Design and Optimization Of Wireless Sensor Networks For IoT
Abstract
Wireless Sensor Networks (WSN) are an emerging multidisciplinary intersection of cutting-edge research fields, and their advantages in terms of freedom of formation, high signal-to-noise ratio, high strength, and unattended, which makes WSN have good prospects for application in the field of Internet of Things (IoT). Considering all the benefits that WSN offers, this paper reviews the development history of wireless sensor networks Internet of Things (WSN-IoT), analyzes the technologies used by sensors in the IoT, and illustrates the future developing patterns and remaining challenges, in conjunction with the leading technologies in the perception layer of the current network of things industry.
Keywords:
Wireless sensor networks, Internet of things, Sensor technologies, Perception layer, Network development, Future trends, Challenges, Signal-to-noise ratio, Unattended systems, Smart networksReferences
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