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Software-defined networking (SDN) is a transformative approach for managing modern network architectures, particularly in Internet-of-Things (IoT) applications. However, ensuring the optimal SDN performance and security often needs a robust sensitivity analysis (SA). To complement existing SA methods, this study proposes a new SA framework that integrates design of experiments (DOE) and machine-learning (ML) techniques. Although existing SA methods have been shown to be effective and scalable, most of these methods have yet to hybridize anomaly detection and classification (ADC) and data augmentation into a single, unified framework. To fill this gap, a targeted application of well-established existing techniques is proposed. This is achieved by hybridizing these existing techniques to undertake a more robust SA of a typified SDN-reliant IoT network. The proposed hybrid framework combines Latin hypercube sampling (LHS)-based
Details
Design of experiments;
Classification;
Internet of Things;
Network topologies;
Sensitivity analysis;
Artificial neural networks;
Optimization;
Generative adversarial networks;
Hypercubes;
Machine learning;
Robustness;
Business metrics;
Parameter identification;
Data augmentation;
Performance measurement;
Artificial intelligence;
Neural networks;
Software-defined networking;
Denial of service attacks;
Quality of service;
Regression analysis;
Anomalies;
Real time;
Cybersecurity;
Synthetic data;
Latin hypercube sampling
; Akinsolu, Mobayode O 2
; Wilson, Sakpere 1
; Sangodoyin, Abimbola O 3
; Uyoata, Uyoata E 4
; Owusu-Nyarko Isaac 5
; Akinsolu, Folahanmi T 1
1 Faculty of Natural and Applied Sciences, Lead City University, Ibadan 200255, Oyo State, Nigeria; [email protected] (C.E.); [email protected] (W.S.); [email protected] (A.O.S.); [email protected] (F.T.A.)
2 Faculty of Natural and Applied Sciences, Lead City University, Ibadan 200255, Oyo State, Nigeria; [email protected] (C.E.); [email protected] (W.S.); [email protected] (A.O.S.); [email protected] (F.T.A.), Faculty of Arts, Computing, and Engineering, Wrexham University, Wrexham LL11 2AW, UK
3 Faculty of Natural and Applied Sciences, Lead City University, Ibadan 200255, Oyo State, Nigeria; [email protected] (C.E.); [email protected] (W.S.); [email protected] (A.O.S.); [email protected] (F.T.A.), School of Engineering and Physical Sciences, University of Lincoln, Lincoln LN6 7TS, UK
4 Department of Electrical and Electronics Engineering, Modibbo Adama University, Yola 640231, Adamawa State, Nigeria; [email protected]
5 Department of Electrical and Electronic Engineering, Regional Maritime University, Accra P.O. GP 1115, Ghana; [email protected]