In recent years cybersecurity has become a major concern in adaptation of smart applications. Specially, in smart homes where a large number of IoT devices are used having a secure and trusted mechanisms can provide peace of mind for users. Accurate detection of cyber attacks is crucial, however precise identification of the type of attacks plays a huge role if devising the countermeasure for protecting the system. Artificial Neural Networks (ANN) have provided promising results for detecting any security attacks for smart applications. However, due to complex nature of the model used for this technique it is not easy for normal users to trust ANN based security solutions. Also, selection of right hyperparameters for ANN architecture plays a crucial role in the accurate detection of security attacks, especially when it come to identifying the subcategories of attacks. In this paper, we propose a model that considers both the issues of explainability of ANN model and the hyperparameter selection for this approach to be easily trusted and adapted by users of smart home applications. Also, our approach considers a subset of the dataset for optimal selection of hyperparamters to reduce the overhead of the process of ANN architecture design. Distinctively this paper focuses on configuration, performance and evaluation of ANN architecture for identification of five categorical attacks and nine subcategorical attacks. Using a very recent IoT dataset our approach showed high performance for intrusion detection with 99.9%, 99.7%, and 97.7% accuracy for Binary, Category, and Subcategory level classification of attacks.
翻译:近些年来,网络安全已成为调整智能应用过程中一个主要关切问题。特别是,在智能家庭,使用大量IOT装置的智能家庭,拥有安全和可信赖的机制,能够让用户心平气和。准确发现网络攻击至关重要,但准确识别攻击类型如果设计保护系统的反措施,就具有巨大作用。人工神经网络(ANN)为发现任何智能应用的安全攻击提供了有希望的结果。然而,由于用于这一技术的模型性质复杂,正常用户很难相信ANNE安全解决方案。此外,为ANN架构选择正确的超参数在准确发现安全攻击方面发挥着关键作用,特别是在确定攻击的子类别时。在本文件中,我们提出了一个模式,既考虑ANN模型的解释性问题,又考虑为这一方法选择的超参数,以便由智能家庭应用程序的用户容易信任和调整。此外,我们的方法是一套数据集,用于最佳选择超参数,用以减少ANNNE安全攻击的顶部,99攻击的顶部和99 %的直径直径攻击过程,以及使用我们99 %的直径搜索结构。