Energy Efficient Embedded System for IOT Applications
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As wireless sensor networks have become more widespread, the monitoring capabilities of these technologies now encompass many areas of our daily lives. Their use not only enables the collection but also the comprehension, assessment, and ultimate inference of environmental data obtained from natural sources. Increasingly, sensors connected to the Internet of things (IoT) have increased their growth rate. By allowing detectors and selector devices to communicate with each other through perfect connectivity, the Internet of effects has become the foundation of our contemporary society. The evolution of IoT is leading to the creation of smarter, more efficient, and simpler systems. IoT systems encompass smart cities, smart homes, connected buildings, wearable sensors, artificial intelligence, and intelligent retail systems, among other things more. Several experiments have been undertaken to design IoT-based gadgets. Some of the notable implementations include intelligent ventilation, automatic indoor lighting and decisions based on tone.
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Energy Efficient Embedded System For IOT Applications -HBRP Publication.pdf
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References
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