false alarm rate. The experimental results turn out the capability of our IDS to uncover intrusionswith high detection accuracy and low false alarm rate, and demonstrate its superiority in comparison with stateof-the-art methods.
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采用模拟退火算法和改进的自适应遗传算法相结合的深度神经网络自动构建强大的云入侵检测系统
云计算(CC)是增长最快的数据托管和计算技术,它是当今数据存储和计算问题的一个令人满意的答案。因此,由于云的吸引人的特性和切实的优势,大多数组织现在都将他们的服务迁移到云上。然而,提供隐私和安全性来保护云资产和资源仍然是一个非常具有挑战性的问题。针对上述问题,本文提出了一种基于深度神经网络的自动构建高效异常网络IDS的智能方法,该方法采用了一种新型的混合优化框架“ISAGASAA”。ISAGASAA框架结合了我们新的自适应启发式搜索算法“改进自适应遗传算法”(ISAGA)和模拟退火算法(SAA)。我们的方法包括使用ISAGASAA,目的是寻求基于DNN的IDS构建或影响其性能的参数中最相关值的最优或接近最优组合,从而保证高检测率,高精度和低虚警率。实验结果表明,该入侵检测系统具有较高的检测精度和较低的误报率,与现有的入侵检测方法相比具有一定的优越性。
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