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Integrating Edge Computing and AI for Energy-Efficient Data Processing in Wireless Sensor Network

Integrating Edge Computing and AI for Energy-Efficient Data Processing in Wireless Sensor Network
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Author(s): Ramiz Salama (Department of Computer Engineering, Near East University Nicosia, Mersin, Turkey), Hitesh Mohapatra (School of Computer Engineering, KIIT University (Deemed), Bhubaneswar, India)and Fadi Al-Turjman (Artificial Intelligence and Software Engineering Departments, Near East University Nicosia, Mersin, Turkey)
Copyright: 2025
Pages: 24
Source title: Integrating Intelligent Control Systems With Sensor Technologies
Source Author(s)/Editor(s): Abdulsattar Abdullah Hamad (University of Samarra, Iraq), Sudan Jha (Kathmandu University, Nepal)and Khalid Al-Badri (University of Samarra, Iraq)
DOI: 10.4018/979-8-3373-0330-7.ch002

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Abstract

Wireless sensor networks are critical for applications like industrial automation, smart cities, healthcare, and environmental monitoring. However, challenges arise with energy consumption, latency, and bandwidth due to the large data generated. Integrating Edge Computing and AI offers a solution by enabling efficient data analysis with lower energy consumption. Edge computing brings processing closer to data sources, allowing real-time data analysis without relying on cloud servers, reducing energy usage and extending network lifespan. AI techniques, such as machine learning and deep learning, enhance data filtering, anomaly detection, and predictive maintenance at the edge. This approach boosts WSN scalability and responsiveness by managing large data efficiently. This study examines WSN architectures with edge computing and AI, focusing on key frameworks, technologies, and energy-saving methods. Through case studies, it demonstrates how this integration enhances performance, data efficiency, and supports intelligent decision-making in various WSN deployments.

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