Sustainable Data-Driven Secured Optimization Using Dynamic Programming for Green Internet of Things

Sensors (Basel). 2022 Oct 17;22(20):7876. doi: 10.3390/s22207876.

Abstract

The development of smart applications has benefited greatly from the expansion of wireless technologies. A range of tasks are performed, and end devices are made capable of communicating with one another with the support of artificial intelligence technology. The Internet of Things (IoT) increases the efficiency of communication networks due to its low costs and simple management. However, it has been demonstrated that many systems still need an intelligent strategy for green computing. Establishing reliable connectivity in Green-IoT (G-IoT) networks is another key research challenge. With the integration of edge computing, this study provides a Sustainable Data-driven Secured optimization model (SDS-GIoT) that uses dynamic programming to provide enhanced learning capabilities. First, the proposed approach examines multi-variable functions and delivers graph-based link predictions to locate the optimal nodes for edge networks. Moreover, it identifies a sub-path in multistage to continue data transfer if a route is unavailable due to certain communication circumstances. Second, while applying security, edge computing provides offloading services that lower the amount of processing power needed for low-constraint nodes. Finally, the SDS-GIoT model is verified with various experiments, and the performance results demonstrate its significance for a sustainable environment against existing solutions.

Keywords: Internet of Things; blockchain; edge computing; green process; optimization; sustainable computing; technological development.

MeSH terms

  • Artificial Intelligence
  • Internet of Things*
  • Wireless Technology

Grants and funding

This work was supported by the research SEED project “Mobile edge computing framework with secured machine learning enabled big data analytics” Prince Sultan University, Riyadh Saudi Arabia, (SEED-CCIS-2022{108}) under Artificial Intelligence and Data Analytics Research Lab. CCIS. The authors are thankful for the support.