4.6 Article

Artificial Intelligence Algorithm-Based Economic Denial of Sustainability Attack Detection Systems: Cloud Computing Environments

Journal

SENSORS
Volume 22, Issue 13, Pages -

Publisher

MDPI
DOI: 10.3390/s22134685

Keywords

machine learning approaches; deep learning approaches; economic denial of sustainability attack; cloud computing; intrusion detection system

Funding

  1. Deanship of Scientific Research at King Faisal University [NA000106]

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Cloud computing is the most cost-effective means of providing online IT services, but it is also prone to new flaws such as economic denial of sustainability attacks (EDoS), which exploit the pay-per-use paradigm to generate unanticipated usage charges. To mitigate EDoS attacks, this research presents an effective approach using machine and deep learning algorithms. The proposed algorithms outperformed existing systems in terms of accuracy and are essential for improving cloud computing service provider security.
Cloud computing is currently the most cost-effective means of providing commercial and consumer IT services online. However, it is prone to new flaws. An economic denial of sustainability attack (EDoS) specifically leverages the pay-per-use paradigm in building up resource demands over time, culminating in unanticipated usage charges to the cloud customer. We present an effective approach to mitigating EDoS attacks in cloud computing. To mitigate such distributed attacks, methods for detecting them on different cloud computing smart grids have been suggested. These include hard-threshold, machine, and deep learning, support vector machine (SVM), K-nearest neighbors (KNN), random forest (RF) tree algorithms, namely convolutional neural network (CNN), and long short-term memory (LSTM). These algorithms have greater accuracies and lower false alarm rates and are essential for improving the cloud computing service provider security system. The dataset of nine injection attacks for testing machine and deep learning algorithms was obtained from the Cyber Range Lab at the University of New South Wales (UNSW), Canberra. The experiments were conducted in two categories: binary classification, which included normal and attack datasets, and multi-classification, which included nine classes of attack data. The results of the proposed algorithms showed that the RF approach achieved accuracy of 98% with binary classification, whereas the SVM model achieved accuracy of 97.54% with multi-classification. Moreover, statistical analyses, such as mean square error (MSE), Pearson correlation coefficient (R), and the root mean square error (RMSE), were applied in evaluating the prediction errors between the input data and the prediction values from different machine and deep learning algorithms. The RF tree algorithm achieved a very low prediction level (MSE = 0.01465) and a correlation R-2 (R squared) level of 92.02% with the binary classification dataset, whereas the algorithm attained an R-2 level of 89.35% with a multi-classification dataset. The findings of the proposed system were compared with different existing EDoS attack detection systems. The proposed attack mitigation algorithms, which were developed based on artificial intelligence, outperformed the few existing systems. The goal of this research is to enable the detection and effective mitigation of EDoS attacks.

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