Smart environments such as smart homes and industrial automation have been transformed by the rapid developments in internet of things (IoT) devices and systems. However, the widespread use of these devices poses significant difficulties, particularly in settings with limited energy resources. Due to the significant energy consumption and communication overhead associated with delivering huge amounts of data, traditional machine learning algorithms which rely on centralized cloud servers for training are not always suitable.
Federated learning is a decentralized strategy that enables collaborative machine learning model training while keeping the data local on edge devices. It has emerged as a suitable solution to overcome the energy constraints of IoT devices. Federated learning works by dividing the training process among several nodes and using the processing power of edge devices. As opposed to sending raw data to a central server, only the model changes are communicated thereby considerably lowering the communication costs while protecting data privacy. This strategy reduces energy usage while simultaneously reducing network latency and bandwidth-related problems.
In this book, the authors show how to optimise federated learning algorithms and develop new communication protocols and resource allocation methodologies to maximize energy savings while retaining respectable model accuracy, to develop long-lasting and scalable IoT solutions that can function independently with no dependency on an external cloud infrastructure.
Energy Optimization and Security in Federated Learning for IoT Environments is intended to be a useful resource for academic researchers, R&D professionals, IoT engineers in the IT industry, and data scientists creating optimised AI models to be run in cloud environments.
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This book covers optimised federated learning algorithms and new communication protocols and resource allocation methodologies, to maximize energy savings while retaining respectable model accuracy, and develop long-lasting and scalable IoT solutions that can function independently with dependency on an external cloud infrastructures.
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Chapter 1: An overview of federated learning: empowering decentralized intelligenceChapter 2: Energy-efficient federated learning algorithmsChapter 3: Federated learning frameworks and algorithms for energy-efficient IoTChapter 4: Communication efficiency in federated learning in IoT environmentChapter 5: Energy-efficient federated learning methods for IoT environmentChapter 6: Energy optimization for IoT communicationChapter 7: Energy harvesting and energy-efficient communication protocols in IoTChapter 8: Energy consumption and efficiency in federated learning (FL) for IoTChapter 9: Adapting federated learning-based AI models to dynamic cyberthreats in pervasive IoT environmentsChapter 10: Hybrid security for IoT networks: from traditional security solutions to AI securityChapter 11: Secure data protection in federated learning for IoTChapter 12: Case studies and application for energy-efficient federated learning in IoTChapter 13: Energy-efficient federated learningChapter 14: Challenges future trends and research direction in FL methodsConclusion
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Produktdetaljer
ISBN
9781839539626
Publisert
2025-02-04
Utgiver
Vendor
Institution of Engineering and Technology
Høyde
234 mm
Bredde
156 mm
Aldersnivå
UP, P, 05, 06
Språk
Product language
Engelsk
Format
Product format
Innbundet
Antall sider
349