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Machine learning for smart environments in B5G networks: Connectivity and QoS
SH Alsamhi, FA Almalki, H Al-Dois… - Computational …, 2021 - Wiley Online Library
The number of Internet of Things (IoT) devices to be connected via the Internet is
overgrowing. The heterogeneity and complexity of the IoT in terms of dynamism and …
overgrowing. The heterogeneity and complexity of the IoT in terms of dynamism and …
Adaptive neural network backstep** control of fractional-order nonlinear systems with actuator faults
Backstep** control for fractional-order nonlinear systems (FONSs) requires the analytic
calculation of fractional derivatives of certain complicated stabilizing functions, which …
calculation of fractional derivatives of certain complicated stabilizing functions, which …
Composite learning adaptive dynamic surface control of fractional-order nonlinear systems
Adaptive dynamic surface control (ADSC) is effective for solving the complexity problem in
adaptive backstep** control of integer-order nonlinear systems. This article focuses on the …
adaptive backstep** control of integer-order nonlinear systems. This article focuses on the …
Bipartite consensus control for fractional-order nonlinear multi-agent systems: An output constraint approach
Bipartite consensus of multiple fractional-order nonlinear systems with output constraints is
assessed under signed graph. The agents' model is completely unknown with high-order …
assessed under signed graph. The agents' model is completely unknown with high-order …
Adaptive fuzzy control for a class of unknown fractional-order neural networks subject to input nonlinearities and dead-zones
H Liu, S Li, H Wang, Y Sun - Information Sciences, 2018 - Elsevier
This paper presents an adaptive fuzzy control (AFC) for uncertain fractional-order neural
networks (FONNs) with input nonlinearities and unmodeled dynamics. System uncertainties …
networks (FONNs) with input nonlinearities and unmodeled dynamics. System uncertainties …
An optimized approach for prostate image segmentation using K‐Means clustering algorithm with elbow method
R Sammouda, A El-Zaart - Computational Intelligence and …, 2021 - Wiley Online Library
Prostate cancer disease is one of the common types that cause men's prostate damage all
over the world. Prostate‐specific membrane antigen (PSMA) expressed by type‐II is an …
over the world. Prostate‐specific membrane antigen (PSMA) expressed by type‐II is an …
A novel image encryption technique based on mobius transformation
The nonlinear transformation concedes as S‐box which is responsible for the certainty of
contemporary block ciphers. Many kinds of S‐boxes are planned by various authors in the …
contemporary block ciphers. Many kinds of S‐boxes are planned by various authors in the …
Adaptive fault-tolerant control for a class of nonstrict-feedback nonlinear systems with unmodeled dynamics and dead-zone output using multi-dimensional taylor …
M Kharrat - Nonlinear Dynamics, 2024 - Springer
This paper presents an adaptive fault-tolerant control method for nonstrict-feedback
nonlinear systems with unmodeled dynamics and output dead-zone in the presence of …
nonlinear systems with unmodeled dynamics and output dead-zone in the presence of …
Study of triangular fuzzy hybrid nanofluids on the natural convection flow and heat transfer between two vertical plates
M Nadeem, A Elmoasry, I Siddique… - Computational …, 2021 - Wiley Online Library
The prime objective of the current study is to examine the effects of third‐grade hybrid
nanofluid with natural convection utilizing the ferro‐particle (Fe3O4) and titanium dioxide …
nanofluid with natural convection utilizing the ferro‐particle (Fe3O4) and titanium dioxide …
Fractional-order echo state network backstep** control of fractional-order nonlinear systems
Classical backstep** control of fractional-order nonlinear systems (FONSs) needs to
calculate fractional derivatives of virtual control inputs recursively, which usually results in …
calculate fractional derivatives of virtual control inputs recursively, which usually results in …