Abstract
AbstractRapid technological advances have made daily life easier and more convenient in recent years. As an emerging technology, the Internet of Things (IoT) facilitates interactions between physical devices. With the advent of sensors and features on everyday items, they have become intelligent entities able to perform multiple functions as services. IoT enables routine activities to become more intelligent, deeper communication, and processes more efficient. In the dynamic landscape of the IoT, effective service discovery is key to optimizing user experiences. A Quality of Service (QoS)-aware service discovery technique is proposed in this paper to address this challenge. Through whale optimization and genetic algorithms, our method aims to streamline decision-making processes in IoT service selection. The bio-inspired optimization techniques employed in our approach facilitate the discovery of services more efficiently than traditional methods. Our results demonstrate superior performance regarding reduced data access time, optimized energy utilization, and cost-effectiveness through comprehensive simulations.
Publisher
Springer Science and Business Media LLC
Reference28 articles.
1. Pourghebleh B, Navimipour NJ (2017) Data aggregation mechanisms in the Internet of things: A systematic review of the literature and recommendations for future research. J Netw Comput Appl 97:23–34
2. AbdElaziz M, Al-qaness MA, Dahou A, Ibrahim RA, Abd El-Latif AA (2023) Intrusion detection approach for cloud and IoT environments using deep learning and Capuchin Search Algorithm. Adv Eng Softw 176(103402):2023
3. Pourghebleh B, Hekmati N, Davoudnia Z, Sadeghi M (2022) A roadmap towards energy-efficient data fusion methods in the Internet of Things. Concurr Comput Pract Exp 34:e6959
4. Mohseni M, Amirghafouri F and Pourghebleh B (2022) CEDAR: A cluster-based energy-aware data aggregation routing protocol in the internet of things using capuchin search algorithm and fuzzy logic. Peer Peer Netw Appl 16:1–21
5. Abualigah L, Elaziz MA, Khodadadi N, Forestiero A, Jia H and Gandomi AH (2022) Aquila Optimizer Based PSO Swarm Intelligence for IoT Task Scheduling Application in Cloud Computing, In Integrating Meta-Heuristics and Machine Learning for Real-World Optimization Problems: Springer, Berlin/Heidelberg, pp. 481–497