Please use this identifier to cite or link to this item: http://bura.brunel.ac.uk/handle/2438/22890
Title: Smart IoT Network Based Convolutional Recurrent Neural Network with Element-Wise Prediction System
Authors: Al-Jamali, NAS
Al-Raweshidy, HS
Keywords: deep learning;intelligent-IoT;element-wise attention gate;quality of service
Issue Date: 24-Mar-2021
Publisher: IEEE
Citation: Al-Jamali, N.A.S. and Al-Raweshidy, H.S. (2021) 'Smart IoT Network Based Convolutional Recurrent Neural Network With Element-Wise Prediction System,' IEEE Access, 9, pp. 47864-47874. doi: 10.1109/ACCESS.2021.3068610.
Abstract: © Copyright 2021, The Author(s). An Intelligent Internet of Things network based on an Artificial Intelligent System, can substantially control and reduce the congestion effects in the network. In this paper, an artificial intelligent system is proposed for eliminating the congestion effects in traffic load in an Intelligent Internet of Things network based on a deep learning Convolutional Recurrent Neural Network with a modified Element-wise Attention Gate. The invisible layer of the modified Element-wise Attention Gate structure has self-feedback to increase its long short-term memory. The artificial intelligent system is implemented for next step ahead traffic estimation and clustering the network. In the proposed architecture, each sensing node is adaptive and able to change its affiliation with other clusters based on a deep learning modified Element-wise Attention Gate. The modified Element-wise Attention Gate has the ability to handle the buffer capacity in all the network, thereby enriching the Quality of Service. A deep learning modified training algorithm is proposed to learn the artificial intelligent system allowing the neurons to have greater concentration ability. The simulation results demonstrate that the Root Mean Square error is minimized by 37.14% when using modified Element-wise Attention Gate when compared with a Deep Learning Recurrent Neural Network. Also, the Quality of Service of the network is improved, for example, the network lifetime is enhanced by 12.7% more than with Deep Learning Recurrent Neural Network.
URI: https://bura.brunel.ac.uk/handle/2438/22890
DOI: https://doi.org/10.1109/ACCESS.2021.3068610
Appears in Collections:Dept of Electronic and Electrical Engineering Research Papers

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