一种检测电网中各种拒绝服务攻击的特征集方法

Donghwi Lee, Young-Dae Kim, Woo-Bin Park, Joon-Seok Kim, Seung-Ho Kang
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引用次数: 0

摘要

基于人工神经网络等机器学习方法的网络入侵检测系统在准确性和效率上都非常依赖于所选择的特征。然而,从通常使用的众多特征中选择最优的特征组合来检测网络入侵需要大量的计算资源。在本文中,我们处理了一个最优特征选择问题,以确定NSL-KDD数据提供的6种拒绝服务攻击和正常使用。提出了一种最优特征选择算法。该算法是在求解优化问题的一种具有代表性的元启发式算法——多起点局部搜索算法的基础上提出的。为了评估我们提出的算法的性能,与所有41个特征用于NSL-KDD数据的案例进行了比较。此外,对三种知名的机器学习方法(多层感知器)进行了比较。,贝叶斯分类器和支持向量机)
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A Method to Find Feature Set for Detecting Various Denial Service Attacks in Power Grid
Network intrusion detection system based on machine learning method such as artificial neural network is quite dependent on the selected features in terms of accuracy and efficiency. Nevertheless, choosing the optimal combination of features, which guarantees accuracy and efficienty, from generally used many features to detect network intrusion requires extensive computing resources. In this paper, we deal with a optimal feature selection problem to determine 6 denial service attacks and normal usage provided by NSL-KDD data. We propose a optimal feature selection algorithm. Proposed algorithm is based on the multi-start local search algorithm, one of representative meta-heuristic algorithm for solving optimization problem. In order to evaluate the performance of our proposed algorithm, comparison with a case of all 41 features used against NSL-KDD data is conducted. In addtion, comparisons between 3 well-known machine learning methods (multi-layer perceptron., Bayes classifier, and Support vector machine) are performed
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