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Cognitive Radio Networks for Internet of Things

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Intelligent Sustainable Systems

Part of the book series: Lecture Notes in Networks and Systems ((LNNS,volume 213))

Abstract

The Internet of Things is a promising subject, both strategically and socially, of increasing technical and economic significance. The key feature of IoT is that Internet connectivity and powerful data collection capabilities are integrated with separate computers. The IoT meaning is about several devices and sensors, i.e. connections to the Internet. The IoT is a worldwide network of linked processors. Objects, however, are not always palpable for interconnection. According to many estimates, the effect of IoT on the Internet and on the economy will be really inspiring, with a large global economic impact in the coming years. IoT may establish interconnectivity for organisations by specific wireless networking technologies such as cost-effectiveness problems and remote interface accessibility, rendering wireless communications a feasible option. However, the IoT model argues that communication technology poses new obstacles as a number of heterogeneous systems can be interconnected, and one of the main chaos Cognitive Radio (CR) networks and the incorporation of CR into IoT will increase spectrum precision. This paper explores the choices for applying the cognitive radio network to IoT.

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Leena, K., Hiremath, S.G. (2022). Cognitive Radio Networks for Internet of Things. In: Raj, J.S., Palanisamy, R., Perikos, I., Shi, Y. (eds) Intelligent Sustainable Systems. Lecture Notes in Networks and Systems, vol 213. Springer, Singapore. https://doi.org/10.1007/978-981-16-2422-3_40

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