Interactive IoT Cloud Deep Learning Model for Research Development in Universities for the Educational Think Tank

Main Article Content

Yu Jiang
Mingwei Liang

Abstract

The construction of university education think tanks using the interactive service platform enables the sharing of research resources, encourages cross-disciplinary research collaboration, and fosters innovation in education. It also helps to build a stronger relationship between academia and industry by enabling practitioners to participate in research activities. The Internet of Things (IoT) can be used to collect and analyze data from various sources, including sensors and other connected devices, to provide insights into education-related issues. The integration of these technologies in university education thinks tanks can help to enhance the efficiency and effectiveness of research, decision-making, and collaboration processes. Hence, this paper constructed an Interactive IoT Cloud Computing Platform (IIoTCC). With IIoTCC model the innovative idea about research and other ideas are collected and stored in a Cloud environment. Within the environment, information collected is stored in the stacked architecture model with the voting-based model. Through the stacked model, information is processed and evaluated for academic activities. The IoT environment is implemented through IIoTCC for the information process in a deep learning environment for academic-related issues. Simulation analysis expressed that IIoTCC model achieves a higher accuracy rate of 99.34% which is significantly higher than conventional classifiers.

Article Details

How to Cite
Jiang, Y. ., & Liang, M. . (2023). Interactive IoT Cloud Deep Learning Model for Research Development in Universities for the Educational Think Tank. International Journal on Recent and Innovation Trends in Computing and Communication, 11(6s), 152–163. https://doi.org/10.17762/ijritcc.v11i6s.6818
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Articles

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